WO2002015777A1 - Methods and devices for prediction of hypoglycemic events - Google Patents

Methods and devices for prediction of hypoglycemic events Download PDF

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Publication number
WO2002015777A1
WO2002015777A1 PCT/US2001/025147 US0125147W WO0215777A1 WO 2002015777 A1 WO2002015777 A1 WO 2002015777A1 US 0125147 W US0125147 W US 0125147W WO 0215777 A1 WO0215777 A1 WO 0215777A1
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WO
WIPO (PCT)
Prior art keywords
glucose
series
value
subject
time interval
Prior art date
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PCT/US2001/025147
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French (fr)
Inventor
Russell O. Potts
Michael J. Tierney
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Cygnus, Inc.
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Publication date
Application filed by Cygnus, Inc. filed Critical Cygnus, Inc.
Priority to EP01963903A priority Critical patent/EP1309271B1/en
Priority to JP2002520695A priority patent/JP3647032B2/en
Priority to CA002408338A priority patent/CA2408338C/en
Priority to ES01963903T priority patent/ES2304394T3/en
Priority to DE60133653T priority patent/DE60133653T2/en
Publication of WO2002015777A1 publication Critical patent/WO2002015777A1/en

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Classifications

    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/145Measuring characteristics of blood in vivo, e.g. gas concentration, pH value; Measuring characteristics of body fluids or tissues, e.g. interstitial fluid, cerebral tissue
    • A61B5/14532Measuring characteristics of blood in vivo, e.g. gas concentration, pH value; Measuring characteristics of body fluids or tissues, e.g. interstitial fluid, cerebral tissue for measuring glucose, e.g. by tissue impedance measurement
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/72Signal processing specially adapted for physiological signals or for diagnostic purposes
    • A61B5/7235Details of waveform analysis
    • A61B5/7264Classification of physiological signals or data, e.g. using neural networks, statistical classifiers, expert systems or fuzzy systems
    • A61B5/7267Classification of physiological signals or data, e.g. using neural networks, statistical classifiers, expert systems or fuzzy systems involving training the classification device
    • GPHYSICS
    • G01MEASURING; TESTING
    • G01NINVESTIGATING OR ANALYSING MATERIALS BY DETERMINING THEIR CHEMICAL OR PHYSICAL PROPERTIES
    • G01N27/00Investigating or analysing materials by the use of electric, electrochemical, or magnetic means
    • G01N27/26Investigating or analysing materials by the use of electric, electrochemical, or magnetic means by investigating electrochemical variables; by using electrolysis or electrophoresis
    • G01N27/28Electrolytic cell components
    • G01N27/30Electrodes, e.g. test electrodes; Half-cells
    • G01N27/327Biochemical electrodes, e.g. electrical or mechanical details for in vitro measurements
    • G01N27/3271Amperometric enzyme electrodes for analytes in body fluids, e.g. glucose in blood

Definitions

  • Described herein are methods, devices, and microprocessors useful for predicting a hypoglycemic event in a subject.
  • the present invention for prediction of hypoglycemic events typically employs multiple parameters in the prediction. Such parameters include, but are not limited to, glucose readings (current and/or predicted), body temperature, and/or skin conductance.
  • hypoglycemia is the most critical acute complication of diabetes.
  • present methods of self-monitoring of blood glucose provide periodic measurements of blood glucose obtained from a finger stick. This method produces measurements that, while very accurate, are too infrequent to detect hypoglycemic episodes.
  • diabetics maintain abnormally high blood glucose levels to provide a "buffer" against low blood glucose levels.
  • This constant high blood glucose level is the root cause of most long-term complications of diabetes, namely, retinopathy, neuropathy, nephropathy, and cardiovascular disease.
  • the present SMBG methods are forcing many diabetics to pay for a lower rate of acute complications with a higher rate of chronic complications in later life.
  • the Diabetes Control and Complications Trial (DCCT) (The Diabetes Control and Complications Trial Research Group. New Engl. J. Med. 329, 977-1036 (1993)) clearly showed that more blood glucose information is essential to better clinical outcomes.
  • the present invention describes methods, devices, and microprocessors for predicting a hypoglycemic event in a subject.
  • the methods of the invention typically employ multiple parameters to be used in prediction of the hypoglycemic event. Such parameters include, but are not limited to, current glucose readings (reflecting glucose amount or concentration in the subject), one or more predicted future glucose reading, body temperature, and skin conductance.
  • the present invention comprises a method for predicting a hypoglycemic event in a subject.
  • the method comprises determining threshold values (or ranges of values) for the selected parameters, wherein the threshold values (or ranges of values) are indicative of a hypoglycemic event in the subject: e.g., determining (i) a threshold glucose value (or range of values) that corresponds to the hypoglycemic event, and (ii) at least one threshold parameter value that is correlated with the hypoglycemic event, wherein the parameter is either skin conductance readings or temperature readings. In one embodiment of the invention both skin conductance readings and temperature readings are employed. A series of glucose measurement values is typically obtained at selected time intervals. In one embodiment the time intervals are evenly spaced.
  • Such a series may be obtained, for example, using a method comprising: extracting a sample comprising glucose from the subject using a transdermal sampling system that is in operative contact with a skin or mucosal surface of the subject; obtaining a raw signal from the extracted glucose, wherein the raw signal is specifically related to glucose amount or concentration in the subject; correlating the raw signal with a glucose measurement value indicative of the amount or concentration of glucose present in the subject at the time of extraction; and repeating the extracting, obtaining, and correlating to provide a series of measurement values at selected time intervals.
  • the sampling system is maintained in operative contact with the skin or mucosal surface of the subject during the extracting, obtaining, and correlating to provide for frequent glucose measurements.
  • a parameter value or trend of parameter values is measured concurrently, simultaneously, or sequentially with the obtaining of the series of glucose measurement values.
  • the parameter value or trend of parameter values is reflective of either skin conductance readings or temperature readings of the subject.
  • the parameter value or trend of parameter values is compared with the threshold parameter value (or range of values) to determine whether the parameter value or trend of parameter values indicates a hypoglycemic event.
  • a hypoglycemic event is predicted in the subject when both (i) comparing the predicted measurement value to the threshold glucose value indicates a hypoglycemic event, and (ii) comparing one or more other parameter (e.g., body temperature and/or skin conductance) with the threshold parameter value (or range of values) indicates a hypoglycemic event.
  • the series of measurement values comprises three or more discrete values.
  • the series function may be used to predict the value of y n+1 where the time interval n+1 occurs one time interval after the series of measurement values is obtained.
  • the sampling system typically comprises a sweat probe and the skin conductance readings are obtained using the sweat probe.
  • the sampling system typically comprises a temperature probe and the temperature readings are obtained using the temperature probe.
  • the sample comprising glucose is extracted from the subject into a collection reservoir to obtain an amount or concentration of glucose in the reservoir.
  • a collection reservoir typically in contact with the skin or mucosal surface of the subject and the sample is extracted using an iontophoretic current applied to the skin or mucosal surface.
  • at least one collection reservoir may comprise an enzyme that reacts with the extracted glucose to produce an electrochemically detectable signal, e.g., glucose oxidase.
  • the series of glucose measurement values may be obtained with a different device, for example, using a near-IR spectrometer.
  • the present invention also includes a glucose monitoring system useful for performing the methods of the present invention.
  • the glucose monitoring system comprises, in operative combination, a sensing mechanism (in operative contact with the subject or with a glucose-containing sample extracted from the subject, wherein the sensing mechanism obtains a raw signal specifically related to glucose amount or concentration in the subject), a device to obtain either skin conductance readings or temperature readings from the subject, and one or more microprocessors in operative communication with the sensing mechanism.
  • the microprocessors comprise programming to (i) control the sensing mechanism to obtain a series of raw signals at selected time intervals, (ii) correlate the raw signals with measurement values indicative of the amount or concentration of glucose present in the subject to obtain a series of measurement values, ⁇ Hi) when necessary predict a measurement value at a further time interval, which occurs after the series of measurement values is obtained, (iv) compare the predicted measurement value to a predetermined threshold value or range of values, wherein a predicted measurement value lower than the predetermined threshold value is designated to be hypoglycemic, (v) control the device for measuring skin conductance readings or temperature readings of the subject, (vi) compare the skin conductance readings or temperature readings with a threshold parameter value, range of values, or trend of parameter values to determine whether the skin conductance readings or temperature readings indicate a hypoglycemic event; and ⁇ ii) predict a hypoglycemic event in the subject when both (a) comparing the predicted measurement value to the threshold glucose value (or range of values) indicates a hypo
  • the sensing mechanism of the monitoring system may, for example, comprise a biosensor having an electrochemical sensing element or a near-IR spectrometer. Further, the monitoring system may comprise a device to obtain the skin conductance readings (e.g., a sweat probe) and/or a device to obtain the temperature readings (e.g., a temperature probe).
  • n is the time interval between measurement values
  • is a real number between 0 and 1.
  • the method for prediction of hypoglycemic events employs a decision tree that utilizes a hierarchical evaluation of thresholds of selected parameters, where the thresholds are indicative of a hypoglycemic event.
  • Such parameters include, but are not limited to, current glucose readings (reflecting glucose amount or concentration in the subject), one or more predicted future glucose reading, body temperature, and skin conductance.
  • the present invention comprises one or more microprocessors programmed to control the above described methods, measurement cycle, devices, mechanisms, calculations, predictions, comparisons, evaluations, etc. The microprocessors may also mediate an alarm or alert related to the predicted hypoglycemic event.
  • Figure 1 presents a schematic diagram of a skin-side view of the GlucoWatch® (Cygnus, Inc., Redwood City, CA, US) biographer system.
  • Figure 2 presents a comparison of GlucoWatch biographer measurement with conventional blood glucose measurement over 14 hours for one subject.
  • Figure 3 presents data showing the average minimum temperature during each GlucoWatch biographer measurement cycle vs. reference blood glucose.
  • Figure 4 presents data showing average skin conductivity reading vs. blood glucose range.
  • Figure 5 presents data showing percentage of skin conductivity readings indicating perspiration vs. blood glucose range.
  • microprocessor refers to a computer processor contained on an integrated circuit chip, such a processor may also include memory and associated circuits.
  • a microprocessor may further comprise programmed instructions to execute or control selected functions, computational methods, switching, etc.
  • Microprocessors and associated devices are commercially available from a number of sources, including, but not limited to, Cypress Semiconductor Corporation, San Jose, CA; IBM Corporation, White Plains, New York; Applied Microsystems Corporation, Redmond, WA; Intel Corporation, Chandler, Arizona; NEC Corporation, New York, NY; and, National Semiconductor, Santa Clara, CA.
  • analyte and target analyte are used to denote any physiological analyte of interest that is a specific substance or component that is being detected and/or measured in a chemical, physical, enzymatic, or optical analysis.
  • a detectable signal e.g., a chemical signal or electrochemical signal
  • analyte and derivatives thereof are used interchangeably herein, and are intended to have the same meaning, and thus encompass any substance of interest.
  • the analyte is a physiological analyte of interest, for example, glucose, or a chemical that has a physiological action, for example, a drug or pharmacological agent.
  • a “sampling device,” “sampling mechanism” or “sampling system” refers to any device and/or associated method for obtaining a sample from a biological system for the purpose of determining the concentration of an analyte of interest.
  • biological systems include any biological system from which the analyte of interest can be extracted, including, but not limited to, blood, interstitial fluid, perspiration and tears. Further, a “biological system” includes both living arid artificially maintained systems.
  • sampling mechanism refers to extraction of a substance from the biological system, generally across a membrane such as the stratum corneum or mucosal membranes, wherein said sampling is invasive, minimally invasive, semi-invasive or non-invasive.
  • the membrane can be natural or artificial, and can be of plant or animal nature, such as natural or artificial skin, blood vessel tissue, intestinal tissue, and the like.
  • the sampling mechanism is in operative contact with a "reservoir,” or “collection reservoir,” wherein the sampling mechanism is used for extracting the analyte from the biological system into the reservoir to obtain the analyte in the reservoir.
  • Non- limiting examples of sampling teclmiques include iontophoresis, sonophoresis (see, e.g., International Publication No. WO 91/12772, published 5 September 1991; U.S. Patent No. 5,636,632), suction, electroporation, thermal poration, passive diffusion (see, e.g., International Publication Nos.: WO 97/38126 (published 16 October 1997); WO 97/42888, WO 97/42886, WO 97/42885, and WO 97/42882 (al!
  • WO 97/24059 published 10 July 1997; European Patent Application EP 0942 278, published 15 September 1999; International Publication No. WO 96/00110, published 4 January 1996; International Publication No. WO 97/10499, published 2 March 1997; U.S. Patent Numbers 5,279,543; 5,362,307; 5,730,714; 5,771,890; 5,989,409; 5,735,273; 5,827,183; 5,954,685 and 6,023,629.
  • a polymeric membrane may be used at, for example, the electrode surface to block or inhibit access of interfering species to the reactive surface of the electrode.
  • physiological fluid refers to any desired fluid to be sampled, and includes, but is not limited to, blood, cerebrospinal fluid, interstitial fluid, semen, sweat, saliva, urine and the like.
  • artificial membrane refers to, for example, a polymeric membrane, or an aggregation of cells of monolayer thickness or greater which are grown or cultured in vivo or in vitro, wherein said membrane or surface functions as a tissue of an organism but is not actually derived, or excised, from a pre-existing source or host.
  • a “monitoring system” or “analyte monitoring device” refer to a system useful for obtaining frequent measurements of a physiological analyte present in a biological system. Such a device is useful, for example, for monitoring the amount or concentration of an analyte in a subject'.
  • a system may comprise, but is.not limited to, a sampling mechanism, a sensing mechanism, and a microprocessor mechanism hi operative communication with the sampling mechanism and the sensing mechanism.
  • Such a device typically provides frequent measurement or determination of analyte amount or concentration in the subject and provides an alert or alerts when levels of the analyte being monitored fall outside of a predetermined range.
  • Such devices may comprise durable and consumable (or disposable) elements.
  • glucose monitoring device refers to a device for monitoring the amount or concentration of glucose in a subject. Such a device typically provides a frequent measurement or determination of glucose amount or concentration in the subject and provides an alert or alerts when glucose levels fall outside of a predetermined range.
  • GlucoWatch biographer available from Cygnus, Inc., Redwood City, CA, US.
  • the GlucoWatch biographer comprises two primary elements, a durable element (comprising a watch-type housing, circuitry, display element, microprocessor element, electrical connector elements, and may further comprise a power supply) and a consumable, or disposable, element (e.g., an AutoSensor component involved in sampling and signal detection, see, for example, WO 99/58190, published 18 November 1999).
  • a durable element comprising a watch-type housing, circuitry, display element, microprocessor element, electrical connector elements, and may further comprise a power supply
  • a consumable, or disposable, element e.g., an AutoSensor component involved in sampling and signal detection, see, for example, WO 99/58190, published 18 November 1999.
  • a “measurement cycle” typically comprises extraction of an analyte from a subject, using, for example, a sampling device, and sensing of the extracted analyte, for example, using a sensing device, to provide a measured signal, for example, a measured signal response curve.
  • a complete measurement cycle may comprise one or more sets of extraction and sensing.
  • the term "frequent measurement” refers to a series of two or more measurements obtained from a particular biological system, which measurements are obtained using a single device maintained in operative contact with the biological system over a time period in which a series of measurements (e.g, second, minute or hour intervals) is obtained.
  • the term thus includes continual and continuous measurements.
  • subject encompasses any warm-blooded animal, particularly including a member of the class Mammalia such as, without limitation, humans and nonhuman primates such as chimpanzees and other apes and monkey species; farm animals such as cattle, sheep, pigs, goats and horses; domestic mammals such as dogs and cats; laboratory animals including rodents such as mice, rats and guinea pigs, and the like.
  • the term does not denote a particular age or sex and, thus, includes adult and newborn subjects, whether male or female.
  • transdermal includes both transdermal and transmucosal techniques, i.e., extraction of a target analyte across skin, e.g., stratum corneum, or mucosal tissue. Aspects of the invention which are described herein in the context of "transdermal,” unless otherwise specified, are meant to apply to both transdermal and transmucosal techniques.
  • transdermal extraction refers to any sampling method, which entails extracting and/or transporting an analyte from beneath a tissue surface across skin or mucosal tissue.
  • the term thus includes extraction of an analyte using, for example, iontophoresis (reverse iontophoresis), electroosmosis, sonophoresis, microdialysis, suction, and passive diffusion.
  • iontophoresis reverse iontophoresis
  • electroosmosis electroosmosis
  • sonophoresis electroosmosis
  • microdialysis suction
  • passive diffusion passive diffusion.
  • transdermally extracted also encompasses extraction techniques which employ thermal poration, laser microporation, electroporation, microfme lances, microfine cannulas, subcutaneous implants or insertions, combinations thereof, and the like.
  • iontophoresis refers to a method for transporting substances across tissue by way of an application of electrical energy to the tissue.
  • a reservoir is provided at the tissue surface to serve as a container of (or to provide containment for) material to be transported.
  • Iontophoresis can be carried out using standard methods known to those of skill in the art, for example by establishing an electrical potential using a direct current (DC) between fixed anode and cathode “iontophoretic electrodes,” alternating a direct current between anode and cathode iontophoretic electrodes, or using a more complex waveform such as applying a current with alternating polarity (AP) between iontophoretic electrodes (so that each electrode is alternately an anode or a cathode).
  • DC direct current
  • AP alternating polarity
  • reverse iontophoresis refers to the movement of a substance from a biological fluid across a membrane by way of an applied electric potential or current.
  • a reservoir is provided at the tissue surface to receive the extracted material, as used in the GlucoWatch biographer glucose monitor (See, e.g., Tamada et al. (1999) JAMA 282:1839-1844; Cygnus, Inc., Redwood City, CA).
  • Electroosmosis refers to the movement of a substance through a membrane by way of an electric field-induced convective flow.
  • the terms iontophoresis, reverse iontophoresis, and electroosmosis will be used interchangeably herein to refer to movement of any ionically charged or uncharged substance across a membrane (e.g., an epithelial membrane) upon application of an electric potential to the membrane through an ionically conductive medium.
  • sensing device encompasses any device that can be used to measure the concentration or amount of an analyte, or derivative thereof, of interest.
  • the sensing mechanism may employ any suitable sensing element to provide the raw signal (where the raw signal is specifically related to analyte amount or concentration) including, but not limited to, physical, chemical, electrochemical, photochemical, spectrophotometric, polarimetric, colorimetric, radiometric, or like elements, and combinations thereof.
  • electrochemical devices examples include the Clark electrode system (see, e.g., Updike, et al., (1967) Nature 214:986-988), and other amperometric, coulometric, or potentiometric electrochemical devices, as well as, optical methods, for example UV detection or infrared detection (e.g., U. S. Patent No. 5,747,806).
  • Further examples include, a near-IR radiation diffuse-reflection laser spectroscopy device (e.g, described in U.S. Patent No. 5,267,152 to Yang, et al). Similar near-IR spectrometric devices are also described in U.S. Patent No. 5,086,229 to Rosenthal, et al. and U.S. Patent No.
  • a biosensor which comprises an electrochemical sensing element.
  • a “biosensor” or “biosensor device” includes, but is not limited to, a “sensor element” that includes, but is not limited to, a “biosensor electrode” or “sensing electrode” or “working electrode” which refers to the electrode that is monitored to determine the amount of electrical signal at a point in time or over a given time period, which signal is then correlated with the concentration of a chemical compound.
  • the sensing electrode comprises a reactive surface which converts the analyte, or a derivative thereof, to electrical signal.
  • the reactive surface can be comprised of any electrically conductive material such as, but not limited to, platinum-group metals (including, platinum, palladium, rhodium, ruthenium, osmium, and iridium), nickel, copper, and silver, as well as, oxides, and dioxides, thereof, and combinations or alloys of the foregoing, which may include carbon as well.
  • platinum-group metals including, platinum, palladium, rhodium, ruthenium, osmium, and iridium
  • nickel, copper, and silver as well as, oxides, and dioxides, thereof, and combinations or alloys of the foregoing, which may include carbon as well.
  • the “sensor element” can include components in addition to the sensing electrode, for example, it can include a “reference electrode” and a “counter electrode.”
  • the term “reference electrode” is used to mean an electrode that provides a reference potential, e.g., a potential can be established between a reference electrode and a working electrode.
  • the term “counter electrode” is used to mean an electrode in an electrochemical circuit that acts as a current source or sink to complete the electrochemical circuit. Although it is not essential that a counter electrode be employed where a reference electrode is included in the circuit and the electrode is capable of performing the function of a counter electrode, it is preferred to have separate counter and reference electrodes because the reference potential provided by the reference electrode is most stable when it is at equilibrium. If the reference electrode is required to act further as a counter electrode, the current flowing through the reference electrode may disturb this equilibrium. Consequently, separate electrodes functioning as counter and reference electrodes are preferred.
  • the "counter electrode” of the "sensor element” comprises a "bimodal electrode.”
  • the term “bimodal electrode” typically refers to an electrode which is capable of functioning non-simultaneously as, for example, both the counter electrode (of the “sensor element") and the iontophoretic electrode (of the “sampling mechanism") as described, for example, U.S. Patent No. 5,954,685.
  • reactive surface and “reactive face” are used interchangeably herein to mean the surface of the sensing electrode that: (1) is in contact with the surface of an ionically conductive material which contains an analyte or through which an analyte, or a derivative thereof, flows from a source thereof; (2) is comprised of a catalytic material (e.g., a platinum group metal, platinum, palladium, rhodium, ruthenium, or nickel and/or oxides, dioxides and combinations or alloys thereof) or a material that provides sites for electrochemical reaction; (3) converts a chemical signal (for example, hydrogen peroxide) into an electrical signal (e.g., an electrical current); and (4) defines the electrode surface area that, when composed of a reactive material, is sufficient to drive the electrochemical reaction at a rate sufficient to generate a detectable, reproducibly measurable, electrical signal that is correlatable with the amount of analyte present in the electrolyte.
  • a catalytic material e.g.,
  • an "ionically conductive material” refers to any material that provides ionic conductivity, and through which electrochemically active species can diffuse.
  • the ionically conductive material can be, for example, a solid, liquid, or semi-solid (e.g., in the form of a gel) material that contains an electrolyte, which can be composed primarily of water and ions (e.g., sodium chloride), and generally comprises 50% or more water by weight.
  • the material can be in the form of a hydrogel, a sponge or pad (e.g., soaked with an electrolytic solution), or any other material that can contain an electrolyte and allow passage of electrochemically active species, especially the analyte of interest.
  • the ionically conductive material may comprise a biocide.
  • one or more biocides may be incorporated into the ionically conductive material.
  • Biocides of interest include, but are not limited to, compounds such as chlorinated hydrocarbons; organometallics; hydrogen releasing compounds; metallic salts; organic sulfur compounds; phenolic compounds (including, but not limited to, a variety of Nipa Hardwicke Inc.
  • liquid preservatives registered under the trade names Nipastat®, Nipaguard®, Phenosept®, Phenonip®, Phenoxetol®, and Nipacide®); quaternary ammonium compounds; surfactants and other membrane-disrupting agents (including, but not limited to, undecylenic acid and its salts), combinations thereof, and the like.
  • buffer refers to one or more components which are added to a composition in order to adjust or maintain the pH of the composition.
  • electrolyte refers to a component of the ionically conductive medium which allows an ionic current to flow within the medium.
  • This component of the ionically conductive medium can be one or more salts or buffer components, but is not limited to these materials.
  • the term "collection reservoir” is used to describe any suitable containment method or device for containing a sample extracted from a biological system.
  • the collection reservoir can be a receptacle containing a material which is ionically conductive (e.g., water with ions therein), or alternatively it can be a material, such as a sponge-like material or hydrophilic polymer, used to keep the water in place.
  • a material which is ionically conductive e.g., water with ions therein
  • Such collection reservoirs can be in the form of a hydrogel (for example, in the shape of a disk or pad).
  • Hydrogels are typically referred to as "collection inserts.”
  • Other suitable collection reservoirs include, but are not limited to, tubes, vials, strips, capillary collection devices, cannulas, and miniaturized etched, ablated or molded flow paths.
  • a “collection insert layer” is a layer of an assembly or laminate comprising a collection reservoir (or collection insert) located, for example, between a mask layer and a retaining layer.
  • a “laminate” refers to structures comprised of, at least, two bonded layers.
  • the layers may be bonded by welding or through the use of adhesives.
  • welding include, but are not limited to, the following: ultrasonic welding, heat bonding, and inductively coupled localized heating followed by localized flow.
  • common adhesives include, but are not limited to, chemical compounds such as, cyanoacrylate adhesives, and epoxies, as well as adhesives having such physical attributes as, but not limited to, the following: pressure sensitive adhesives, thermoset adhesives, contact adhesives, and heat sensitive adhesives.
  • a “collection assembly” refers to structures comprised of several layers, where the assembly includes at least one collection insert layer, for example a hydrogel.
  • An example of a collection assembly as referred to in the present invention is a mask layer, collection insert layer, and a retaining layer where the layers are held in appropriate functional relationship to each other but are not necessarily a laminate (i.e., the layers may not be bonded together. The layers may, for example, be held together by interlocking geometry or friction).
  • mask layer refers to a component of a collection assembly that is substantially planar and typically contacts both the biological system and the collection insert layer. See, for example, U.S. Patent Nos. 5,735,273, 5,827,183, and 6,201,979.
  • gel retaining layer or “gel retainer” refers to a component of a collection assembly that is substantially planar and typically contacts both the collection insert layer and the electrode assembly.
  • support tray typically refers to a rigid, substantially planar platform and is used to support and/or align the electrode assembly and the collection assembly.
  • the support tray provides one way of placing the electrode assembly and the collection assembly into the sampling system.
  • An "AutoSensor assembly” refers to a structure generally comprising a mask layer, collection insert layer, a gel retaining layer, an electrode assembly, and a support tray.
  • the AutoSensor assembly may also include liners where the layers are held in approximate, functional relationship to each other. Exemplary collection assemblies and AutoSensor structures are described, for example, in International Publication WO 99/58190, published 18 November 1999; and U.S. Patent Numbers 5,735,273 and 5,827,183.
  • the mask and retaining layers are preferably composed of materials that are substantially impermeable to the analyte (chemical signal) to be detected; however, the material can be permeable to other substances.
  • substantially impermeable is meant that the material reduces or eliminates chemical signal transport (e.g., by diffusion).
  • the material can allow for a low level of chemical signal transport, with the proviso that chemical signal passing through the material does not cause significant edge effects at the sensing electrode.
  • numeric value when associated with a numeric value refers to that numeric value plus or minus 10 units of measure (i.e. percent, grams, degrees or volts), preferably plus or minus 5 units of measure, more preferably plus or minus 2 units of measure, most preferably plus or minus 1 unit of measure.
  • printed is meant a substantially uniform deposition of an electrode formulation onto one surface of a substrate (i.e., the base support). It will be appreciated by those skilled in the art that a variety of techniques may be used to effect substantially uniform deposition of a material onto a substrate, e.g., Gravure- type printing, extrusion coating, screen coating, spraying, painting, electroplating, laminating, or the like.
  • physiological effect encompasses effects produced in the subject that achieve the purpose of a therapy.
  • a physiological effect means that the symptoms of the subject being treated are prevented or alleviated.
  • a physiological effect would be one that results in the prolongation of survival in a patient.
  • a parameter is any of a set of properties whose values determine the characteristics or behavior of something. "Decay” refers to a gradual reduction in the magnitude of a quantity, for example, a current detected using a sensor electrode where the current is correlated to the concentration of a particular analyte and where the detected current gradually reduces but the concentration of the analyte does not.
  • “Skip” or “skipped” signals refer to data that do not conform to predetermined criteria (for example, error-associated criteria as described in U.S. Patent No. 6,233,471).
  • a skipped reading, signal, or measurement value typically has been rejected (i.e., a "skip error” generated) as not being reliable or valid because it does not conform with data integrity checks, for example, where a signal is subjected to a data screen which invalidates incorrect signals based on a detected parameter indicative of a poor or incorrect signal.
  • TSES Temporal Series Exponential Smoothing Function
  • is an optimizable variable which is a real number of between 0 and 1, and is adjusted based on the particular measurements obtained and the relationship between those measurements and actual results
  • n is an evenly spaced time interval; and is an analyte concentration or signal converted to an analyte concentration which signal measurement is optimized to fit the results sought, e.g., to correspond with a reference analyte concentration (see, for example, 6,272,364, issued 7
  • a “future time point” refers to the time point in the future at which the concentration of the analyte of interest or another parameter value is predicted. In preferred embodiments, this term refers to a time point that is one time interval aliead, where a time interval is the amount of time between sampling and sensing events.
  • hypoglycemia is the most important acute complication of diabetes and is a major obstacle to achieving optimal blood glucose control. Nocturnal hypoglycemia can be particularly troublesome for many patients.
  • the research proposed here utilizes information obtained from a data stream, e.g., frequently obtained glucose values, skin conductance or temperature readings, generated by a frequent sampling glucose monitoring device, e.g., the GlucoWatch biographer system, coupled with a time-series forecasting approach, to predict incipient hypoglycemic events and to alert the user.
  • the invention is described herein with reference to the GlucoWatch biographer system as an exemplary glucose monitoring system capable of providing frequent readings of glucose amount or concentration for a user.
  • the GlucoWatch biographer system extracts glucose through the skin via reverse iontophoresis and measures the extracted glucose with an amperometric biosensor. Glucose readings can be obtained, for example, every twenty minutes for a twelve-hour measurement period. Large-scale clinical trials of this device in diabetic subjects have been completed (Tierney, M. J., et al., Annals of Medicine, 32, 632-641 (2000); Tierney, M. J., et al., Diabetes Technology and Therapeutics, 2 (2), 197-205 (2000); Tamada, J. A., et al, J. Am. Med. Assoc. 282, 1839-44 (1999)).
  • a major disadvantage of the current paradigm of discrete blood glucose measurements for self-monitoring of blood glucose (SMBG) levels for diabetics is that the low number of measurements performed per day (on average 1.8 readings per day) is insufficient to track blood glucose excursions occurring between the measurements. More frequent monitoring is desirable both for determining the normal diurnal blood glucose profile, and for detection of hypoglycemic events.
  • the GlucoWatch biographer system measures glucose levels every 20 minutes, and has been shown to track blood glucose levels accurately. In addition, the GlucoWatch biographer system sounds an audible alarm if the measured glucose level falls below a user-settable low glucose threshold, or if the measured glucose level falls rapidly between successive readings.
  • the present GlucoWatch biographer system is able to accurately detect the presence of hypoglycemic conditions, it is not currently able to predict hypoglycemic events in advance.
  • Experiments performed in support of the present invention indicate methods to improve the hypoglycemic event prediction ability of the GlucoWatch biographer system by combining (i) the continual stream of glucose readings, with other physiological measures that are indicators of hypoglycemia, for example, (ii) skin temperature and/or (iii) perspiration.
  • combinations of these tliree physiological parameters results in a more robust predictor of hypoglycemia.
  • the method of the present invention employs a time-series forecasting algorithm.
  • This technique uses several previous readings to predict with sufficient accuracy the glucose level a short time in the future. Therefore, this technique could be used to predict incipient hypoglycemia.
  • the time-series forecasting algorithm has been described in co-owned, co-pending, WO 99/58973, published 18 November 1999. Predictions based on this method are combined with predictions based on the methods described above.
  • a series of conditional statements leading to a prediction of a hypoglycemic event are established. Such conditional statements may be based on several processes. For example, a first process, e.g., prediction of a hypoglycemic event related to information based on current blood glucose values, and/or a second process, e.g., prediction of a hypoglycemic event related to a temperature-based prediction, and/or a third process, e.g., prediction of a hypoglycemic event related to a skin conductance- based prediction.
  • a hypoglycemic event may be predicted by any or all of these processes (or one process combining all of these processes).
  • This information is then coupled with information from, e.g., a fourth process, such as prediction of a hypoglycemic event based on a future value predicted by a time-series algorithm.
  • a fourth process such as prediction of a hypoglycemic event based on a future value predicted by a time-series algorithm.
  • the information from several or all of these processes may then be evaluated together.
  • the monitoring system used to monitor the level of a selected glucose in a target system comprises a sampling device, which provides a sample comprising glucose, and a sensing device, which detects the amount or concentration of glucose or a signal associated with the glucose amount or concentration in the sample.
  • GlucoWatch biographer system An exemplary glucose monitoring system which provides frequent measurements of glucose amount or concentrations is the GlucoWatch biographer system.
  • This system is a wearable, non-invasive glucose monitoring system that provides a glucose reading automatically every twenty minutes.
  • the GlucoWatch biographer system has several advantages including, but not limited to, the fact that its non-invasive and non-obtrusive nature encourages more frequent glucose testing among people (or animals) with diabetes. Of greater clinical relevance is the frequent nature of the information provided.
  • Prior to the GlucoWatch biographer system no method existed for frequent glucose measurement outside of invasive means, often requiring hospital care (Mastrototaro, J.J., and Gross, T. M., "Clinical Results from the MiniMed Continuous Glucose Monitoring System" Proc.
  • the GlucoWatch biographer system provides more frequent monitoring often desired by physicians in an automatic, non-invasive, and user- friendly manner.
  • the automatic nature of the system also allows monitoring to continue even while a user is sleeping or otherwise unable to test.
  • the GlucoWatch biographer system comprises: (a) iontophoretic transport of glucose across the skin to non-invasively sample the glucose, (b) an electrochemical biosensor to measure the glucose concentration, and (c) an intelligent data-processing algorithm that coverts the raw biosensor signals to glucose readings while safeguarding against erroneous results through data point screening routines.
  • the first aspect of the system is the iontophoretic extraction of glucose.
  • Many small molecules are transported through the skin by either passive or facilitated means. Passive transport of compounds such as nicotine, estradiol, testosterone, etc. is the basis of transdermal drug delivery (skin patches). Transport through human skin can be greatly enhanced by the application of an electric field gradient. The use of a low-level electric current to enhance transport is known, generically, as iontophoresis. Iontophoretic transport through skin can occur in either direction (Glikfeld, P., et al., Pharm. Res. 6, 988-990 (1989)). In particular, it was shown that small molecules such as glucose, ethanol, and theophylline are readily transported through the skin into an external collection chamber.
  • the second aspect of the system involves the use of an electrochemical glucose biosensor.
  • the GlucoWatch biographer system utilizes an electro-chemical biosensor assembly to quantitate the glucose extracted through the skin.
  • Each biosensor consists of a hydrogel pad containing the enzyme glucose oxidase (GOx) and a set of electrodes.
  • GOx glucose oxidase
  • the hydrogel pads serve two functions. During iontophoresis the pads serve as the electrical contacts with the skin and the collection reservoirs for the extracted glucose.
  • the glucose extracted through the skin reacts with the GOx in the hydrogel pads via the reaction:
  • the H 2 O 2 produced by this reaction is then detected amperometrically at the platinum/carbon working electrode of the sensor.
  • the integrated sensor current measured is proportional to the concentration of H 2 O 2 , and ultimately to the amount of glucose extracted.
  • the extraction and sensing portions of the cycle occur in succession, and the cycle repeats to provide a measurement of glucose every twenty minutes.
  • the GlucoWatch biographer system was developed as a miniaturized device which can be worn on the wrist, forearm, upperarm, or other body part.
  • the GlucoWatch biographer system durable component contains electronics for the biosensors and iontophoresis, a microprocessor, data storage memory, and an LCD display.
  • Two sets of biosensors and iontophoresis electrodes are fitted onto the skin side of the device (e.g., a consumable component, the AutoSensor).
  • the device e.g., a consumable component, the AutoSensor.
  • a schematic diagram of the AutoSensor of the GlucoWatch biographer system is shown in Figure 1.
  • the AutoSensor components include two biosensor/iontophoretic electrode assemblies, 104 and 106, each of which have an annular iontophoretic electrode, respectively indicated at 108 and 110, which encircles a biosensor electrode 112 and 114.
  • the electrode assemblies 104 and 106 are printed onto a polymeric substrate 116 which is maintained within a sensor tray 118.
  • a collection reservoir assembly 120 is arranged over the electrode assemblies, wherein the collection reservoir assembly comprises two hydrogel inserts 122 and 124 retained by a gel retaining layer 126 and mask layer 128.
  • the electrode assemblies comprise bimodal electrodes.
  • a mask layer 128 (for example, as described in PCT Publication No. WO 97/10356, published 20 March 1997, and US Patent Nos. 5,735,273, 5,827,183, 6,141,573, and 6,201,979) may be present.
  • Other AutoSensor embodiments are described in WO 99/58190, published 18 November 1999.
  • the mask and retaining layers are preferably composed of materials that are substantially impermeable to the analyte (e.g., glucose) to be detected (see, for example, U.S. Patent Nos.
  • substantially impermeable is meant that the material reduces or eliminates analyte transport (e.g.. by diffusion).
  • the material can allow for a low level of analyte transport, with the proviso that the analyte that passes through the material does not cause significant edge effects at the sensing electrode used in conjunction with the mask and retaining layers.
  • materials that can be used to form the layers include, but are not limited to, polyester, polyester derivatives, other polyester-like materials, polyurethane, polyurethane derivatives and other polyurethane-like materials.
  • the components shown in exploded view in Figure 1 are for use in a automatic sampling system which is configured to be worn like an ordinary wristwatch, as described, for example, in PCT Publication No. WO 96/00110, published 4 January 1996.
  • the wristwatch housing can further include suitable electronics (e.g., one or more microprocessors), memory, display and other circuit components) and power sources for operating the automatic sampling system.
  • the one or more microprocessors may control a variety of functions, including, but not limited to, control of a sampling device, a sensing device, aspects of the measurement cycle (for example, timing of sampling and sensing, and alternating polarity between electrodes), connectivity, computational methods, different aspects of data manipulation (for example, acquisition, recording, recalling, comparing, and reporting), etc.
  • the third aspect of the system is an intelligent data-processing algorithm that coverts the raw biosensor signals to glucose readings while safeguarding against erroneous results through data point screening routines.
  • the raw current data obtained from the biosensors must be converted into an equivalent blood glucose value. Equations to perform this data conversion have been developed, optimized, and validated on a large data set consisting of GlucoWatch biographer and reference blood glucose readings from clinical trials on diabetic subjects (see, for example, WO 018289A1, published 6 April 2000).
  • This data conversion algorithm is programmed into a dedicated microprocessor in the GlucoWatch biographer system.
  • the software also contains screens to exclude spurious data points that do not conform to objective, a priori criteria (e.g., data which contain noise above a certain threshold).
  • Exemplary signal processing applications include, but are not limited to, those taught in the following U.S. Patent Nos. 6,144,869, 6,233,471, 6,180,416.
  • the GlucoWatch biographer system also contains a temperature sensor and a skin conductivity sensor. Input from the former is used to exclude data points obtained during large thermal excursions.
  • the skin conductivity input is used to exclude data obtained when the subject is perspiring profusely, as sweat contains glucose which may confound the value obtained for the extracted sample. Hence, these various screens reject data points that may provide false glucose information. The remaining data points are then suitable for clinical use.
  • the GlucoWatch biographer system is housed in a plastic case held in place, typically on the arm, with a wrist band. A single AAA battery is used as the primary power source with an additional back-up battery.
  • the GlucoWatch biographer circuitry includes a microprocessor and a custom application specific integrated circuit (ASIC) chip containing the circuitry to run both the iontophoresis and biosensor functions. There is sufficient memory to store up to 4000 glucose readings which represents approximately three months of data with daily use.
  • An LCD display and four push buttons on the face of the GlucoWatch biographer system comprise the user interface, and allow the user to control and customize the functions of the monitor as well as to display clock time and date, glucose readings, and GlucoWatch biographer operation status. Data can also be downloaded to a PC via a serial interface adapter.
  • Included in the software control is the ability for the user to select high and low glucose alert levels. If the GlucoWatch biographer system measures a glucose value outside of these alert levels, an alarm sounds to notify the user of the situation.
  • the disposable portion of the GlucoWatch biographer system is the AutoSensor, which contains the two sets of biosensor and iontophoresis electrodes and the corresponding hydrogel discs housed held in a pre-aligned arrangement by a mask layer.
  • the AutoSensor snaps into the skin-side of the GlucoWatch biographer system to make the necessary electrical connections between the two portions.
  • the GlucoWatch biographer system also contains a thermistor to measure skin temperature, and a set of conductivity probes which rest on the surface of the skin to measure skin conductivity, a measure of perspiration. As described above, the temperature and sweat data are used in the present device to ensure that the biosensor data has not been affected by large temperature excursions or perspiration during the reading period.
  • the sampling/sensing mechanism and user interface may be found on separate components (e.g., WO 00/47109, published 17 August 2000).
  • the monitoring system can comprise at least two components, in which a first component comprises sampling mechanism and sensing mechanism that are used to extract and detect an analyte, for example, glucose, and a second component that receives the analyte data from the first component, conducts data processing on the analyte data to determine an analyte concentration and then displays the analyte concentration data.
  • microprocessor functions e.g., control of a sampling device, a sensing device, aspects of the measurement cycle, computational methods, different aspects of data manipulation or recording, etc.
  • microprocessing components may be located in one or the other of the at least two components.
  • the second component of the monitoring system can assume many forms, including, but not limited to, the following: a watch, a credit card-shaped device (e.g., a "smart card” or "universal card” having a built-in microprocessor as described for example in U.S. Patent No. 5,892,661), a pager-like device, cell phone-like device, or other such device that communicates information to the user visually, audibly, or kinesthetically.
  • a delivery unit is included in the system.
  • An exemplary delivery unit is an insulin delivery unit.
  • Insulin delivery units both implantable and external, are known in the art and described, for example, in U.S. Patent Numbers 5,995,860; 5,112,614 and 5,062,841.
  • the delivery unit is in communication (e.g., wire-like or wireless communication) with the extracting and/or sensing mechanism such that the sensing mechanism can control the insulin pump and regulate delivery of a suitable amount of insulin to the subject.
  • Advantages of separating the first component (e.g., including the biosensor and iontophoresis functions) from the second component (e.g., including some microprocessor and display functions) include greater flexibility, discretion, privacy and convenience to the user.
  • Having a small and lightweight measurement unit allows placement of the two components of the system on a wider range of body sites, for example, the first component may be placed on the abdomen or upper arm.
  • This wider range of placement options may improve the accuracy through optimal extraction site selection (e.g., torso rather than extremities) and greater temperature stability (e.g., via the insulating effects of clothing).
  • the collection and sensing assembly will be able to be placed on a greater range of body sites.
  • a smaller and less obtrusive microprocessor and display unit provides a convenient and discrete system by which to monitor analytes.
  • the biosensor readouts and control signals will be relayed via wire-like or wireless technology between the collection and sensing assembly and the display unit which could take the form of a small watch, a pager, or a credit card-sized device.
  • This system also provides the ability to relay an alert message or signal during nighttime use, for example, to a site remote from the subject being monitored.
  • the two components of the device can be in operative communication via a wire or cable-like connection.
  • Operative communications between the components can be wireless link, i.e. provided by a "virtual cable," for example, a telemetry link.
  • This wireless link can be uni- or bi-directional between the two components. In the case of more than two components, links can be a combination of wire-like and wireless.
  • GlucoWatch biographer system To evaluate the usefulness of the GlucoWatch biographer system in the monitoring of glucose levels, more than 90 subjects with diabetes were enrolled at three clinical sites around the United States. Subjects wore a GlucoWatch biographer system on their wrist for 15 hours while in a clinical setting. Subjects entered the clinic early in the morning in a fasted state. The GlucoWatch biographer system was applied and a "warm-up" procedure of 175 minutes was initiated. At the end of the warm-up period, the subjects took a single finger-stick blood glucose measurement which they used to calibrate the GlucoWatch biographer readings. From that point on, the GlucoWatch biographer system took three measurements per hour for the remainder of the study. All data were stored internally (i.e., in the biographer's memory). In addition, two standard blood measurements were obtained at 0 and 40 minutes during each hour. Thus, there were as many as 36 GlucoWatch biographer data points and 24 matching blood data points obtained from each subject.
  • the GlucoWatch biographer readings and blood data were then transferred into a computer for algorithm development and subsequent data analysis.
  • the data were randomly divided into two groups.
  • the data from one part of the data set 46 GlucoWatch biographer systems) were used to "train” the algorithm (the Mixtures of Experts algorithm, see, for example, WO 018289A1, published 6 April 2000), that is, to determine the optimal functional form and parameter set needed to minimize the error between the GlucoWatch biographer system-predicted glucose values and blood glucose values.
  • the optimized algorithm was then used to predict the GlucoWatch biographer system values for all subsequent data. This "out of sample” prediction technique diminished bias and demonstrated the universal nature of the algorithm. Data from one individual is shown in Figure 2.
  • HYPOGLYCEMIA Preliminary tests of the correlation between skin temperature and skin conductivity, and hypoglycemic blood glucose levels were performed on data from one clinical trial. Temperature and perspiration data from the GlucoWatch biographer system were analyzed for a total of 213 GlucoWatch biographer system applications on 121 diabetic subjects. This data set consists of the temperature, perspiration measurement and reference blood glucose value for 5346 GlucoWatch biographer measurement cycles. For this trial, the subjects were tested in a clinical setting, but were allowed general freedoms simulating a home environment.
  • the data were sorted into reference blood glucose range bins from ⁇ 40 mg/dL to 240 mg/dL.
  • the minimum skin temperature for each measurement cycle in each bin was averaged and plotted in Figure 3.
  • the skin temperature as measured by the GlucoWatch biographer system is lower than average when the reference blood glucose is lower than 120 mg/dL, and is lowest when the blood glucose is in the lowest hypoglycemic range. This preliminary result demonstrated a correlation between lower average skin temperature and hypoglycemic blood glucose levels.
  • one of the parameters that may be used for the prediction of a hypoglycemic event is a below average skin temperature.
  • an average skin temperature is determined for each subject by collecting a skin temperature reading data set over an extended period of time (e.g., days, weeks, or months).
  • An associated standard deviation and/or average variation may be associated with the average skin temperature using standard statistical methods applied to the skin temperature reading data set.
  • the average temperature may also be associated with the time of day, for example, the day broken down into 1- 8 hour increments (including all time values in the range, e.g., 2.5 hours) in order to account for normal skin temperature variations associated, for example, with a mid- day time period and a sleep time period.
  • Such associations may be established employing standard statistical manipulations, such as trend analysis or multivariate analysis of variance. Further, using trend analysis or the TSES equation described herein, based on a series of skin temperature readings, a skin temperature reading at a future time point could be predicted or extrapolated.
  • the skin temperature reading parameter when below average body temperature for the subject, is an indicator of a possible hypoglycemic event.
  • a standard deviation and/or variance
  • such a reference range may be 31°C ⁇ 0.05°C (or more generally stated, average body temperature of the subject plus/minus the standard deviation or variance associated with the average body temperature). Confidence intervals may also be used to establish such ranges.
  • a decreasing body temperature trend is detected (for example, using a regression analysis or other trend analysis) such a trend of decreasing body temperature may be used as an indicator of a hypoglycemic event.
  • fluctuations of body temperature may be used as an indicator of a hypoglycemic event: for example, such fluctuations may be determined relative to a reference range.
  • the data from the skin conductivity sensor on the GlucoWatch biographer system was plotted in a similar manner.
  • the GlucoWatch biographer skin conductivity measurement was converted to an arbitrary scale from 0 - 10.
  • skin conductivity readings above 1 were considered an indication of perspiration occuring.
  • Figure 4 shows the average skin conductivity reading for all the measurement cycles within each reference blood glucose range. The trend was relatively flat over the euglycemic and hyperglycemic ranges with the three highest averages occuring in the ⁇ 40 mg/dL, 40 - 59 mg/dL, and 60 - 79 mg/dL ranges in the hypoglycemic region, indicating a higher degree of perspiration in the hypoglycemic region.
  • one of the parameters that may be used for the prediction of a hypoglycemic event is an above or below average sweat sensor reading (i.e., skin conductance).
  • skin conductance above a predetermined perspiration threshold is a predictor of a hypoglycemic event (see, for example, reference data in Figures 4 and 5).
  • an average skin conductance reading is determined for each subject by collecting a skin conductance reading data set over an extended period of time (e.g., days, weeks, or months).
  • An associated standard deviation and/or average variation may be associated with the average skin conductance using standard statistical methods applied to the skin conductance reading data set.
  • the average skin conductance may also be associated with the time of day; for example, the day broken down into 1-8 hour increments (including all time values in the range, e.g., 2.5 hours) in order to account for normal skin conductance variations associated, for example, with a mid-day time interval and a sleep interval.
  • Such associations may be established employing standard statistical manipulations, such as trend analysis or multivariate analysis of variance. Further, using trend analysis or the TSES equation described herein, based on a series of skin conductance readings, a skin temperature reading at a future time point could be predicted or extrapolated.
  • the skin conductance reading parameter when above or below average skin conductance for the subject, is an indicator of a possible hypoglycemic event.
  • a standard deviation may be associated with the average skin conductance of the subject to provide a reference range.
  • a reference range may a skin conductance reading of 0.15 ⁇ 0.025 average sweat sensor reading (or more generally stated, average skin conductance of the subject plus/minus the standard deviation or variance associated with the average skin conductance). Confidence intervals may also be used to establish such ranges.
  • an increasing or decreasing skin conductance trend is detected (for example, using a regression analysis or other trend analysis) such a trend of increasing or decreasing skin conductance may be used as an indicator of a hypoglycemic event.
  • fluctuations of skin conductance may be used as an indicator of a hypoglycemic event: for example, such fluctuation can be determined relative to a reference range.
  • Body temperature or body temperature trends
  • skin conductance or skin conductance trends
  • time series forecasting method described below.
  • Threshold values for selected parameters may be employed in the prediction of hypoglycemic events.
  • Such threshold values can be established, for example, based on review and analysis of a record of the subject's glucose values, body temperature and skin conductance.
  • a statistical program can be used to provide correlations between known hypoglycemic events (from the subject's record, which is created using a glucose momtoring device capable of providing frequent glucose, temperature, and skin conductance readings) and the selected parameters.
  • Such statistical programs are known in the art and include, for example, decision tree and ROC analysis (see below).
  • Time-series forecasting the prediction of future values of a variable from past observations, is a procedure used for extrapolation of data series.
  • methods that may be used for time-series forecasting, including, but not limited to, the following: extrapolation of linear or polynomial regression, autoregressive moving average, and exponential smoothing.
  • TSES Taylor Series Exponential Smoothing
  • is an empirical parameter obtained from experimental data which is typically between 0 and 1.
  • equation (1) An improvement to equation (1) is as follows: First, there is a resemblance between equation 1 and a Taylor Series expansion, shown as equation (2).
  • variable y n _ l was replaced by y'_ (the first derivative at y n with respect to time) and y n _ 2 was replaced by ⁇ yr (the second derivative at y n with respect
  • ⁇ t is the equally spaced time interval.
  • the TSES equation is essentially an exponentially smoothed moving average Taylor series expansion using the first two terms of the Taylor series. This technique may be adapted to work with the measurements produced by the GlucoWatch biographer system to predict glucose levels at least one measurement cycle ahead (WO 99/58973, published 18 November 1999).
  • the present invention comprises methods for the improved ability to predict hypoglycemia which include a two-fold approach.
  • additional physiological data namely skin temperature and skin conductivity
  • frequent glucose value readings obtained, for example, using the GlucoWatch biographer system
  • a time-series forecasting technique is used in conjunction with a data stream comprising frequent glucose measurements (obtained, for example, using the GlucoWatch biographer system) to predict future glucose levels and provide an early warning of incipient hypoglycemic events.
  • the synergy of these two different approaches provides an improved ability to predict hypoglycemia events.
  • a data set consisting of approximately 16,000 pairs of GlucoWatch biographer data and reference blood glucose values for approximately 450 diabetic patients has been generated in support of the present invention. Both Type 1 and Type 2 diabetics with a wide variety of demographic backgrounds are represented in this data set.
  • the data set may be used as a test bed for developing and refining the incorporation of the skin temperature and conductivity readings into a hypoglycemia predictive algorithm.
  • the data set is sufficiently large to enable a hypoglycemia predictive algorithm to be trained on a randomized subset of data, and tested on a separate "out of sample” subset.
  • GlucoWatch biographer system outputs can be produced using an emulator program which completely mimics the device operation.
  • the skin temperature and conductivity readings are incorporated into a hypoglycemia alert function in the emulator, and the simulated results (glucose readings, occurrence of hypoglycemia alert soundings, etc.) are recorded and predictive efficacy evaluated.
  • a number of different functions are evaluated for their ability to correctly predict hypoglycemia using the skin temperature, skin conductivity, and glucose data.
  • the preliminary data presented in Figures 3-5 and described above represent the simplest of these functions, that is, use of the discrete data points at each GlucoWatch biographer measurement cycle.
  • More complex algorithms may utilize, for example, variation of the temperature and conductivity parameters from a sliding average baseline value, monitoring of trends in these parameters, or more complex neural network approaches.
  • Numerous suitable estimation techniques useful in the practice of the invention are known in the art. These techniques may be used to provide correlation factors (e.g., constants), which correlation factors are then used in a mathematical transformation to obtain a measurement value indicative of a hypoglycemic event.
  • the hypoglycemic predictive algorithm may apply mathematical, statistical and or pattern recognition techniques to the problem of signal processing in chemical analyses, for example, using neural networks, genetic algorithm signal processing, linear regression, multiple-linear regression, principal components analysis of statistical (test) measurements, decision trees, or combinations thereof.
  • the structure of a particular neural network algorithm used in the practice of the invention may vary widely; however, the network may, for example, contain an input layer, one or more hidden layers, and one output layer.
  • Such networks can be trained on a test data set, and then applied to a population. There are many suitable network types, transfer functions, training criteria, testing and application methods which will occur to the ordinarily skilled artisan upon reading the instant specification.
  • One such evaluation method is a Mixtures of Experts algorithm (see, for example, WO 018289A1, published 6 April 2000; U.S. Patent No. 6,180,416, issued 30 January 2001).
  • skin conductance and/or body temperatures can be included as parameters to provide more accurate prediction of blood glucose and, in particular, more accurate prediction of potential hypoglycemic events.
  • One method to evaluate the effectiveness of a proposed hypoglycemia alert function examines each set of paired GlucoWatch biographer/reference blood points to determine whether the hypoglycemia alert function correctly predicted the presence or absence of hypoglycemia. The number of false positives (prediction of hypoglycemia when none existed) or false negatives (missing hypoglycemia when it did exist) is tabulated and used to calculate the sensitivity and specificity of the alert function.
  • a second analysis anticipates that each hypoglycemic episode can be predicted by several readings in the continual data stream of the GlucoWatch biographer system.
  • the number of hypoglycemic events predicted (and not predicted) by the hypoglycemia alert function of GlucoWatch biographer system is tabulated and used to calculate the predictive value of the hypoglycemia alert function.
  • the hypoglycemia alert function is optimized on a pre-existing data set and is then tested in clinical trials on diabetic patients. Accordingly, the incorporation of data from the sweat and temperature probes into the glucose-level prediction algorithm is tested using the existing clinical database. Optimization of the algorithm parameters is performed to minimize error in the glucose readings and maximize the accuracy of the hypoglycemia alarm function.
  • the GlucoWatch biographer system 's ability to acquire glucose data on a frequent basis creates a large database heretofore unavailable to a patient or clinician.
  • the time-series forecasting algorithm described above uses a series of closely spaced glucose readings to "forecast" a future reading. This algorithm provides an early warning of incipient hypoglycemic events, the most serious acute complication for diabetics.
  • An adaptive neural network technology may be combined with this time forecasting concept to provide a system that is customized to an individual patient's physiology: This process involves training the neural network with a sufficient number of paired momtor and reference blood glucose values from a given patient. In this way, the neural network "learns" the patterns in an individual's blood glucose changes. This approach reduces error in the prediction of hypoglycemia events.
  • optimization of forecasting algorithms is carried out using the "data mining" approach essentially as described above to investigate the skin temperature- conductivity data.
  • the time-series forecasting algorithms are trained and tested on the data set of GlucoWatch biographer system values and corresponding blood glucose reference values obtained during clinical trials and described above.
  • Various statistical measures of accuracy are used to evaluate and optimize forecasting algorithms including difference statistics (mean error, mean relative error, mean absolute error), RMS error, and the Clarke Error Grid Analysis.
  • the optimized forecasting algorithm is then prospectively tested in clinical trials essentially as follows.
  • Initial clinical trials are conducted with non-diabetic volunteers in order to verify that the modified GlucoWatch biographer systems function properly. Such trials also provide an early assessment of the capabilities of the hypoglycemia alert function.
  • the clinical protocol is essentially performed as follows.
  • a 100 gram oral glucose tolerance test (OGTT) has historically predicted device performance in a population of subjects with diabetes.
  • OGTT oral glucose tolerance test
  • non-diabetic subjects can achieve blood glucose levels as low as 50-70 mg/dL from endogenous insulin production, thus providing data to test the prediction of hypoglycemia.
  • meaningful data may be obtained with as few as 10 subjects.
  • the modified GlucoWatch biographer system comprising an improved hypoglycemic alert function is tested on subjects with diabetes.
  • results from a minimum of 20 subjects over at least five consecutive days are used to generate data sufficient to develop and optimize the algorithms.
  • the demographic profile of the subjects included in these clinical trials is diverse, as it is beneficial to investigate performance on as wide a demographic sample as possible.
  • These trials typically study subjects with both Type 1 and Type 2 in relatively equal numbers. Male and female subjects are represented fairly evenly. The subject population has a wide range of ages. The ethnic background of a typical large clinical trial is shown below in Table 1 as an example where 120 of the subjects are female and 111 were male. Typically the test population comprises subjects 18 years or older.
  • the general design of the study day is as follows.
  • the subjects arrive at the clinic in the morning having fasted from midnight the night before, and having not taken their morning insulin injection.
  • Two GlucoWatch biographer systems are applied to the subject's arm, synchronized with clock time, and started.
  • capillary blood samples are obtained twice per hour, and measured with a reference method for comparison with the GlucoWatch biographer measurements.
  • insulin dosing is adjusted by the investigator to achieve mildly hypoglycemic and hyperglycemic glucose levels.
  • the targeted blood glucose range is 40 - 450 mg/dL.
  • the GlucoWatch biographer systems are removed by laboratory personnel.
  • the data collected from each patient consists of demographic information, medical screening data, reference blood glucose measurements, and GlucoWatch biographer system measurements. These data are used for the purposes of evaluating the hypoglycemic prediction algorithm.
  • the optimum time-series algorithm model and variables to be used in the model are determined by "training" and testing on a large database of clinical GlucoWatch biographer system data.
  • the algorithm is optimized to minimize error in the glucose readings and maximize the accuracy of the hypoglycemia alarm function.
  • This optimized time-series prediction model is combined with one or more predictions of hypoglycemic events, e.g., using a sweat and temperature probe based predictive algorithm, as described above.
  • hypoglycemic predictive approach described herein utilizes information obtained from a data stream, e.g., frequently obtained glucose values, skin conductance or temperature readings, generated by a frequent sampling glucose monitoring device, e.g., the GlucoWatch biographer system, coupled with a time-series forecasting approach, to predict incipient hypoglycemic events and to alert the user.
  • a frequent sampling glucose monitoring device e.g., the GlucoWatch biographer system
  • One or more microprocessors may be used to coordinate the functions of the sampling device, sensing device, and predictive algorithms.
  • Such a microprocessor generally uses a series of program sequences to control the operations of the sampling device, which program sequences can be stored in the microprocessor's read only memory (ROM).
  • ROM read only memory
  • Embedded software firmware controls activation of measurement and display operations, calibration of analyte readings, setting and display of high and low analyte value alarms, display and setting of time and date functions, alarm time, and display of stored readings.
  • Sensor signals obtained from the sensor electrodes can be processed before storage and display by one or more signal processing functions or algorithms which are stored in the embedded software.
  • the microprocessor can also include an electronically erasable, programmable, read only memory (EEPROM) for storing calibration parameters, user settings and all downloadable sequences.
  • EEPROM electronically erasable, programmable, read only memory
  • a serial communications port may be used to, for example, allow the monitoring device to communicate with associated electronics, for example, wherein the device is used in a feedback control application to control a pump for delivery of a medicament such as insulin (using, e.g., an insulin pump).
  • one aspect of the present invention provides a method for predicting a hypoglycemic event in a subject.
  • a threshold glucose value or range of glucose values is determined that corresponds to a hypoglycemic event.
  • Symptom producing low plasma glucose levels vary in individuals and in different physiological states. Abnormally low plasma glucose is usually defined as less than or equal to about 50 mg/dL in men, about 45 mg/dL in women, and about 40 mg/dL in infants and children.
  • the methods of the present invention for prediction of a hypoglycemic event are, generally, to avoid glucose levels dropping to such low levels in the subject.
  • a threshold for a glucose measurement value indicative of a hypoglycemic event may be set higher (e.g., between about 80 to about 100 mg/dL) in order to give the subject more time to respond and prevent glucose levels from dropping into the hypoglycemic range.
  • at least one threshold parameter value (or range of values) * that is correlated with a hypoglycemic event is also determined, for example where the parameter is skin conductance reading or body temperature reading.
  • a series of glucose measurement values at selected time intervals is obtained using a selected glucose sampling system (for example, the GlucoWatch biographer).
  • a glucose measurement value at a further time interval e.g., n+1, where the last glucose measurement value of the series was n
  • This predicted glucose measurement value can be obtained, for example, using the time series forecasting method described above. Other predictive algorithms may be used as well.
  • Another parameter value or trend of parameter values is measured concurrently, simultaneously, or sequentially with the obtaining of the series of glucose measurement values.
  • Skin conductance and body temperature are two preferred parameters. Either the parameter value (for example at time point n, or a predicted value for the parameter at a later time point, for example, n+1) or trend of parameter values are compared with a threshold parameter value (or range of values) to determine whether the measured parameter value or trend of parameter values is suggestive of a hypoglycemic event.
  • a hypoglycemic event is predicted for the subject when both (i) comparing the predicted glucose measurement value to the threshold glucose value indicates a hypoglycemic event at time interval n+1, and (ii) comparing said parameter with said threshold parameter value indicates a hypoglycemic at time interval n or n+1.
  • one or more microprocessors are programmed to control data acquisition (e.g., the glucose measurement cycle and obtaining of skin conductance and/or body temperature readings) by being programmed to control devices capable of collecting the required data points.
  • the one or more microprocessors also typically comprise programming for algorithms to control the various predictive and comparative methods.
  • the method for prediction of hypoglycemic events employs a decision tree (also called classification tree) which utilizes a hierarchical evaluation of thresholds (see, for example, J.J. Oliver, et. al, in Proceedings of the 5th Australian Joint Conference on Artificial Intelligence, pages 361-367, A. Adams and L. Sterling, editors, World Scientific, Singapore, 1992; D.J. Hand, et al., Pattern Recognition, 31(5):641-650, 1998; J.J. Oliver and D.J. Hand, Journal of Classification, 13:281-297, 1996; W. Buntine, Statistics and Computing, 2:63-73, 1992; L.
  • a simple version of such a decision tree is to choose a threshold current glucose value reading, a threshold body temperature value, and a threshold skin conductance (sweat) value. If a current (or predicted) glucose value reading is equal to or below the threshold glucose value, then the body temperature is evaluated. If the body temperature is below the threshold body temperature value, then skin conductance is evaluated. If skin conductance is greater than the threshold skin conductance value, then a hypoglycemic event is predicted.
  • a threshold value e.g. 100 mg/dL
  • the next level of the decision tree may be an evaluation of the subject's body temperature reading at time (n), which is compared to a threshold body temperature. For example, if the body temperature is greater than the threshold body temperature (e.g., 33.95°C ) then a decision is made by the algorithm to continue monitoring. If the body temperature is less than or equal to the threshold the threshold body temperature (e.g., 33.95°C) then the algorithm continues with the next level of the decision tree.
  • a threshold body temperature e.g., 33.95°C
  • the next level of the decision tree may be an evaluation of the subject's skin conductance reading at time (n), which is compared to a threshold skin conductance. For example, if the skin conductance (i.e., sweat reading) is less than the threshold skin conductance (e.g., 0.137 sweat sensor reading) then a decision is made by the algorithm to continue monitoring. If the skin conductance is greater than or equal to the threshold skin conductance then the algorithm predicts a hypoglycemic event.
  • the decision tree could be further elaborated by adding further levels. For example, after a determination that a hypoglycemic event is possible the next glucose level can be evaluated to see if it is above or below the threshold value. Both body temperature and skin conductance could be tested as above once again to confirm the prediction of a hypoglycemic event.
  • the most important attribute is typically placed at the root of the decision tree.
  • the root attribute is the current glucose reading.
  • a predicted glucose reading at a future time point may be the root attribute.
  • body temperature or skin conductance could be used as the root attribute.
  • thresholds need not be established a priori.
  • the algorithm can learn from a database record of an individual subject's glucose readings, body temperature, and skin conductance.
  • the algorithm can train itself to establish threshold values based on the data in the database record using, for example, a decision tree algorithm.
  • a decision tree may be more complicated than the simple scenario described above. For example, if skin conductance (i.e., sweat) is very high the algorithm may set a first threshold for the body temperature which is higher than normal, if the skin conductance reading is medium, the algorithm might set a relatively lower body temperature threshold, etc.
  • skin conductance i.e., sweat
  • the algorithm might set a relatively lower body temperature threshold, etc.
  • a decision tree may be learnt in an automated way from data using an algorithm such as a recursive partitioning algorithm.
  • the recursive partitioning algorithm grows a tree by starting with all the training examples in the root node.
  • the root node may be "split," for example, using a three-step process as follows.
  • the root node may be split on all the attributes available, at all the thresholds available (e.g., in a training database). To each considered split a criteria is applied (such as, GINI index, entropy of the data, or message length of the data). (2) An attribute (A) and a threshold (T) are selected which optimize the criteria. This results in a decision tree with one split node and two leaves. (3) Each example in the training database is associated with one of these two leaves (based on the measurements of the training example). Each leaf node is then recursively split using the three-step process. Splitting is continued until a stopping criteria is applied. An example of a stopping criteria is if a node has less than 50 examples from the training database that are associated with it.
  • the algorithm software can associate a probability with the decision.
  • the probabilities at each level of decision can be evaluated (e.g., summed) and the cumulative probability can be used to determine whether to set off an alarm indicating a hypoglycemic event.
  • Receiver Operating Characteristic (ROC) curve analysis can be applied to decision tree analysis described above ROC analysis is another threshold optimization means. It provides a way to determine the optimal true positive fraction, while minimizing the false positive fraction.
  • a ROC analysis can be used to compare two classification schemes, and determine which scheme is a better overall predictor of the selected event (e.g., a hypoglycemic event); for example, a ROC analysis can be used to compare a simple threshold classifier with a decision tree.
  • ROC software packages typically include procedures for the following: correlated, continuously distributed as well as inherently categorical rating scale data; statistical comparison between two binormal ROC curves; maximum likelihood estimation of bino ⁇ nal ROC curves from set of continuous as well as categorical data; and analysis of statistical power for comparison of ROC curves.
  • ROC Accumetric Corporation, Montreal, Quebec, CA.
  • Related techniques that can be applied to the above analyses include, but are not limited to, Decision Graphs, Decision Rules (also called Rules Induction), Discriminant Analysis (including Stepwise Discriminant Analysis), Logistic Regression, Nearest Neighbor Classification, Neural Networks, and Na ⁇ ve Bayes Classifier.

Abstract

Described herein are methods, devices, and microprocessors useful for predicting a hypoglycemic event in a subject. The hypoglycemic predictive approach described herein utilizes information obtained from a data stream, e.g. frequently obtained glucose values (current and/or predicted), body temperature, and/or skin conductance, to predict incipient hypoglycemic events and to alert the user.

Description

METHODS AND DEVICES FORPREDICTIONOF HYPOGLYCEMIC EVENTS
TECHNICAL FIELD
Described herein are methods, devices, and microprocessors useful for predicting a hypoglycemic event in a subject. The present invention for prediction of hypoglycemic events typically employs multiple parameters in the prediction. Such parameters include, but are not limited to, glucose readings (current and/or predicted), body temperature, and/or skin conductance.
BACKGROUND OF THE INVENTION
Hypoglycemia is the most critical acute complication of diabetes. Typically used present methods of self-monitoring of blood glucose (SMBG) provide periodic measurements of blood glucose obtained from a finger stick. This method produces measurements that, while very accurate, are too infrequent to detect hypoglycemic episodes. Frequently, in order to avoid hypoglycemia, diabetics maintain abnormally high blood glucose levels to provide a "buffer" against low blood glucose levels. This constant high blood glucose level is the root cause of most long-term complications of diabetes, namely, retinopathy, neuropathy, nephropathy, and cardiovascular disease. In effect, the present SMBG methods are forcing many diabetics to pay for a lower rate of acute complications with a higher rate of chronic complications in later life.
The Diabetes Control and Complications Trial (DCCT) (The Diabetes Control and Complications Trial Research Group. New Engl. J. Med. 329, 977-1036 (1993)) clearly showed that more blood glucose information is essential to better clinical outcomes. The subject group that measured blood glucose and administered insulin more frequently (3-7 times per day) had a substantially lower rate of complications at the end of the study relative to the group that tested and injected less frequently. Even so, the tight control group was only able to reduce the average blood glucose to a value approximately 50% above normal (153 mg/dL). Similarly, the HbAlc levels (a measure of average blood glucose level over time) were lowered substantially relative to the control group, but not into the normal range. As a result of this more intensive therapy, the tight control group experienced hypoglycemic events three times more often than the control group. These results demonstrate that three to seven blood glucose measurements per day are sufficient to lower longer-term complication rates, but still do not provide enough information to bring average blood glucose levels to normal, or to prevent hypoglycemic events. Similar results have been obtained for subjects on oral medication (UK Prospective Diabetes Study (UKPDS) Group, Lancet 352:837-853 (1998); Ohl ubo Y, et al., Diabetes Research & Clinical Practice 28:103- 17 (1995)), demonstrating the general benefit of frequent glucose monitoring in the management of diabetes. However, Bolinder, et al., (Diabetes Care 20:64-70 (1997)) show that even seven measurements per day fail to detect more than one-third of all hypoglycemic events.
SUMMARY OF THE INVENTION
The present invention describes methods, devices, and microprocessors for predicting a hypoglycemic event in a subject. The methods of the invention typically employ multiple parameters to be used in prediction of the hypoglycemic event. Such parameters include, but are not limited to, current glucose readings (reflecting glucose amount or concentration in the subject), one or more predicted future glucose reading, body temperature, and skin conductance. In one aspect the present invention comprises a method for predicting a hypoglycemic event in a subject. The method comprises determining threshold values (or ranges of values) for the selected parameters, wherein the threshold values (or ranges of values) are indicative of a hypoglycemic event in the subject: e.g., determining (i) a threshold glucose value (or range of values) that corresponds to the hypoglycemic event, and (ii) at least one threshold parameter value that is correlated with the hypoglycemic event, wherein the parameter is either skin conductance readings or temperature readings. In one embodiment of the invention both skin conductance readings and temperature readings are employed. A series of glucose measurement values is typically obtained at selected time intervals. In one embodiment the time intervals are evenly spaced. Such a series may be obtained, for example, using a method comprising: extracting a sample comprising glucose from the subject using a transdermal sampling system that is in operative contact with a skin or mucosal surface of the subject; obtaining a raw signal from the extracted glucose, wherein the raw signal is specifically related to glucose amount or concentration in the subject; correlating the raw signal with a glucose measurement value indicative of the amount or concentration of glucose present in the subject at the time of extraction; and repeating the extracting, obtaining, and correlating to provide a series of measurement values at selected time intervals. In one embodiment, the sampling system is maintained in operative contact with the skin or mucosal surface of the subject during the extracting, obtaining, and correlating to provide for frequent glucose measurements.
In the practice of this aspect of the method, either the current glucose value (time = n) or a measurement value predicted for a further time interval subsequent to the series of measurement values (e.g., time = n+1; that is, one time interval after the most recent measurement (time = n) in the series of measurement values), is compared to the threshold glucose value, wherein a measurement value lower than or equal to the threshold value is designated to be hypoglycemic.
A parameter value or trend of parameter values is measured concurrently, simultaneously, or sequentially with the obtaining of the series of glucose measurement values. In one embodiment of the invention, the parameter value or trend of parameter values is reflective of either skin conductance readings or temperature readings of the subject. The parameter value or trend of parameter values is compared with the threshold parameter value (or range of values) to determine whether the parameter value or trend of parameter values indicates a hypoglycemic event. A hypoglycemic event is predicted in the subject when both (i) comparing the predicted measurement value to the threshold glucose value indicates a hypoglycemic event, and (ii) comparing one or more other parameter (e.g., body temperature and/or skin conductance) with the threshold parameter value (or range of values) indicates a hypoglycemic event. h one embodiment of the above method, the series of measurement values comprises three or more discrete values. In this embodiment, the predicting of the measurement value at a further time interval may be carried out using the series of three or more measurement values in a series function represented by: α2 n+ι = y„ +a{yn - yn-ι ) + —(y„ - 2 -I + JV2) (7) wherein y is the measurement value of glucose, n is the time interval between measurement values, and α is a real number between 0 and 1. The series function may be used to predict the value of yn+1 where the time interval n+1 occurs one time interval after the series of measurement values is obtained.
When skin conductance is a selected parameter, the sampling system typically comprises a sweat probe and the skin conductance readings are obtained using the sweat probe.
When body temperature is a selected parameter, the sampling system typically comprises a temperature probe and the temperature readings are obtained using the temperature probe. In one embodiment of the method of the present invention, the sample comprising glucose is extracted from the subject into a collection reservoir to obtain an amount or concentration of glucose in the reservoir. Such one or more collection reservoirs are typically in contact with the skin or mucosal surface of the subject and the sample is extracted using an iontophoretic current applied to the skin or mucosal surface. Further, at least one collection reservoir may comprise an enzyme that reacts with the extracted glucose to produce an electrochemically detectable signal, e.g., glucose oxidase. Alternatively, the series of glucose measurement values may be obtained with a different device, for example, using a near-IR spectrometer.
The present invention also includes a glucose monitoring system useful for performing the methods of the present invention. In one embodiment, the glucose monitoring system comprises, in operative combination, a sensing mechanism (in operative contact with the subject or with a glucose-containing sample extracted from the subject, wherein the sensing mechanism obtains a raw signal specifically related to glucose amount or concentration in the subject), a device to obtain either skin conductance readings or temperature readings from the subject, and one or more microprocessors in operative communication with the sensing mechanism. The microprocessors comprise programming to (i) control the sensing mechanism to obtain a series of raw signals at selected time intervals, (ii) correlate the raw signals with measurement values indicative of the amount or concentration of glucose present in the subject to obtain a series of measurement values, {Hi) when necessary predict a measurement value at a further time interval, which occurs after the series of measurement values is obtained, (iv) compare the predicted measurement value to a predetermined threshold value or range of values, wherein a predicted measurement value lower than the predetermined threshold value is designated to be hypoglycemic, (v) control the device for measuring skin conductance readings or temperature readings of the subject, (vi) compare the skin conductance readings or temperature readings with a threshold parameter value, range of values, or trend of parameter values to determine whether the skin conductance readings or temperature readings indicate a hypoglycemic event; and {\ii) predict a hypoglycemic event in the subject when both (a) comparing the predicted measurement value to the threshold glucose value (or range of values) indicates a hypoglycemic event, and (b) comparing the skin conductance readings and/or temperature readings with a threshold parameter value, range of values, or trend of parameter values indicates a hypoglycemic event. The sensing mechanism of the monitoring system may, for example, comprise a biosensor having an electrochemical sensing element or a near-IR spectrometer. Further, the monitoring system may comprise a device to obtain the skin conductance readings (e.g., a sweat probe) and/or a device to obtain the temperature readings (e.g., a temperature probe). In one embodiment of the monitoring system, the predicting of a measurement value at a further time interval is carried out using the series of three or more measurement values in a series function represented by: α2 yn+ι = y« +a(yn - yn_x ) + ~ {y„ - 2yn +y„_2) (7)
wherein is the measurement value of glucose, n is the time interval between measurement values, and α is a real number between 0 and 1.
In one aspect of the present invention, the method for prediction of hypoglycemic events employs a decision tree that utilizes a hierarchical evaluation of thresholds of selected parameters, where the thresholds are indicative of a hypoglycemic event. Such parameters include, but are not limited to, current glucose readings (reflecting glucose amount or concentration in the subject), one or more predicted future glucose reading, body temperature, and skin conductance. In another aspect, the present invention comprises one or more microprocessors programmed to control the above described methods, measurement cycle, devices, mechanisms, calculations, predictions, comparisons, evaluations, etc. The microprocessors may also mediate an alarm or alert related to the predicted hypoglycemic event.
These and other embodiments of the present invention will readily occur to those of ordinary skill in the art in view of the disclosure herein.
BRIEF DESCRIPTION OF THE FIGURES
Figure 1 presents a schematic diagram of a skin-side view of the GlucoWatch® (Cygnus, Inc., Redwood City, CA, US) biographer system.
Figure 2 presents a comparison of GlucoWatch biographer measurement with conventional blood glucose measurement over 14 hours for one subject.
Figure 3 presents data showing the average minimum temperature during each GlucoWatch biographer measurement cycle vs. reference blood glucose.
Figure 4 presents data showing average skin conductivity reading vs. blood glucose range. Figure 5 presents data showing percentage of skin conductivity readings indicating perspiration vs. blood glucose range.
DETAILED DESCRIPTION OF THE INVENTION
The practice of the present invention will employ, unless otherwise indicated, conventional methods of diagnostics, chemistry, biochemistry, electrochemistry, statistics, and pharmacology, within the skill of the art in view of the teachings of the present specification. Such conventional methods are explained fully in the literature. As used in this specification and the appended claims, the singular forms "a," "an" and "the" include plural references unless the content clearly dictates otherwise. Thus, for example, reference to "a reservoir" includes a combination of two or more such reservoirs, reference to "an analyte" includes mixtures of analytes, and the like.
1. DEFINITIONS
Unless defined otherwise, all technical and scientific terms used herein have the same meaning as commonly understood by one of ordinary skill in the art to which the invention pertains. Although other methods and materials similar, or equivalent, to those described herein can be used in the practice of the present invention, the preferred materials and methods are described herein.
In describing and claiming the present invention, the following terminology will be used in accordance with the definitions set out below.
The term "microprocessor" refers to a computer processor contained on an integrated circuit chip, such a processor may also include memory and associated circuits. A microprocessor may further comprise programmed instructions to execute or control selected functions, computational methods, switching, etc. Microprocessors and associated devices are commercially available from a number of sources, including, but not limited to, Cypress Semiconductor Corporation, San Jose, CA; IBM Corporation, White Plains, New York; Applied Microsystems Corporation, Redmond, WA; Intel Corporation, Chandler, Arizona; NEC Corporation, New York, NY; and, National Semiconductor, Santa Clara, CA. The terms "analyte" and "target analyte" are used to denote any physiological analyte of interest that is a specific substance or component that is being detected and/or measured in a chemical, physical, enzymatic, or optical analysis. A detectable signal (e.g., a chemical signal or electrochemical signal) can be obtained, either directly or indirectly, from such an analyte or derivatives thereof. Furthermore, the terms "analyte" and "substance" are used interchangeably herein, and are intended to have the same meaning, and thus encompass any substance of interest. In preferred embodiments, the analyte is a physiological analyte of interest, for example, glucose, or a chemical that has a physiological action, for example, a drug or pharmacological agent. A "sampling device," "sampling mechanism" or "sampling system" refers to any device and/or associated method for obtaining a sample from a biological system for the purpose of determining the concentration of an analyte of interest. Such "biological systems" include any biological system from which the analyte of interest can be extracted, including, but not limited to, blood, interstitial fluid, perspiration and tears. Further, a "biological system" includes both living arid artificially maintained systems. The term "sampling" mechanism refers to extraction of a substance from the biological system, generally across a membrane such as the stratum corneum or mucosal membranes, wherein said sampling is invasive, minimally invasive, semi-invasive or non-invasive. The membrane can be natural or artificial, and can be of plant or animal nature, such as natural or artificial skin, blood vessel tissue, intestinal tissue, and the like. Typically, the sampling mechanism is in operative contact with a "reservoir," or "collection reservoir," wherein the sampling mechanism is used for extracting the analyte from the biological system into the reservoir to obtain the analyte in the reservoir. Non- limiting examples of sampling teclmiques include iontophoresis, sonophoresis (see, e.g., International Publication No. WO 91/12772, published 5 September 1991; U.S. Patent No. 5,636,632), suction, electroporation, thermal poration, passive diffusion (see, e.g., International Publication Nos.: WO 97/38126 (published 16 October 1997); WO 97/42888, WO 97/42886, WO 97/42885, and WO 97/42882 (al! published 20 November 1997); and WO 97/43962 (published 27 November 1997)), microfϊne (miniature) lances or cannulas, biolistic (e.g., using particles accelerated to high speeds), subcutaneous implants or insertions, and laser devices (see, e.g., Jacques et al. (1978) J. Invest. Dermatology 88:88-93; International Publication WO 99/44507, published 1999 September 10; International Publication WO 99/44638, published 1999 September 10; and International Publication WO 99/40848, published 1999 August 19). Iontophoretic sampling devices are described, for example, in International Publication No. WO 97/24059, published 10 July 1997; European Patent Application EP 0942 278, published 15 September 1999; International Publication No. WO 96/00110, published 4 January 1996; International Publication No. WO 97/10499, published 2 March 1997; U.S. Patent Numbers 5,279,543; 5,362,307; 5,730,714; 5,771,890; 5,989,409; 5,735,273; 5,827,183; 5,954,685 and 6,023,629. Further, a polymeric membrane may be used at, for example, the electrode surface to block or inhibit access of interfering species to the reactive surface of the electrode. The term "physiological fluid" refers to any desired fluid to be sampled, and includes, but is not limited to, blood, cerebrospinal fluid, interstitial fluid, semen, sweat, saliva, urine and the like.
The term "artificial membrane" or "artificial surface," refers to, for example, a polymeric membrane, or an aggregation of cells of monolayer thickness or greater which are grown or cultured in vivo or in vitro, wherein said membrane or surface functions as a tissue of an organism but is not actually derived, or excised, from a pre-existing source or host.
A "monitoring system" or "analyte monitoring device" refer to a system useful for obtaining frequent measurements of a physiological analyte present in a biological system. Such a device is useful, for example, for monitoring the amount or concentration of an analyte in a subject'. Such a system may comprise, but is.not limited to, a sampling mechanism, a sensing mechanism, and a microprocessor mechanism hi operative communication with the sampling mechanism and the sensing mechanism. Such a device typically provides frequent measurement or determination of analyte amount or concentration in the subject and provides an alert or alerts when levels of the analyte being monitored fall outside of a predetermined range. Such devices may comprise durable and consumable (or disposable) elements. The term "glucose monitoring device" refers to a device for monitoring the amount or concentration of glucose in a subject. Such a device typically provides a frequent measurement or determination of glucose amount or concentration in the subject and provides an alert or alerts when glucose levels fall outside of a predetermined range. One such exemplary glucose monitoring device is the GlucoWatch biographer available from Cygnus, Inc., Redwood City, CA, US. The GlucoWatch biographer comprises two primary elements, a durable element (comprising a watch-type housing, circuitry, display element, microprocessor element, electrical connector elements, and may further comprise a power supply) and a consumable, or disposable, element (e.g., an AutoSensor component involved in sampling and signal detection, see, for example, WO 99/58190, published 18 November 1999). This and similar devices is described, for example, in the following publications: Tamada, et al., (1999) JAMA 282:1839-1844; U.S. Patent No. 5,771,890, issued 30 June 1998; U.S. Patent No. 5, 735,273, issued 7 April 1998; U.S. Patent No. 5,827,183, issued 27 October 1998; U.S. Patent No. 5,954,685, issued 21 September 1999; U.S. Patent No. 5,989,409, issued 23 November 1999; U.S. Patent No. 6,023,629, issued 8 February 2000; EP Patent Application EP 0 942 278 A2, published 15 Sept. 1999; PCT International Application WO 96/001100, published 4 January 1996; PCT International Application WO 99/58190, published 18 November 1999. The GlucoWatch biographer provides a device for frequent sampling of glucose from a subject the application of low intensity electric fields across the skin (iontophoresis) to enhance the transport of glucose from body tissues to a sampling chamber. In addition, when the concentration or amount of glucose has been determined to be outside of a predetermined range of values the GlucoWatch biographer produces an alert or alarm signal. Such an alert or alarm is a component of the GlucoWatch biographer. A "measurement cycle" typically comprises extraction of an analyte from a subject, using, for example, a sampling device, and sensing of the extracted analyte, for example, using a sensing device, to provide a measured signal, for example, a measured signal response curve. A complete measurement cycle may comprise one or more sets of extraction and sensing.
The term "frequent measurement" refers to a series of two or more measurements obtained from a particular biological system, which measurements are obtained using a single device maintained in operative contact with the biological system over a time period in which a series of measurements (e.g, second, minute or hour intervals) is obtained. The term thus includes continual and continuous measurements. The term "subject" encompasses any warm-blooded animal, particularly including a member of the class Mammalia such as, without limitation, humans and nonhuman primates such as chimpanzees and other apes and monkey species; farm animals such as cattle, sheep, pigs, goats and horses; domestic mammals such as dogs and cats; laboratory animals including rodents such as mice, rats and guinea pigs, and the like. The term does not denote a particular age or sex and, thus, includes adult and newborn subjects, whether male or female.
The term "transdermal" includes both transdermal and transmucosal techniques, i.e., extraction of a target analyte across skin, e.g., stratum corneum, or mucosal tissue. Aspects of the invention which are described herein in the context of "transdermal," unless otherwise specified, are meant to apply to both transdermal and transmucosal techniques.
The term "transdermal extraction," or "transdermally extracted" refers to any sampling method, which entails extracting and/or transporting an analyte from beneath a tissue surface across skin or mucosal tissue. The term thus includes extraction of an analyte using, for example, iontophoresis (reverse iontophoresis), electroosmosis, sonophoresis, microdialysis, suction, and passive diffusion. These methods can, of course, be coupled with application of skin penetration enhancers or skin permeability enhancing technique such as various substances or physical methods such as tape stripping or pricking with micro-needles. The term "transdermally extracted" also encompasses extraction techniques which employ thermal poration, laser microporation, electroporation, microfme lances, microfine cannulas, subcutaneous implants or insertions, combinations thereof, and the like.
The term "iontophoresis" refers to a method for transporting substances across tissue by way of an application of electrical energy to the tissue. In conventional iontophoresis, a reservoir is provided at the tissue surface to serve as a container of (or to provide containment for) material to be transported. Iontophoresis can be carried out using standard methods known to those of skill in the art, for example by establishing an electrical potential using a direct current (DC) between fixed anode and cathode "iontophoretic electrodes," alternating a direct current between anode and cathode iontophoretic electrodes, or using a more complex waveform such as applying a current with alternating polarity (AP) between iontophoretic electrodes (so that each electrode is alternately an anode or a cathode). For example, see U.S. Patent Nos. 5,771,890 and 6,023,629 and PCT Publication No. WO 96/00109, published 4 January 1996. The term "reverse iontophoresis" refers to the movement of a substance from a biological fluid across a membrane by way of an applied electric potential or current. In reverse iontophoresis, a reservoir is provided at the tissue surface to receive the extracted material, as used in the GlucoWatch biographer glucose monitor (See, e.g., Tamada et al. (1999) JAMA 282:1839-1844; Cygnus, Inc., Redwood City, CA).
"Electroosmosis" refers to the movement of a substance through a membrane by way of an electric field-induced convective flow. The terms iontophoresis, reverse iontophoresis, and electroosmosis, will be used interchangeably herein to refer to movement of any ionically charged or uncharged substance across a membrane (e.g., an epithelial membrane) upon application of an electric potential to the membrane through an ionically conductive medium.
The term "sensing device," or "sensing mechanism," encompasses any device that can be used to measure the concentration or amount of an analyte, or derivative thereof, of interest. The sensing mechanism may employ any suitable sensing element to provide the raw signal (where the raw signal is specifically related to analyte amount or concentration) including, but not limited to, physical, chemical, electrochemical, photochemical, spectrophotometric, polarimetric, colorimetric, radiometric, or like elements, and combinations thereof. Examples of electrochemical devices include the Clark electrode system (see, e.g., Updike, et al., (1967) Nature 214:986-988), and other amperometric, coulometric, or potentiometric electrochemical devices, as well as, optical methods, for example UV detection or infrared detection (e.g., U. S. Patent No. 5,747,806). Further examples include, a near-IR radiation diffuse-reflection laser spectroscopy device (e.g, described in U.S. Patent No. 5,267,152 to Yang, et al). Similar near-IR spectrometric devices are also described in U.S. Patent No. 5,086,229 to Rosenthal, et al. and U.S. Patent No. 4,975,581 to Robinson, et al. These near-IR devices use traditional methods of reflective or transmissive near infrared (near-IR) analysis to measure absorbance at one or more glucose-specific wavelengths, and can be contacted with the subject at an appropriate location, such as a finger-tip, skin fold, eyelid, or forearm surface to obtain the raw signal. In preferred embodiments of the invention, a biosensor is used which comprises an electrochemical sensing element.
A "biosensor" or "biosensor device" includes, but is not limited to, a "sensor element" that includes, but is not limited to, a "biosensor electrode" or "sensing electrode" or "working electrode" which refers to the electrode that is monitored to determine the amount of electrical signal at a point in time or over a given time period, which signal is then correlated with the concentration of a chemical compound. The sensing electrode comprises a reactive surface which converts the analyte, or a derivative thereof, to electrical signal. The reactive surface can be comprised of any electrically conductive material such as, but not limited to, platinum-group metals (including, platinum, palladium, rhodium, ruthenium, osmium, and iridium), nickel, copper, and silver, as well as, oxides, and dioxides, thereof, and combinations or alloys of the foregoing, which may include carbon as well. Some catalytic materials, membranes, and fabrication technologies suitable for the construction of amperometric biosensors are described by Newman, J.D., et al.(1995) Analytical Chemistry 67:4594-4599.
The "sensor element" can include components in addition to the sensing electrode, for example, it can include a "reference electrode" and a "counter electrode." The term "reference electrode" is used to mean an electrode that provides a reference potential, e.g., a potential can be established between a reference electrode and a working electrode. The term "counter electrode" is used to mean an electrode in an electrochemical circuit that acts as a current source or sink to complete the electrochemical circuit. Although it is not essential that a counter electrode be employed where a reference electrode is included in the circuit and the electrode is capable of performing the function of a counter electrode, it is preferred to have separate counter and reference electrodes because the reference potential provided by the reference electrode is most stable when it is at equilibrium. If the reference electrode is required to act further as a counter electrode, the current flowing through the reference electrode may disturb this equilibrium. Consequently, separate electrodes functioning as counter and reference electrodes are preferred.
In one embodiment, the "counter electrode" of the "sensor element" comprises a "bimodal electrode." The term "bimodal electrode" typically refers to an electrode which is capable of functioning non-simultaneously as, for example, both the counter electrode (of the "sensor element") and the iontophoretic electrode (of the "sampling mechanism") as described, for example, U.S. Patent No. 5,954,685.
The terms "reactive surface," and "reactive face" are used interchangeably herein to mean the surface of the sensing electrode that: (1) is in contact with the surface of an ionically conductive material which contains an analyte or through which an analyte, or a derivative thereof, flows from a source thereof; (2) is comprised of a catalytic material (e.g., a platinum group metal, platinum, palladium, rhodium, ruthenium, or nickel and/or oxides, dioxides and combinations or alloys thereof) or a material that provides sites for electrochemical reaction; (3) converts a chemical signal (for example, hydrogen peroxide) into an electrical signal (e.g., an electrical current); and (4) defines the electrode surface area that, when composed of a reactive material, is sufficient to drive the electrochemical reaction at a rate sufficient to generate a detectable, reproducibly measurable, electrical signal that is correlatable with the amount of analyte present in the electrolyte. An "ionically conductive material" refers to any material that provides ionic conductivity, and through which electrochemically active species can diffuse. The ionically conductive material can be, for example, a solid, liquid, or semi-solid (e.g., in the form of a gel) material that contains an electrolyte, which can be composed primarily of water and ions (e.g., sodium chloride), and generally comprises 50% or more water by weight. The material can be in the form of a hydrogel, a sponge or pad (e.g., soaked with an electrolytic solution), or any other material that can contain an electrolyte and allow passage of electrochemically active species, especially the analyte of interest. Some exemplary hydrogel formulations are described in WO 97/02811, published Jan. 30, 1997. The ionically conductive material may comprise a biocide. For example, during manufacture of an AutoSensor assembly, one or more biocides may be incorporated into the ionically conductive material. Biocides of interest include, but are not limited to, compounds such as chlorinated hydrocarbons; organometallics; hydrogen releasing compounds; metallic salts; organic sulfur compounds; phenolic compounds (including, but not limited to, a variety of Nipa Hardwicke Inc. liquid preservatives registered under the trade names Nipastat®, Nipaguard®, Phenosept®, Phenonip®, Phenoxetol®, and Nipacide®); quaternary ammonium compounds; surfactants and other membrane-disrupting agents (including, but not limited to, undecylenic acid and its salts), combinations thereof, and the like.
The term "buffer" refers to one or more components which are added to a composition in order to adjust or maintain the pH of the composition.
The term "electrolyte" refers to a component of the ionically conductive medium which allows an ionic current to flow within the medium. This component of the ionically conductive medium can be one or more salts or buffer components, but is not limited to these materials.
The term "collection reservoir" is used to describe any suitable containment method or device for containing a sample extracted from a biological system. For example, the collection reservoir can be a receptacle containing a material which is ionically conductive (e.g., water with ions therein), or alternatively it can be a material, such as a sponge-like material or hydrophilic polymer, used to keep the water in place. Such collection reservoirs can be in the form of a hydrogel (for example, in the shape of a disk or pad). Hydrogels are typically referred to as "collection inserts." Other suitable collection reservoirs include, but are not limited to, tubes, vials, strips, capillary collection devices, cannulas, and miniaturized etched, ablated or molded flow paths.
A "collection insert layer" is a layer of an assembly or laminate comprising a collection reservoir (or collection insert) located, for example, between a mask layer and a retaining layer. A "laminate" refers to structures comprised of, at least, two bonded layers.
The layers may be bonded by welding or through the use of adhesives. Examples of welding include, but are not limited to, the following: ultrasonic welding, heat bonding, and inductively coupled localized heating followed by localized flow. Examples of common adhesives include, but are not limited to, chemical compounds such as, cyanoacrylate adhesives, and epoxies, as well as adhesives having such physical attributes as, but not limited to, the following: pressure sensitive adhesives, thermoset adhesives, contact adhesives, and heat sensitive adhesives.
A "collection assembly" refers to structures comprised of several layers, where the assembly includes at least one collection insert layer, for example a hydrogel. An example of a collection assembly as referred to in the present invention is a mask layer, collection insert layer, and a retaining layer where the layers are held in appropriate functional relationship to each other but are not necessarily a laminate (i.e., the layers may not be bonded together. The layers may, for example, be held together by interlocking geometry or friction).
The term "mask layer" refers to a component of a collection assembly that is substantially planar and typically contacts both the biological system and the collection insert layer. See, for example, U.S. Patent Nos. 5,735,273, 5,827,183, and 6,201,979. The term "gel retaining layer" or "gel retainer" refers to a component of a collection assembly that is substantially planar and typically contacts both the collection insert layer and the electrode assembly.
The term "support tray" typically refers to a rigid, substantially planar platform and is used to support and/or align the electrode assembly and the collection assembly. The support tray provides one way of placing the electrode assembly and the collection assembly into the sampling system.
An "AutoSensor assembly" refers to a structure generally comprising a mask layer, collection insert layer, a gel retaining layer, an electrode assembly, and a support tray. The AutoSensor assembly may also include liners where the layers are held in approximate, functional relationship to each other. Exemplary collection assemblies and AutoSensor structures are described, for example, in International Publication WO 99/58190, published 18 November 1999; and U.S. Patent Numbers 5,735,273 and 5,827,183. The mask and retaining layers are preferably composed of materials that are substantially impermeable to the analyte (chemical signal) to be detected; however, the material can be permeable to other substances. By "substantially impermeable" is meant that the material reduces or eliminates chemical signal transport (e.g., by diffusion). The material can allow for a low level of chemical signal transport, with the proviso that chemical signal passing through the material does not cause significant edge effects at the sensing electrode.
The terms "about" or "approximately" when associated with a numeric value refers to that numeric value plus or minus 10 units of measure (i.e. percent, grams, degrees or volts), preferably plus or minus 5 units of measure, more preferably plus or minus 2 units of measure, most preferably plus or minus 1 unit of measure.
By the term "printed" is meant a substantially uniform deposition of an electrode formulation onto one surface of a substrate (i.e., the base support). It will be appreciated by those skilled in the art that a variety of techniques may be used to effect substantially uniform deposition of a material onto a substrate, e.g., Gravure- type printing, extrusion coating, screen coating, spraying, painting, electroplating, laminating, or the like.
The term "physiological effect" encompasses effects produced in the subject that achieve the purpose of a therapy. In preferred embodiments, a physiological effect means that the symptoms of the subject being treated are prevented or alleviated. For example, a physiological effect would be one that results in the prolongation of survival in a patient.
"Parameter" refers to an arbitrary constant or variable so appearing in a mathematical expression that changing it gives various cases of the phenomenon represented (McGraw-Hill Dictionary of Scientific and Technical Terms, S.P.
Parker, ed., Fifth Edition, McGraw-Hill Inc., 1994). A parameter is any of a set of properties whose values determine the characteristics or behavior of something. "Decay" refers to a gradual reduction in the magnitude of a quantity, for example, a current detected using a sensor electrode where the current is correlated to the concentration of a particular analyte and where the detected current gradually reduces but the concentration of the analyte does not.
"Skip" or "skipped" signals refer to data that do not conform to predetermined criteria (for example, error-associated criteria as described in U.S. Patent No. 6,233,471). A skipped reading, signal, or measurement value typically has been rejected (i.e., a "skip error" generated) as not being reliable or valid because it does not conform with data integrity checks, for example, where a signal is subjected to a data screen which invalidates incorrect signals based on a detected parameter indicative of a poor or incorrect signal.
The term "Taylor Series Exponential Smoothing Function ("TSES")" encompasses mathematical functions (algorithms) for predicting the behavior of a variable at a different point in time, which factors in the slope, and the rate of change of the slope. An example of a TSES function useful in connection with the present invention is a TSES function represented by: α2+ι = y„ +a{y,, -yn-ι) + -j{yn - 2yn__ + „_2) wherein: α is an optimizable variable which is a real number of between 0 and 1, and is adjusted based on the particular measurements obtained and the relationship between those measurements and actual results; n is an evenly spaced time interval; and is an analyte concentration or signal converted to an analyte concentration which signal measurement is optimized to fit the results sought, e.g., to correspond with a reference analyte concentration (see, for example, 6,272,364, issued 7 August 2001; WO 99 58973, published 18 November 1999).
A "future time point" refers to the time point in the future at which the concentration of the analyte of interest or another parameter value is predicted. In preferred embodiments, this term refers to a time point that is one time interval aliead, where a time interval is the amount of time between sampling and sensing events.
2.0 MODES OF CARRYING OUT THE INVENTION
Before describing the present invention in detail, it is to be understood that this invention is not limited to particular formulations or process parameters as such may, of course, vary. It is also to be understood that the terminology used herein is for the purpose of describing particular embodiments of the invention only, and is not intended to be limiting.
Although a number of methods and materials similar or equivalent to those described herein can be used in the practice of the present invention, the preferred materials and methods are described herein.
2.1 GENERAL OVERVIEW OF THE INVENTION
Hypoglycemia is the most important acute complication of diabetes and is a major obstacle to achieving optimal blood glucose control. Nocturnal hypoglycemia can be particularly troublesome for many patients. The research proposed here utilizes information obtained from a data stream, e.g., frequently obtained glucose values, skin conductance or temperature readings, generated by a frequent sampling glucose monitoring device, e.g., the GlucoWatch biographer system, coupled with a time-series forecasting approach, to predict incipient hypoglycemic events and to alert the user.
The invention is described herein with reference to the GlucoWatch biographer system as an exemplary glucose monitoring system capable of providing frequent readings of glucose amount or concentration for a user. The GlucoWatch biographer system extracts glucose through the skin via reverse iontophoresis and measures the extracted glucose with an amperometric biosensor. Glucose readings can be obtained, for example, every twenty minutes for a twelve-hour measurement period. Large-scale clinical trials of this device in diabetic subjects have been completed (Tierney, M. J., et al., Annals of Medicine, 32, 632-641 (2000); Tierney, M. J., et al., Diabetes Technology and Therapeutics, 2 (2), 197-205 (2000); Tamada, J. A., et al, J. Am. Med. Assoc. 282, 1839-44 (1999)).
A major disadvantage of the current paradigm of discrete blood glucose measurements for self-monitoring of blood glucose (SMBG) levels for diabetics is that the low number of measurements performed per day (on average 1.8 readings per day) is insufficient to track blood glucose excursions occurring between the measurements. More frequent monitoring is desirable both for determining the normal diurnal blood glucose profile, and for detection of hypoglycemic events. The GlucoWatch biographer system measures glucose levels every 20 minutes, and has been shown to track blood glucose levels accurately. In addition, the GlucoWatch biographer system sounds an audible alarm if the measured glucose level falls below a user-settable low glucose threshold, or if the measured glucose level falls rapidly between successive readings. Although the present GlucoWatch biographer system is able to accurately detect the presence of hypoglycemic conditions, it is not currently able to predict hypoglycemic events in advance. Experiments performed in support of the present invention indicate methods to improve the hypoglycemic event prediction ability of the GlucoWatch biographer system by combining (i) the continual stream of glucose readings, with other physiological measures that are indicators of hypoglycemia, for example, (ii) skin temperature and/or (iii) perspiration. In a preferred embodiment, combinations of these tliree physiological parameters results in a more robust predictor of hypoglycemia.
In addition, the method of the present invention employs a time-series forecasting algorithm. This technique uses several previous readings to predict with sufficient accuracy the glucose level a short time in the future. Therefore, this technique could be used to predict incipient hypoglycemia. The time-series forecasting algorithm has been described in co-owned, co-pending, WO 99/58973, published 18 November 1999. Predictions based on this method are combined with predictions based on the methods described above.
Accordingly, one aspect of the present invention may be summarized as follows. A series of conditional statements leading to a prediction of a hypoglycemic event are established. Such conditional statements may be based on several processes. For example, a first process, e.g., prediction of a hypoglycemic event related to information based on current blood glucose values, and/or a second process, e.g., prediction of a hypoglycemic event related to a temperature-based prediction, and/or a third process, e.g., prediction of a hypoglycemic event related to a skin conductance- based prediction. A hypoglycemic event may be predicted by any or all of these processes (or one process combining all of these processes). This information is then coupled with information from, e.g., a fourth process, such as prediction of a hypoglycemic event based on a future value predicted by a time-series algorithm. The information from several or all of these processes may then be evaluated together.
The more processes that predict a hypoglycemic event the more likely that prediction of a hypoglycemic event is correct. Accordingly, combining the predictions of these processes results in a more robust predictor of hypoglycemic events.
2.2 DESCRIPTION OF AN EXEMPLARY GLUCOSE MONITORING SYSTEM
Numerous glucose monitoring systems can be used in the practice of the present invention. Typically, the monitoring system used to monitor the level of a selected glucose in a target system comprises a sampling device, which provides a sample comprising glucose, and a sensing device, which detects the amount or concentration of glucose or a signal associated with the glucose amount or concentration in the sample.
An exemplary glucose monitoring system which provides frequent measurements of glucose amount or concentrations is the GlucoWatch biographer system. This system is a wearable, non-invasive glucose monitoring system that provides a glucose reading automatically every twenty minutes. The GlucoWatch biographer system has several advantages including, but not limited to, the fact that its non-invasive and non-obtrusive nature encourages more frequent glucose testing among people (or animals) with diabetes. Of greater clinical relevance is the frequent nature of the information provided. Prior to the GlucoWatch biographer system no method existed for frequent glucose measurement outside of invasive means, often requiring hospital care (Mastrototaro, J.J., and Gross, T. M., "Clinical Results from the MiniMed Continuous Glucose Monitoring System" Proc. 31st Annual Oak Ridge Conference, April, 1999). The GlucoWatch biographer system provides more frequent monitoring often desired by physicians in an automatic, non-invasive, and user- friendly manner. The automatic nature of the system also allows monitoring to continue even while a user is sleeping or otherwise unable to test.
The GlucoWatch biographer system comprises: (a) iontophoretic transport of glucose across the skin to non-invasively sample the glucose, (b) an electrochemical biosensor to measure the glucose concentration, and (c) an intelligent data-processing algorithm that coverts the raw biosensor signals to glucose readings while safeguarding against erroneous results through data point screening routines. These aspects of the system are briefly described below and are described more extensively in the publications referenced in the "Definitions" section, above.
The first aspect of the system is the iontophoretic extraction of glucose. Many small molecules are transported through the skin by either passive or facilitated means. Passive transport of compounds such as nicotine, estradiol, testosterone, etc. is the basis of transdermal drug delivery (skin patches). Transport through human skin can be greatly enhanced by the application of an electric field gradient. The use of a low-level electric current to enhance transport is known, generically, as iontophoresis. Iontophoretic transport through skin can occur in either direction (Glikfeld, P., et al., Pharm. Res. 6, 988-990 (1989)). In particular, it was shown that small molecules such as glucose, ethanol, and theophylline are readily transported through the skin into an external collection chamber. Because transport through the skin is in the opposite direction to that used in iontophoretic drug delivery, this effect was described as "reverse iontophoresis" (US Patent 5,362,307, issued Nov. 8, 1994.; US Patent 5,279,543, issued Jan. 18, 1994.; US Patent 5,730,714, issued Mar. 24, 1998). In fact, because glucose is an uncharged molecule, transport is achieved through electro-osmosis. Results obtained from analyses using the GlucoWatch biographer system showed that extracted glucose correlated closely with blood glucose (Tamada, J.A., et al., JAMA 282:1839-1844, 1999).
The second aspect of the system involves the use of an electrochemical glucose biosensor. The GlucoWatch biographer system utilizes an electro-chemical biosensor assembly to quantitate the glucose extracted through the skin. There are two biosensors in the GlucoWatch biographer system (Figure 1). Each biosensor consists of a hydrogel pad containing the enzyme glucose oxidase (GOx) and a set of electrodes. One surface of the hydrogel pad contacts the skin while the opposite surface is in contact with the biosensor and iontophoresis electrodes. The hydrogel pads serve two functions. During iontophoresis the pads serve as the electrical contacts with the skin and the collection reservoirs for the extracted glucose. During the sensing portion of the cycle, the glucose extracted through the skin reacts with the GOx in the hydrogel pads via the reaction:
GOx Glucose + O2 Gluconic acid + H2O2.
The H2O2 produced by this reaction is then detected amperometrically at the platinum/carbon working electrode of the sensor. The integrated sensor current measured is proportional to the concentration of H2O2, and ultimately to the amount of glucose extracted. The extraction and sensing portions of the cycle occur in succession, and the cycle repeats to provide a measurement of glucose every twenty minutes. For convenience to the user, the GlucoWatch biographer system was developed as a miniaturized device which can be worn on the wrist, forearm, upperarm, or other body part. The GlucoWatch biographer system durable component contains electronics for the biosensors and iontophoresis, a microprocessor, data storage memory, and an LCD display. Two sets of biosensors and iontophoresis electrodes are fitted onto the skin side of the device (e.g., a consumable component, the AutoSensor). A schematic diagram of the AutoSensor of the GlucoWatch biographer system is shown in Figure 1.
Referring to Figure 1, an exploded view of exemplary components comprising one embodiment of an AutoSensor for use in an iontophoretic sampling system is presented. The AutoSensor components include two biosensor/iontophoretic electrode assemblies, 104 and 106, each of which have an annular iontophoretic electrode, respectively indicated at 108 and 110, which encircles a biosensor electrode 112 and 114. The electrode assemblies 104 and 106 are printed onto a polymeric substrate 116 which is maintained within a sensor tray 118. A collection reservoir assembly 120 is arranged over the electrode assemblies, wherein the collection reservoir assembly comprises two hydrogel inserts 122 and 124 retained by a gel retaining layer 126 and mask layer 128. Further release liners may be included in the assembly, for example, a patient liner 130, and a plow-fold liner 132. In one embodiment, the electrode assemblies comprise bimodal electrodes. A mask layer 128 (for example, as described in PCT Publication No. WO 97/10356, published 20 March 1997, and US Patent Nos. 5,735,273, 5,827,183, 6,141,573, and 6,201,979) may be present. Other AutoSensor embodiments are described in WO 99/58190, published 18 November 1999. The mask and retaining layers are preferably composed of materials that are substantially impermeable to the analyte (e.g., glucose) to be detected (see, for example, U.S. Patent Nos. 5,735,273, and 5,827,183). By "substantially impermeable" is meant that the material reduces or eliminates analyte transport (e.g.. by diffusion). The material can allow for a low level of analyte transport, with the proviso that the analyte that passes through the material does not cause significant edge effects at the sensing electrode used in conjunction with the mask and retaining layers. Examples of materials that can be used to form the layers include, but are not limited to, polyester, polyester derivatives, other polyester-like materials, polyurethane, polyurethane derivatives and other polyurethane-like materials. The components shown in exploded view in Figure 1 are for use in a automatic sampling system which is configured to be worn like an ordinary wristwatch, as described, for example, in PCT Publication No. WO 96/00110, published 4 January 1996. The wristwatch housing can further include suitable electronics (e.g., one or more microprocessors), memory, display and other circuit components) and power sources for operating the automatic sampling system. The one or more microprocessors may control a variety of functions, including, but not limited to, control of a sampling device, a sensing device, aspects of the measurement cycle (for example, timing of sampling and sensing, and alternating polarity between electrodes), connectivity, computational methods, different aspects of data manipulation (for example, acquisition, recording, recalling, comparing, and reporting), etc.
The third aspect of the system is an intelligent data-processing algorithm that coverts the raw biosensor signals to glucose readings while safeguarding against erroneous results through data point screening routines. The raw current data obtained from the biosensors must be converted into an equivalent blood glucose value. Equations to perform this data conversion have been developed, optimized, and validated on a large data set consisting of GlucoWatch biographer and reference blood glucose readings from clinical trials on diabetic subjects (see, for example, WO 018289A1, published 6 April 2000). This data conversion algorithm is programmed into a dedicated microprocessor in the GlucoWatch biographer system. The software also contains screens to exclude spurious data points that do not conform to objective, a priori criteria (e.g., data which contain noise above a certain threshold). Exemplary signal processing applications include, but are not limited to, those taught in the following U.S. Patent Nos. 6,144,869, 6,233,471, 6,180,416. In addition to the two glucose biosensors, the GlucoWatch biographer system also contains a temperature sensor and a skin conductivity sensor. Input from the former is used to exclude data points obtained during large thermal excursions. The skin conductivity input is used to exclude data obtained when the subject is perspiring profusely, as sweat contains glucose which may confound the value obtained for the extracted sample. Hence, these various screens reject data points that may provide false glucose information. The remaining data points are then suitable for clinical use.
The GlucoWatch biographer system is housed in a plastic case held in place, typically on the arm, with a wrist band. A single AAA battery is used as the primary power source with an additional back-up battery. The GlucoWatch biographer circuitry includes a microprocessor and a custom application specific integrated circuit (ASIC) chip containing the circuitry to run both the iontophoresis and biosensor functions. There is sufficient memory to store up to 4000 glucose readings which represents approximately three months of data with daily use. An LCD display and four push buttons on the face of the GlucoWatch biographer system comprise the user interface, and allow the user to control and customize the functions of the monitor as well as to display clock time and date, glucose readings, and GlucoWatch biographer operation status. Data can also be downloaded to a PC via a serial interface adapter.
Included in the software control is the ability for the user to select high and low glucose alert levels. If the GlucoWatch biographer system measures a glucose value outside of these alert levels, an alarm sounds to notify the user of the situation.
The disposable portion of the GlucoWatch biographer system is the AutoSensor, which contains the two sets of biosensor and iontophoresis electrodes and the corresponding hydrogel discs housed held in a pre-aligned arrangement by a mask layer. The AutoSensor snaps into the skin-side of the GlucoWatch biographer system to make the necessary electrical connections between the two portions.
The GlucoWatch biographer system also contains a thermistor to measure skin temperature, and a set of conductivity probes which rest on the surface of the skin to measure skin conductivity, a measure of perspiration. As described above, the temperature and sweat data are used in the present device to ensure that the biosensor data has not been affected by large temperature excursions or perspiration during the reading period.
In another embodiment of a momtoring system, the sampling/sensing mechanism and user interface may be found on separate components (e.g., WO 00/47109, published 17 August 2000). Thus, the monitoring system can comprise at least two components, in which a first component comprises sampling mechanism and sensing mechanism that are used to extract and detect an analyte, for example, glucose, and a second component that receives the analyte data from the first component, conducts data processing on the analyte data to determine an analyte concentration and then displays the analyte concentration data. Typically, microprocessor functions (e.g., control of a sampling device, a sensing device, aspects of the measurement cycle, computational methods, different aspects of data manipulation or recording, etc.) are found in both components. Alternatively, microprocessing components may be located in one or the other of the at least two components. The second component of the monitoring system can assume many forms, including, but not limited to, the following: a watch, a credit card-shaped device (e.g., a "smart card" or "universal card" having a built-in microprocessor as described for example in U.S. Patent No. 5,892,661), a pager-like device, cell phone-like device, or other such device that communicates information to the user visually, audibly, or kinesthetically.
Further, additional components may be added to the system, for example, a third component comprising a display of analyte values or an alarm related to analyte concentration, may be employed. In certain embodiments, a delivery unit is included in the system. An exemplary delivery unit is an insulin delivery unit. Insulin delivery units, both implantable and external, are known in the art and described, for example, in U.S. Patent Numbers 5,995,860; 5,112,614 and 5,062,841. Preferably, when included as a component of the present invention, the delivery unit is in communication (e.g., wire-like or wireless communication) with the extracting and/or sensing mechanism such that the sensing mechanism can control the insulin pump and regulate delivery of a suitable amount of insulin to the subject.
Advantages of separating the first component (e.g., including the biosensor and iontophoresis functions) from the second component (e.g., including some microprocessor and display functions) include greater flexibility, discretion, privacy and convenience to the user. Having a small and lightweight measurement unit allows placement of the two components of the system on a wider range of body sites, for example, the first component may be placed on the abdomen or upper arm. This wider range of placement options may improve the accuracy through optimal extraction site selection (e.g., torso rather than extremities) and greater temperature stability (e.g., via the insulating effects of clothing). Thus, the collection and sensing assembly will be able to be placed on a greater range of body sites. Similarly, a smaller and less obtrusive microprocessor and display unit (the second component) provides a convenient and discrete system by which to monitor analytes. The biosensor readouts and control signals will be relayed via wire-like or wireless technology between the collection and sensing assembly and the display unit which could take the form of a small watch, a pager, or a credit card-sized device. This system also provides the ability to relay an alert message or signal during nighttime use, for example, to a site remote from the subject being monitored. In one embodiment, the two components of the device can be in operative communication via a wire or cable-like connection. Operative communications between the components can be wireless link, i.e. provided by a "virtual cable," for example, a telemetry link. This wireless link can be uni- or bi-directional between the two components. In the case of more than two components, links can be a combination of wire-like and wireless.
2.3 MONITORING OF GLUCOSE LEVELS
To evaluate the usefulness of the GlucoWatch biographer system in the monitoring of glucose levels, more than 90 subjects with diabetes were enrolled at three clinical sites around the United States. Subjects wore a GlucoWatch biographer system on their wrist for 15 hours while in a clinical setting. Subjects entered the clinic early in the morning in a fasted state. The GlucoWatch biographer system was applied and a "warm-up" procedure of 175 minutes was initiated. At the end of the warm-up period, the subjects took a single finger-stick blood glucose measurement which they used to calibrate the GlucoWatch biographer readings. From that point on, the GlucoWatch biographer system took three measurements per hour for the remainder of the study. All data were stored internally (i.e., in the biographer's memory). In addition, two standard blood measurements were obtained at 0 and 40 minutes during each hour. Thus, there were as many as 36 GlucoWatch biographer data points and 24 matching blood data points obtained from each subject.
The GlucoWatch biographer readings and blood data were then transferred into a computer for algorithm development and subsequent data analysis. The data were randomly divided into two groups. The data from one part of the data set (46 GlucoWatch biographer systems) were used to "train" the algorithm (the Mixtures of Experts algorithm, see, for example, WO 018289A1, published 6 April 2000), that is, to determine the optimal functional form and parameter set needed to minimize the error between the GlucoWatch biographer system-predicted glucose values and blood glucose values. The optimized algorithm was then used to predict the GlucoWatch biographer system values for all subsequent data. This "out of sample" prediction technique diminished bias and demonstrated the universal nature of the algorithm. Data from one individual is shown in Figure 2.
The result of this analysis for the 109 GlucoWatch biographer systems in the "out of sample" test group showed a time-delay of about 15 minutes between the extracted glucose relative to the blood glucose. Using the paired GlucoWatch biographer measurement-blood measurement data, an average correlation coefficient of 0.88 was obtained, and 97% of the results fell in the clinically acceptable regions of the Clarke Error Grid Analysis (Clarke, W.L., et al, Diabetes Care 10:622-628 (1987)). In addition, the mean absolute error was 15.6%. Less than 8% of the data were removed by the "temperature", "sweat" and "noise" data integrity screens. These and other statistical analyses suggested that the GlucoWatch biographer system is comparable to commercially available blood monitoring devices over a broad range of values (40 to 400 mg/dL in these studies).
The clinical results cited above clearly demonstrate that the GlucoWatch biographer system tracks glucose in human subjects with diabetes.
2.4 TEMPERATURE AND PERSPIRATION AS INDICATORS OF
HYPOGLYCEMIA Preliminary tests of the correlation between skin temperature and skin conductivity, and hypoglycemic blood glucose levels were performed on data from one clinical trial. Temperature and perspiration data from the GlucoWatch biographer system were analyzed for a total of 213 GlucoWatch biographer system applications on 121 diabetic subjects. This data set consists of the temperature, perspiration measurement and reference blood glucose value for 5346 GlucoWatch biographer measurement cycles. For this trial, the subjects were tested in a clinical setting, but were allowed general freedoms simulating a home environment.
In order to determine whether a correlation existed between skin temperature and perspiration, and hypoglycemia, the data were sorted into reference blood glucose range bins from < 40 mg/dL to 240 mg/dL. The minimum skin temperature for each measurement cycle in each bin was averaged and plotted in Figure 3. As can be seen from the results presented in the figure, the skin temperature as measured by the GlucoWatch biographer system is lower than average when the reference blood glucose is lower than 120 mg/dL, and is lowest when the blood glucose is in the lowest hypoglycemic range. This preliminary result demonstrated a correlation between lower average skin temperature and hypoglycemic blood glucose levels. Accordingly, in one aspect of the present invention, one of the parameters that may be used for the prediction of a hypoglycemic event is a below average skin temperature. Ideally, an average skin temperature is determined for each subject by collecting a skin temperature reading data set over an extended period of time (e.g., days, weeks, or months). An associated standard deviation and/or average variation may be associated with the average skin temperature using standard statistical methods applied to the skin temperature reading data set. The average temperature may also be associated with the time of day, for example, the day broken down into 1- 8 hour increments (including all time values in the range, e.g., 2.5 hours) in order to account for normal skin temperature variations associated, for example, with a mid- day time period and a sleep time period. Such associations may be established employing standard statistical manipulations, such as trend analysis or multivariate analysis of variance. Further, using trend analysis or the TSES equation described herein, based on a series of skin temperature readings, a skin temperature reading at a future time point could be predicted or extrapolated. In one aspect of the present invention, the skin temperature reading parameter, when below average body temperature for the subject, is an indicator of a possible hypoglycemic event. As noted above, a standard deviation (and/or variance) may be associated with the average body temperature of the subject to provide a reference range. When the body temperature of the subject falls below such a reference range (taking into account statistical variation, such as standard deviation), that is an indicator of a possible hypoglycemic event. For example, for the cumulative data presented in Figure 3, such a reference range may be 31°C ± 0.05°C (or more generally stated, average body temperature of the subject plus/minus the standard deviation or variance associated with the average body temperature). Confidence intervals may also be used to establish such ranges.
Similarly, if a decreasing body temperature trend is detected (for example, using a regression analysis or other trend analysis) such a trend of decreasing body temperature may be used as an indicator of a hypoglycemic event.
In another aspect, fluctuations of body temperature may be used as an indicator of a hypoglycemic event: for example, such fluctuations may be determined relative to a reference range.
The data from the skin conductivity sensor on the GlucoWatch biographer system was plotted in a similar manner. The GlucoWatch biographer skin conductivity measurement was converted to an arbitrary scale from 0 - 10. For data integrity screening purposes, skin conductivity readings above 1 were considered an indication of perspiration occuring. Figure 4 shows the average skin conductivity reading for all the measurement cycles within each reference blood glucose range. The trend was relatively flat over the euglycemic and hyperglycemic ranges with the three highest averages occuring in the < 40 mg/dL, 40 - 59 mg/dL, and 60 - 79 mg/dL ranges in the hypoglycemic region, indicating a higher degree of perspiration in the hypoglycemic region.
The data shown in Figure 4 was presented in a different manner by taking the percentage of all readings with skin conductivity readings greater than one (therefore, above the a priori determined perspiration threshold) and plotting them with reference to the same reference blood glucose ranges (see Figure 5). The data presented in Figure 5 showed pronounced increase in the percentage of positive perspiration indications in the hypoglycemic regions below 60 mg/dL.
Accordingly, in one aspect of the present invention, one of the parameters that may be used for the prediction of a hypoglycemic event is an above or below average sweat sensor reading (i.e., skin conductance). In one embodiment of the present invention, skin conductance above a predetermined perspiration threshold (or range) is a predictor of a hypoglycemic event (see, for example, reference data in Figures 4 and 5). Ideally an average skin conductance reading is determined for each subject by collecting a skin conductance reading data set over an extended period of time (e.g., days, weeks, or months). An associated standard deviation and/or average variation may be associated with the average skin conductance using standard statistical methods applied to the skin conductance reading data set. The average skin conductance may also be associated with the time of day; for example, the day broken down into 1-8 hour increments (including all time values in the range, e.g., 2.5 hours) in order to account for normal skin conductance variations associated, for example, with a mid-day time interval and a sleep interval. Such associations may be established employing standard statistical manipulations, such as trend analysis or multivariate analysis of variance. Further, using trend analysis or the TSES equation described herein, based on a series of skin conductance readings, a skin temperature reading at a future time point could be predicted or extrapolated. In one aspect of the present invention, the skin conductance reading parameter, when above or below average skin conductance for the subject, is an indicator of a possible hypoglycemic event. As noted above, a standard deviation (and/or variance) may be associated with the average skin conductance of the subject to provide a reference range. When the skin conductance of the subject falls outside of such a reference range (taking into account statistical variation, such as standard deviation), that is an indicator of a possible hypoglycemic event. For example, for the cumulative data presented in Figure 4, such a reference range may a skin conductance reading of 0.15 ± 0.025 average sweat sensor reading (or more generally stated, average skin conductance of the subject plus/minus the standard deviation or variance associated with the average skin conductance). Confidence intervals may also be used to establish such ranges. Similarly, if an increasing or decreasing skin conductance trend is detected (for example, using a regression analysis or other trend analysis) such a trend of increasing or decreasing skin conductance may be used as an indicator of a hypoglycemic event.
In another aspect, fluctuations of skin conductance may be used as an indicator of a hypoglycemic event: for example, such fluctuation can be determined relative to a reference range.
Body temperature (or body temperature trends) and/or skin conductance (or skin conductance trends) can be used together or singly as parameters useful for the prediction of a hypoglycemic event. Typically, use of such a parameter is coupled with the time series forecasting method described below.
Threshold values (or ranges of values) for selected parameters may be employed in the prediction of hypoglycemic events. Such threshold values can be established, for example, based on review and analysis of a record of the subject's glucose values, body temperature and skin conductance. A statistical program can be used to provide correlations between known hypoglycemic events (from the subject's record, which is created using a glucose momtoring device capable of providing frequent glucose, temperature, and skin conductance readings) and the selected parameters. Such statistical programs are known in the art and include, for example, decision tree and ROC analysis (see below).
2.5 TIME SERIES FORECASTING
Time-series forecasting, the prediction of future values of a variable from past observations, is a procedure used for extrapolation of data series. There are a number of methods that may be used for time-series forecasting, including, but not limited to, the following: extrapolation of linear or polynomial regression, autoregressive moving average, and exponential smoothing.
A method for time-series forecasting, called Taylor Series Exponential Smoothing (TSES) has been developed and was disclosed in co-owned, co-pending WO 99/58973, published 18 November 1999. In one embodiment, this method utilized the data points from the previous 60 minutes, as well as the associated first and second derivative values to predict the value of the next data point. The method of exponential smoothing calculates the predicted value of a variable y at time n+1 as a function of that variable at the current time n, as well as at two previous times n-1 and n-2. The equation that is typically used for the case of evenly spaced time points is shown as equation (1) below.
+1
Figure imgf000035_0001
(1)
In this equation, β is an empirical parameter obtained from experimental data which is typically between 0 and 1.
An improvement to equation (1) is as follows: First, there is a resemblance between equation 1 and a Taylor Series expansion, shown as equation (2).
Figure imgf000035_0002
Accordingly, the variable yn_l was replaced by y'_ (the first derivative at yn with respect to time) and yn_2 was replaced by ~ yr (the second derivative at yn with respect
to time) to give equation (3),
β( - β)2+1 = β + β(l - β)^ + yή' (3)
where the derivatives are calculated by the following two equations:
Figure imgf000036_0001
and Δt is the equally spaced time interval.
The analogy between equation (3) and the Taylor Series, equation (2), can be further improved by dividing the right hand side of equation (3) by β to give equation (6)where the definition = 1 - β is used.
+ι = +αy,; + y; (6)
Substituting equations (4) and (5) into equation (6), gives the final expression of the Taylor Series Exponential Smoothing (TSES) equation as:
α2 +ι = y„ + <* (yn - y„-ι ) + — 0» - 2y„_1 + y„_2 ) (7)
The TSES equation is essentially an exponentially smoothed moving average Taylor series expansion using the first two terms of the Taylor series. This technique may be adapted to work with the measurements produced by the GlucoWatch biographer system to predict glucose levels at least one measurement cycle ahead (WO 99/58973, published 18 November 1999).
2.6 IMPROVED PREDICTION OF HYPOGLYCEMIC EVENTS The present invention comprises methods for the improved ability to predict hypoglycemia which include a two-fold approach. First, additional physiological data, namely skin temperature and skin conductivity, are used in combination with frequent glucose value readings (obtained, for example, using the GlucoWatch biographer system) to produce a more robust prediction algorithm than may be achieved by using any of the variables alone. Second, a time-series forecasting technique is used in conjunction with a data stream comprising frequent glucose measurements (obtained, for example, using the GlucoWatch biographer system) to predict future glucose levels and provide an early warning of incipient hypoglycemic events. The synergy of these two different approaches provides an improved ability to predict hypoglycemia events.
2.7 INCORPORATION OF SWEAT AND TEMPERATURE MEASUREMENTS INTO A HYPOGLYCEMIA PREDICTION ALGORITHM
A data set consisting of approximately 16,000 pairs of GlucoWatch biographer data and reference blood glucose values for approximately 450 diabetic patients has been generated in support of the present invention. Both Type 1 and Type 2 diabetics with a wide variety of demographic backgrounds are represented in this data set. The data set may be used as a test bed for developing and refining the incorporation of the skin temperature and conductivity readings into a hypoglycemia predictive algorithm. The data set is sufficiently large to enable a hypoglycemia predictive algorithm to be trained on a randomized subset of data, and tested on a separate "out of sample" subset. Using this set of raw data, GlucoWatch biographer system outputs can be produced using an emulator program which completely mimics the device operation. The skin temperature and conductivity readings are incorporated into a hypoglycemia alert function in the emulator, and the simulated results (glucose readings, occurrence of hypoglycemia alert soundings, etc.) are recorded and predictive efficacy evaluated.
A number of different functions are evaluated for their ability to correctly predict hypoglycemia using the skin temperature, skin conductivity, and glucose data. The preliminary data presented in Figures 3-5 and described above represent the simplest of these functions, that is, use of the discrete data points at each GlucoWatch biographer measurement cycle. More complex algorithms may utilize, for example, variation of the temperature and conductivity parameters from a sliding average baseline value, monitoring of trends in these parameters, or more complex neural network approaches. Numerous suitable estimation techniques useful in the practice of the invention are known in the art. These techniques may be used to provide correlation factors (e.g., constants), which correlation factors are then used in a mathematical transformation to obtain a measurement value indicative of a hypoglycemic event. In particular embodiments, the hypoglycemic predictive algorithm may apply mathematical, statistical and or pattern recognition techniques to the problem of signal processing in chemical analyses, for example, using neural networks, genetic algorithm signal processing, linear regression, multiple-linear regression, principal components analysis of statistical (test) measurements, decision trees, or combinations thereof. The structure of a particular neural network algorithm used in the practice of the invention may vary widely; however, the network may, for example, contain an input layer, one or more hidden layers, and one output layer. Such networks can be trained on a test data set, and then applied to a population. There are many suitable network types, transfer functions, training criteria, testing and application methods which will occur to the ordinarily skilled artisan upon reading the instant specification. One such evaluation method is a Mixtures of Experts algorithm (see, for example, WO 018289A1, published 6 April 2000; U.S. Patent No. 6,180,416, issued 30 January 2001). In a Mixtures of Experts algorithm, skin conductance and/or body temperatures can be included as parameters to provide more accurate prediction of blood glucose and, in particular, more accurate prediction of potential hypoglycemic events. One method to evaluate the effectiveness of a proposed hypoglycemia alert function examines each set of paired GlucoWatch biographer/reference blood points to determine whether the hypoglycemia alert function correctly predicted the presence or absence of hypoglycemia. The number of false positives (prediction of hypoglycemia when none existed) or false negatives (missing hypoglycemia when it did exist) is tabulated and used to calculate the sensitivity and specificity of the alert function.
A second analysis anticipates that each hypoglycemic episode can be predicted by several readings in the continual data stream of the GlucoWatch biographer system. For such an analysis, the number of hypoglycemic events predicted (and not predicted) by the hypoglycemia alert function of GlucoWatch biographer system is tabulated and used to calculate the predictive value of the hypoglycemia alert function. Using such approaches the hypoglycemia alert function is optimized on a pre-existing data set and is then tested in clinical trials on diabetic patients. Accordingly, the incorporation of data from the sweat and temperature probes into the glucose-level prediction algorithm is tested using the existing clinical database. Optimization of the algorithm parameters is performed to minimize error in the glucose readings and maximize the accuracy of the hypoglycemia alarm function.
2.8 TIME-SERIES FORECASTING ALGORITHM
The GlucoWatch biographer system's ability to acquire glucose data on a frequent basis creates a large database heretofore unavailable to a patient or clinician. The time-series forecasting algorithm described above uses a series of closely spaced glucose readings to "forecast" a future reading. This algorithm provides an early warning of incipient hypoglycemic events, the most serious acute complication for diabetics.
An adaptive neural network technology may be combined with this time forecasting concept to provide a system that is customized to an individual patient's physiology: This process involves training the neural network with a sufficient number of paired momtor and reference blood glucose values from a given patient. In this way, the neural network "learns" the patterns in an individual's blood glucose changes. This approach reduces error in the prediction of hypoglycemia events.
Optimization of forecasting algorithms is carried out using the "data mining" approach essentially as described above to investigate the skin temperature- conductivity data. The time-series forecasting algorithms are trained and tested on the data set of GlucoWatch biographer system values and corresponding blood glucose reference values obtained during clinical trials and described above. Various statistical measures of accuracy are used to evaluate and optimize forecasting algorithms including difference statistics (mean error, mean relative error, mean absolute error), RMS error, and the Clarke Error Grid Analysis. The optimized forecasting algorithm is then prospectively tested in clinical trials essentially as follows.
Initial clinical trials are conducted with non-diabetic volunteers in order to verify that the modified GlucoWatch biographer systems function properly. Such trials also provide an early assessment of the capabilities of the hypoglycemia alert function. The clinical protocol is essentially performed as follows. A 100 gram oral glucose tolerance test (OGTT) has historically predicted device performance in a population of subjects with diabetes. In addition, following OGTT, after the glucose peak, non-diabetic subjects can achieve blood glucose levels as low as 50-70 mg/dL from endogenous insulin production, thus providing data to test the prediction of hypoglycemia. Moreover, since one subject may wear multiple GlucoWatch biographer systems, meaningful data may be obtained with as few as 10 subjects.
Following trials with non-diabetic subjects, the modified GlucoWatch biographer system comprising an improved hypoglycemic alert function is tested on subjects with diabetes. Typically, results from a minimum of 20 subjects over at least five consecutive days are used to generate data sufficient to develop and optimize the algorithms. The demographic profile of the subjects included in these clinical trials is diverse, as it is beneficial to investigate performance on as wide a demographic sample as possible. These trials typically study subjects with both Type 1 and Type 2 in relatively equal numbers. Male and female subjects are represented fairly evenly. The subject population has a wide range of ages. The ethnic background of a typical large clinical trial is shown below in Table 1 as an example where 120 of the subjects are female and 111 were male. Typically the test population comprises subjects 18 years or older.
Table 1
Figure imgf000041_0001
The general design of the study day is as follows. The subjects arrive at the clinic in the morning having fasted from midnight the night before, and having not taken their morning insulin injection. Two GlucoWatch biographer systems are applied to the subject's arm, synchronized with clock time, and started. Over the course of the study (approximately 15 hours), capillary blood samples are obtained twice per hour, and measured with a reference method for comparison with the GlucoWatch biographer measurements. During the course of the measurement period, insulin dosing is adjusted by the investigator to achieve mildly hypoglycemic and hyperglycemic glucose levels. The targeted blood glucose range is 40 - 450 mg/dL. At the end of the 15 hour study, the GlucoWatch biographer systems are removed by laboratory personnel.
The data collected from each patient consists of demographic information, medical screening data, reference blood glucose measurements, and GlucoWatch biographer system measurements. These data are used for the purposes of evaluating the hypoglycemic prediction algorithm.
Accordingly, the optimum time-series algorithm model and variables to be used in the model are determined by "training" and testing on a large database of clinical GlucoWatch biographer system data. The algorithm is optimized to minimize error in the glucose readings and maximize the accuracy of the hypoglycemia alarm function. This optimized time-series prediction model is combined with one or more predictions of hypoglycemic events, e.g., using a sweat and temperature probe based predictive algorithm, as described above. The hypoglycemic predictive approach described herein utilizes information obtained from a data stream, e.g., frequently obtained glucose values, skin conductance or temperature readings, generated by a frequent sampling glucose monitoring device, e.g., the GlucoWatch biographer system, coupled with a time-series forecasting approach, to predict incipient hypoglycemic events and to alert the user.
One or more microprocessors may be used to coordinate the functions of the sampling device, sensing device, and predictive algorithms. Such a microprocessor generally uses a series of program sequences to control the operations of the sampling device, which program sequences can be stored in the microprocessor's read only memory (ROM). Embedded software (firmware) controls activation of measurement and display operations, calibration of analyte readings, setting and display of high and low analyte value alarms, display and setting of time and date functions, alarm time, and display of stored readings. Sensor signals obtained from the sensor electrodes can be processed before storage and display by one or more signal processing functions or algorithms which are stored in the embedded software. The microprocessor can also include an electronically erasable, programmable, read only memory (EEPROM) for storing calibration parameters, user settings and all downloadable sequences. A serial communications port may be used to, for example, allow the monitoring device to communicate with associated electronics, for example, wherein the device is used in a feedback control application to control a pump for delivery of a medicament such as insulin (using, e.g., an insulin pump).
Accordingly, one aspect of the present invention provides a method for predicting a hypoglycemic event in a subject. Typically, a threshold glucose value or range of glucose values is determined that corresponds to a hypoglycemic event. Symptom producing low plasma glucose levels vary in individuals and in different physiological states. Abnormally low plasma glucose is usually defined as less than or equal to about 50 mg/dL in men, about 45 mg/dL in women, and about 40 mg/dL in infants and children. The methods of the present invention for prediction of a hypoglycemic event are, generally, to avoid glucose levels dropping to such low levels in the subject. Accordingly, a threshold for a glucose measurement value indicative of a hypoglycemic event may be set higher (e.g., between about 80 to about 100 mg/dL) in order to give the subject more time to respond and prevent glucose levels from dropping into the hypoglycemic range. Further, at least one threshold parameter value (or range of values)* that is correlated with a hypoglycemic event is also determined, for example where the parameter is skin conductance reading or body temperature reading.
A series of glucose measurement values at selected time intervals is obtained using a selected glucose sampling system (for example, the GlucoWatch biographer). Using the series of measurements, typically a series of at least three glucose measurement values, a glucose measurement value at a further time interval (e.g., n+1, where the last glucose measurement value of the series was n) subsequent to the series of measurement values is predicted. This predicted glucose measurement value can be obtained, for example, using the time series forecasting method described above. Other predictive algorithms may be used as well.
In addition, another parameter value or trend of parameter values is measured concurrently, simultaneously, or sequentially with the obtaining of the series of glucose measurement values. Skin conductance and body temperature are two preferred parameters. Either the parameter value (for example at time point n, or a predicted value for the parameter at a later time point, for example, n+1) or trend of parameter values are compared with a threshold parameter value (or range of values) to determine whether the measured parameter value or trend of parameter values is suggestive of a hypoglycemic event. A hypoglycemic event is predicted for the subject when both (i) comparing the predicted glucose measurement value to the threshold glucose value indicates a hypoglycemic event at time interval n+1, and (ii) comparing said parameter with said threshold parameter value indicates a hypoglycemic at time interval n or n+1. Typically one or more microprocessors are programmed to control data acquisition (e.g., the glucose measurement cycle and obtaining of skin conductance and/or body temperature readings) by being programmed to control devices capable of collecting the required data points. The one or more microprocessors also typically comprise programming for algorithms to control the various predictive and comparative methods.
2.9 PREDICTION OF HYPOGLYCEMIC EVENTS USING A DECISION TREE MODEL
In one aspect of the present invention, the method for prediction of hypoglycemic events employs a decision tree (also called classification tree) which utilizes a hierarchical evaluation of thresholds (see, for example, J.J. Oliver, et. al, in Proceedings of the 5th Australian Joint Conference on Artificial Intelligence, pages 361-367, A. Adams and L. Sterling, editors, World Scientific, Singapore, 1992; D.J. Hand, et al., Pattern Recognition, 31(5):641-650, 1998; J.J. Oliver and D.J. Hand, Journal of Classification, 13:281-297, 1996; W. Buntine, Statistics and Computing, 2:63-73, 1992; L. Breiman, et al, "Classification and Regression Trees" Wadsworth, Belmont, CA, 1984; C4.5: Programs for Machine Learning, J. Ross Quinlan, The Morgan Kaufinaim Series in Machine Learning, Pat Langley, Series Editor, October 1992, ISBN 1-55860-238-0). Commercial software for structuring and execution of decision trees is available (e.g., CART (5), Salford Systems, San Diego, CA; C4.5 (6), RuleQuest Research Pty Ltd., St Ives NSW Australia; and Dgraph (1,3), Jon Oliver, Cygnus, Redwood City, CA) and may be used in the methods of the present invention in view of the teachings of the present specification. A simple version of such a decision tree is to choose a threshold current glucose value reading, a threshold body temperature value, and a threshold skin conductance (sweat) value. If a current (or predicted) glucose value reading is equal to or below the threshold glucose value, then the body temperature is evaluated. If the body temperature is below the threshold body temperature value, then skin conductance is evaluated. If skin conductance is greater than the threshold skin conductance value, then a hypoglycemic event is predicted.
For example, a first level decision is made by the algorithm based on the most recent glucose value obtained by the monitoring device compared to initial thresholds that may indicate a hypoglycemic event. For example, the algorithm may compare the current blood glucose value (time=n) or a predicted glucose value (time=n+l) to a threshold value (e.g., 100 mg/dL). If the glucose value is greater than the threshold value then a decision is made by the algorithm to continue monitoring. If the glucose level is less than or equal to the threshold glucose level then the algorithm continues with the next level of the decision tree.
The next level of the decision tree may be an evaluation of the subject's body temperature reading at time (n), which is compared to a threshold body temperature. For example, if the body temperature is greater than the threshold body temperature (e.g., 33.95°C ) then a decision is made by the algorithm to continue monitoring. If the body temperature is less than or equal to the threshold the threshold body temperature (e.g., 33.95°C) then the algorithm continues with the next level of the decision tree.
The next level of the decision tree may be an evaluation of the subject's skin conductance reading at time (n), which is compared to a threshold skin conductance. For example, if the skin conductance (i.e., sweat reading) is less than the threshold skin conductance (e.g., 0.137 sweat sensor reading) then a decision is made by the algorithm to continue monitoring. If the skin conductance is greater than or equal to the threshold skin conductance then the algorithm predicts a hypoglycemic event. The decision tree could be further elaborated by adding further levels. For example, after a determination that a hypoglycemic event is possible the next glucose level can be evaluated to see if it is above or below the threshold value. Both body temperature and skin conductance could be tested as above once again to confirm the prediction of a hypoglycemic event.
The most important attribute is typically placed at the root of the decision tree. In one embodiment of the present invention the root attribute is the current glucose reading. In another embodiment, a predicted glucose reading at a future time point may be the root attribute. Alternatively, body temperature or skin conductance could be used as the root attribute.
Further, thresholds need not be established a priori. The algorithm can learn from a database record of an individual subject's glucose readings, body temperature, and skin conductance. The algorithm can train itself to establish threshold values based on the data in the database record using, for example, a decision tree algorithm.
Further, a decision tree may be more complicated than the simple scenario described above. For example, if skin conductance (i.e., sweat) is very high the algorithm may set a first threshold for the body temperature which is higher than normal, if the skin conductance reading is medium, the algorithm might set a relatively lower body temperature threshold, etc.
By selecting parameters (e.g., current or future glucose reading, body temperature, skin conductance) and allowing the algorithm to train itself based on a database record of these parameters for an individual subject, the algorithm can evaluate each parameter as independent or combined predictors of hypoglycemia. Thus, the hypoglycemia prediction model is being trained and the algorithm determines what parameters are the most important indicators. A decision tree may be learnt in an automated way from data using an algorithm such as a recursive partitioning algorithm. The recursive partitioning algorithm grows a tree by starting with all the training examples in the root node. The root node may be "split," for example, using a three-step process as follows. (1) The root node may be split on all the attributes available, at all the thresholds available (e.g., in a training database). To each considered split a criteria is applied (such as, GINI index, entropy of the data, or message length of the data). (2) An attribute (A) and a threshold (T) are selected which optimize the criteria. This results in a decision tree with one split node and two leaves. (3) Each example in the training database is associated with one of these two leaves (based on the measurements of the training example). Each leaf node is then recursively split using the three-step process. Splitting is continued until a stopping criteria is applied. An example of a stopping criteria is if a node has less than 50 examples from the training database that are associated with it.
In a further embodiment, at each level of the decision in the decision tree, the algorithm software can associate a probability with the decision. The probabilities at each level of decision can be evaluated (e.g., summed) and the cumulative probability can be used to determine whether to set off an alarm indicating a hypoglycemic event. Receiver Operating Characteristic (ROC) curve analysis can be applied to decision tree analysis described above ROC analysis is another threshold optimization means. It provides a way to determine the optimal true positive fraction, while minimizing the false positive fraction. A ROC analysis can be used to compare two classification schemes, and determine which scheme is a better overall predictor of the selected event (e.g., a hypoglycemic event); for example, a ROC analysis can be used to compare a simple threshold classifier with a decision tree. ROC software packages typically include procedures for the following: correlated, continuously distributed as well as inherently categorical rating scale data; statistical comparison between two binormal ROC curves; maximum likelihood estimation of binoπnal ROC curves from set of continuous as well as categorical data; and analysis of statistical power for comparison of ROC curves. Commercial software for structuring and execution of ROC is available (e.g., Analyse-It for Microsoft Excel, Analyse-It Software, Ltd., Leeds LS12 5XA, England, UK; MedCalc®, MedCalc Software, Mariakerke, Belgium; AccuROC, Accumetric Corporation, Montreal, Quebec, CA). Related techniques that can be applied to the above analyses include, but are not limited to, Decision Graphs, Decision Rules (also called Rules Induction), Discriminant Analysis (including Stepwise Discriminant Analysis), Logistic Regression, Nearest Neighbor Classification, Neural Networks, and Naϊve Bayes Classifier.
Although preferred embodiments of the subject invention have been described in some detail, it is understood that obvious variations can be made without departing from the spirit and the scope of the invention as defined by the appended claims.

Claims

What Is Claimed Is:
1. A method for predicting a hypoglycemic event in a subject, said method comprising, determining (i) a threshold glucose value that corresponds to said hypoglycemic event, and (ii) at least one threshold parameter value that is correlated with said hypoglycemic event, wherein the parameter is either skin conductance readings or temperature readings, obtaining a series of glucose measurement values at selected time intervals using a method comprising extracting a sample comprising glucose from the subject using a transdermal sampling system that is in operative contact with a skin or mucosal surface of said subject; obtaining a raw signal from the extracted glucose, wherein said raw signal is specifically related to glucose amount or concentration in the subject; correlating the raw signal with a glucose measurement value indicative of the amount or concentration of glucose present in the subj ect at the time of extraction; repeating said extracting, obtaining, and correlating to provide a series of measurement values at selected time intervals, wherein the sampling system is maintained in operative contact with the skin or mucosal surface of said subject during said extracting, obtaining, and correlating to provide for frequent glucose measurements; predicting a measurement value at a further time interval subsequent to said series of measurement values, said further time interval represented as n+1; and comparing said predicted measurement value to said threshold glucose value, wherein a measurement value lower than the threshold value is designated to be hypoglycemic; measuring a parameter value or trend of parameter values concurrently, simultaneously, or sequentially with said obtaining of the series of measurement values, wherein the parameter value or trend of parameter values is reflective of either skin conductance readings or temperature readings of the subject, and comparing said parameter value or trend of parameter values with said threshold parameter value to determine whether said parameter value or trend of parameter values indicates a hypoglycemic event; and predicting a hypoglycemic event in said subject when both (i) comparing said predicted measurement value to said threshold glucose value indicates a hypoglycemic event at time interval n+1, and (ii) comparing said parameter with said threshold parameter value indicates a hypoglycemic event.
2. The method of claim 1, wherein the selected time intervals are evenly spaced.
3. The method of claim 1, wherein the series of measurement values comprises three or more discrete values.
4. The method of claim 3, wherein the further time interval n+1 occurs one time interval after the series of measurement values.
5. The method of claim 1, wherein both skin conductance readings and temperature readings are used to predict the likelihood of a hypoglycemic event at time interval n+1.
6. The method of claim 3, wherein said predicting of the measurement value at a further time interval is carried out using said series of three or more measurement values in a series function represented by: α2 +I = y» + (yn -y»- + (yn ~ 2y»-ι +yn) (?) wherein is the measurement value of glucose, n is the time interval between measurement values, and is a real number between 0 and 1.
7. The method of claim 6, wherein the series function is used to predict the value of yn+1 and the time interval n+1 occurs one time interval after the series of measurement values is obtained.
8. The method of claim 1, wherein said sampling system comprises a sweat probe and said skin conductance readings are obtained using said sweat probe.
9. The method of claim 1, wherein said sampling system comprises a temperature probe and said temperature readings are obtained using said temperature probe.
10. The method of claim 1, wherein said sample is extracted from the subject into one or more collection reservoir to obtain an amount or concentration of glucose in a reservoir.
11. The method of claim 10, wherein the one or more collection reservoirs are in contact with the skin or mucosal surface of the subject and the sample is extracted using an iontophoretic current applied to said skin or mucosal surface.
12. The method of claim 11 , wherein at least one collection reservoir comprises an enzyme that reacts with the extracted glucose to produce an electrochemically detectable signal.
13. The method of claim 11, wherein said enzyme is glucose oxidase.
14. The method of claim 1, wherein said obtaining of the series of glucose measurement values is performed using a near-IR spectrometer.
15. A glucose monitoring system for measuring glucose in a subject, said system comprising, in operative combination: a sensing mechanism in operative contact with the subject or with a glucose- containing sample extracted from the subject, wherein said sensing mechanism obtains a raw signal specifically related to glucose amount or concentration in the subject; a device to obtain either skin conductance readings or temperature readings from the subject, and one or more microprocessors in operative communication with the sensing mechanism, wherein said microprocessors comprise programming to (i) control the sensing mechanism to obtain a series of raw signals at selected time intervals, (ii) correlate the raw signals with measurement values indicative of the amount or concentration of glucose present in the subject to obtain a series of measurement values, (iii) predict a measurement value at a further time interval, which occurs after the series of measurement values is obtained, (iv) compare said predicted measurement value to a predetermined value, wherein a predicted measurement value lower than the predetermined value is designated to be hypoglycemic, (v) control the device for measuring skin conductance readings or temperature readings of the subject, (vi) compare said skin conductance readings or temperature readings with a threshold parameter value or trend of parameter values to determine whether said skin conductance readings or temperature readings indicate a hypoglycemic event; and (vii) predict a hypoglycemic event in said subject when both (a) comparing said predicted measurement value to said threshold glucose value indicates a hypoglycemic event at time interval n+1, and (b) comparing said skin conductance readings or temperature readings with a threshold parameter value or trend of parameter values indicates a hypoglycemic event.
16. The monitoring system of claim 15, wherein the sensing mechanism comprises a biosensor having an electrochemical sensing element.
17. The monitoring system of claim 15, wherein the sensing mechanism comprises a near-IR spectrometer.
18. The monitoring system of claim 15, wherein said device to obtain said skin conductance readings is a sweat probe.
19. The monitoring system of claim 15, wherein said device to obtain said temperature readings is a temperature probe.
20. The monitoring system of claim 15, wherein the selected time intervals are evenly spaced.
21. The momtoring system of claim 15, wherein the series of measurement values obtained comprises three or more discrete values.
22. The momtoring system of claim 21, wherein the further time interval occurs one time interval after the series of measurement values.
23. The monitoring system of claim 15, wherein both skin conductance readings and temperature readings are used to predict the likelihood of a hypoglycemic event at the further time interval.
24. The monitoring system of claim 21, wherein said predicting of a measurement value at a further time interval is carried out using said series of three or more measurement values in a series function represented by: '
Λ+i = yn +u{y„ - yn-l) + {yn - 2yn_x + y„_2) (7) wherein is the measurement value of glucose, n is the time interval between measurement values, and α is a real number between 0 and 1.
25. The monitoring system of claim 24, wherein the series function is used to predict the value of yn+1 and the time interval n+1 occurs one time interval after the series of measurement values is obtained.
26. One or more microprocessors, comprising programming to control (i) a sensing mechanism to obtain a series of raw signals at selected time intervals, wherein the raw signal is related to an amount or concentration of glucose in a subject, (ii) a device to obtain either a series of skin conductance readings or a series of temperature readings from the subject, (iii) correlating the raw signals with measurement values indicative of the amount or concentration of glucose present in the subject to obtain a series of glucose measurement values, (iv) predicting a glucose measurement value at a further time interval, which occurs after the series of measurement values is obtained, (v) comparing said predicted measurement value to a predetermined value, wherein a predicted measurement value lower than the predetermined value is designated to be hypoglycemic, (v) controlling the device for measuring skin conductance readings or temperature readings of the subject, (vi) comparing said skin conductance readings or temperature readings with a threshold parameter value or trend of parameter values to determine whether said skin conductance readings or temperature readings indicate a hypoglycemic event; and (vii) predicting a hypoglycemic event in said subject when both (a) comparing said predicted measurement value to said threshold glucose value indicates a hypoglycemic event at time interval n+1, and (b) comparing said skin conductance readings or temperature readings with a threshold parameter value or trend of parameter values indicates a hypoglycemic event.
27. The one or more microprocessors of claim 26, wherein the sensing mechanism comprises a biosensor having an electrochemical sensing element.
28. The one or more microprocessors of claim 26, wherein the sensing mechanism comprises a near-IR spectrometer.
29. The one or more microprocessors of claim 26, wherein the selected time intervals are evenly spaced.
30. The one or more microprocessors of claim 26, wherein the series of measurement values obtained comprises three or more discrete values.
31. The one or more microprocessors of claim 26, wherein the further time interval occurs one time interval after the series of measurement values.
32. The one or more microprocessors of claim 26, wherein both skin conductance readings and temperature readings are used to predict the likelihood of a hypoglycemic event at the further time interval.
33. The one or more microprocessors of claim 30, wherein the predicting a glucose measurement value at a further time interval is carried out using said series of three or more measurement values in a series function represented by:
Figure imgf000054_0001
+I = yn +α( - yn-x) + yn - iyn-\ +J 2) 0) wherein v is the measurement value of glucose, n is the time interval between measurement values, and α is a real number between 0 and 1.
34. The one or more microprocessors of claim 33, wherein the series function is used to predict the value of yn+I and the time interval n+1 occurs one time interval after the series of measurement values is obtained.
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Cited By (25)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO2003082098A2 (en) 2002-03-22 2003-10-09 Cygnus, Inc. Improving performance of an analyte monitoring device
WO2005037092A1 (en) * 2003-10-13 2005-04-28 Novo Nordisk A/S Apparatus and method for determining a physiological condition
JP2006501477A (en) * 2002-10-01 2006-01-12 ヒーモスコープ コーポレイション Method and apparatus for hemostasis and blood treatment
US7011630B2 (en) 2001-06-22 2006-03-14 Animas Technologies, Llc Methods for computing rolling analyte measurement values, microprocessors comprising programming to control performance of the methods, and analyte monitoring devices employing the methods
EP1793321A1 (en) 2005-12-03 2007-06-06 Roche Diagnostics GmbH Evaluation method and analysis system of an analyte in the bodily fluid of a human or animal
US7252090B2 (en) 2003-09-15 2007-08-07 Medtronic, Inc. Selection of neurostimulator parameter configurations using neural network
GB2443434A (en) * 2006-11-02 2008-05-07 Richard Butler Method for predicting nocturnal hypoglycaemia
US20080234992A1 (en) * 2007-03-20 2008-09-25 Pinaki Ray Systems and methods for pattern recognition in diabetes management
EP2144066A1 (en) * 2007-04-27 2010-01-13 Arkray, Inc. Measurement device
US7650244B2 (en) 2004-04-24 2010-01-19 Roche Diagnostics Operations, Inc. Method and device for monitoring analyte concentration by determining its progression in the living body of a human or animal
US7706889B2 (en) 2006-04-28 2010-04-27 Medtronic, Inc. Tree-based electrical stimulator programming
EP2270696A3 (en) * 2002-06-05 2011-04-06 Diabetes Diagnostics, Inc. Analyte testing device
EP2327359A1 (en) * 2002-08-13 2011-06-01 University Of Virginia Patent Foundation Method, system, and computer program product for processing of self-monitoring blood glucose (smbg) data to enhance diabetic self-management
EP2368497A1 (en) 2010-03-26 2011-09-28 Sysmex Corporation Diagnosis support method, diagnosis support system, and diagnosis support apparatus
US8306624B2 (en) 2006-04-28 2012-11-06 Medtronic, Inc. Patient-individualized efficacy rating
US8380300B2 (en) 2006-04-28 2013-02-19 Medtronic, Inc. Efficacy visualization
US8456309B2 (en) 2006-12-27 2013-06-04 Cardiac Pacemakers, Inc. Within-patient algorithm to predict heart failure decompensation
US9351670B2 (en) 2012-12-31 2016-05-31 Abbott Diabetes Care Inc. Glycemic risk determination based on variability of glucose levels
US9824190B2 (en) 2013-06-26 2017-11-21 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
EP3263032A1 (en) * 2003-12-09 2018-01-03 Dexcom, Inc. Signal processing for continuous analyte sensor
US10010291B2 (en) 2013-03-15 2018-07-03 Abbott Diabetes Care Inc. System and method to manage diabetes based on glucose median, glucose variability, and hypoglycemic risk
US10383580B2 (en) 2012-12-31 2019-08-20 Abbott Diabetes Care Inc. Analysis of glucose median, variability, and hypoglycemia risk for therapy guidance
US10524669B2 (en) 2003-10-13 2020-01-07 Novo Nordisk A/S Apparatus and method for determining a physiological condition
US11361857B2 (en) 2013-06-26 2022-06-14 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US11488038B2 (en) 2019-03-29 2022-11-01 Sony Network Communications Europe B.V. Method and device for monitoring

Families Citing this family (398)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US6036924A (en) 1997-12-04 2000-03-14 Hewlett-Packard Company Cassette of lancet cartridges for sampling blood
US6391005B1 (en) 1998-03-30 2002-05-21 Agilent Technologies, Inc. Apparatus and method for penetration with shaft having a sensor for sensing penetration depth
US8346337B2 (en) 1998-04-30 2013-01-01 Abbott Diabetes Care Inc. Analyte monitoring device and methods of use
US9066695B2 (en) 1998-04-30 2015-06-30 Abbott Diabetes Care Inc. Analyte monitoring device and methods of use
US6949816B2 (en) 2003-04-21 2005-09-27 Motorola, Inc. Semiconductor component having first surface area for electrically coupling to a semiconductor chip and second surface area for electrically coupling to a substrate, and method of manufacturing same
US6175752B1 (en) 1998-04-30 2001-01-16 Therasense, Inc. Analyte monitoring device and methods of use
US8688188B2 (en) 1998-04-30 2014-04-01 Abbott Diabetes Care Inc. Analyte monitoring device and methods of use
US8974386B2 (en) 1998-04-30 2015-03-10 Abbott Diabetes Care Inc. Analyte monitoring device and methods of use
US8480580B2 (en) 1998-04-30 2013-07-09 Abbott Diabetes Care Inc. Analyte monitoring device and methods of use
US8465425B2 (en) 1998-04-30 2013-06-18 Abbott Diabetes Care Inc. Analyte monitoring device and methods of use
US8641644B2 (en) 2000-11-21 2014-02-04 Sanofi-Aventis Deutschland Gmbh Blood testing apparatus having a rotatable cartridge with multiple lancing elements and testing means
US6560471B1 (en) 2001-01-02 2003-05-06 Therasense, Inc. Analyte monitoring device and methods of use
EP1818010B1 (en) 2001-03-06 2012-02-29 Solianis Holding AG Device for determining the concentration of a substance in body liquid
US7315767B2 (en) 2001-03-06 2008-01-01 Solianis Holding Ag Impedance spectroscopy based systems and methods
US7041468B2 (en) 2001-04-02 2006-05-09 Therasense, Inc. Blood glucose tracking apparatus and methods
US7682318B2 (en) 2001-06-12 2010-03-23 Pelikan Technologies, Inc. Blood sampling apparatus and method
US7981056B2 (en) 2002-04-19 2011-07-19 Pelikan Technologies, Inc. Methods and apparatus for lancet actuation
US9795747B2 (en) 2010-06-02 2017-10-24 Sanofi-Aventis Deutschland Gmbh Methods and apparatus for lancet actuation
EP1404234B1 (en) 2001-06-12 2011-02-09 Pelikan Technologies Inc. Apparatus for improving success rate of blood yield from a fingerstick
US9226699B2 (en) 2002-04-19 2016-01-05 Sanofi-Aventis Deutschland Gmbh Body fluid sampling module with a continuous compression tissue interface surface
ATE485766T1 (en) 2001-06-12 2010-11-15 Pelikan Technologies Inc ELECTRICAL ACTUATING ELEMENT FOR A LANCET
US7025774B2 (en) 2001-06-12 2006-04-11 Pelikan Technologies, Inc. Tissue penetration device
US7749174B2 (en) 2001-06-12 2010-07-06 Pelikan Technologies, Inc. Method and apparatus for lancet launching device intergrated onto a blood-sampling cartridge
US8337419B2 (en) 2002-04-19 2012-12-25 Sanofi-Aventis Deutschland Gmbh Tissue penetration device
DE60234598D1 (en) 2001-06-12 2010-01-14 Pelikan Technologies Inc SELF-OPTIMIZING LANZET DEVICE WITH ADAPTANT FOR TEMPORAL FLUCTUATIONS OF SKIN PROPERTIES
US9427532B2 (en) 2001-06-12 2016-08-30 Sanofi-Aventis Deutschland Gmbh Tissue penetration device
EP1320322A1 (en) * 2001-08-20 2003-06-25 Inverness Medical Limited Wireless diabetes management devices and methods for using the same
WO2003030731A2 (en) * 2001-10-09 2003-04-17 Optiscan Biomedical Corporation Method and apparatus for improving clinical accuracy of analyte measurements
US7022072B2 (en) * 2001-12-27 2006-04-04 Medtronic Minimed, Inc. System for monitoring physiological characteristics
US7892183B2 (en) 2002-04-19 2011-02-22 Pelikan Technologies, Inc. Method and apparatus for body fluid sampling and analyte sensing
US7909778B2 (en) 2002-04-19 2011-03-22 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7648468B2 (en) 2002-04-19 2010-01-19 Pelikon Technologies, Inc. Method and apparatus for penetrating tissue
US7901362B2 (en) 2002-04-19 2011-03-08 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US9314194B2 (en) 2002-04-19 2016-04-19 Sanofi-Aventis Deutschland Gmbh Tissue penetration device
US7976476B2 (en) 2002-04-19 2011-07-12 Pelikan Technologies, Inc. Device and method for variable speed lancet
US8267870B2 (en) 2002-04-19 2012-09-18 Sanofi-Aventis Deutschland Gmbh Method and apparatus for body fluid sampling with hybrid actuation
US7229458B2 (en) 2002-04-19 2007-06-12 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7674232B2 (en) 2002-04-19 2010-03-09 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7291117B2 (en) 2002-04-19 2007-11-06 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US8784335B2 (en) 2002-04-19 2014-07-22 Sanofi-Aventis Deutschland Gmbh Body fluid sampling device with a capacitive sensor
US7371247B2 (en) 2002-04-19 2008-05-13 Pelikan Technologies, Inc Method and apparatus for penetrating tissue
US9248267B2 (en) 2002-04-19 2016-02-02 Sanofi-Aventis Deustchland Gmbh Tissue penetration device
US8221334B2 (en) 2002-04-19 2012-07-17 Sanofi-Aventis Deutschland Gmbh Method and apparatus for penetrating tissue
US7226461B2 (en) 2002-04-19 2007-06-05 Pelikan Technologies, Inc. Method and apparatus for a multi-use body fluid sampling device with sterility barrier release
US8579831B2 (en) 2002-04-19 2013-11-12 Sanofi-Aventis Deutschland Gmbh Method and apparatus for penetrating tissue
US7717863B2 (en) 2002-04-19 2010-05-18 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7491178B2 (en) 2002-04-19 2009-02-17 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US9795334B2 (en) 2002-04-19 2017-10-24 Sanofi-Aventis Deutschland Gmbh Method and apparatus for penetrating tissue
US7232451B2 (en) 2002-04-19 2007-06-19 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7297122B2 (en) 2002-04-19 2007-11-20 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7331931B2 (en) 2002-04-19 2008-02-19 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US8702624B2 (en) 2006-09-29 2014-04-22 Sanofi-Aventis Deutschland Gmbh Analyte measurement device with a single shot actuator
US7547287B2 (en) 2002-04-19 2009-06-16 Pelikan Technologies, Inc. Method and apparatus for penetrating tissue
US7175642B2 (en) 2002-04-19 2007-02-13 Pelikan Technologies, Inc. Methods and apparatus for lancet actuation
US20030211617A1 (en) * 2002-05-07 2003-11-13 International Business Machines Corporation Blood glucose meter that reminds the user to test after a hypoglycemic event
US20050288571A1 (en) * 2002-08-20 2005-12-29 Welch Allyn, Inc. Mobile medical workstation
US20040186357A1 (en) * 2002-08-20 2004-09-23 Welch Allyn, Inc. Diagnostic instrument workstation
AU2002326098A1 (en) * 2002-09-04 2004-03-29 Pendragon Medical Ltd. Method and device for measuring glucose
AU2002334314A1 (en) * 2002-09-24 2004-04-19 Pendragon Medical Ltd. Device for the measurement of glucose concentrations
US7381184B2 (en) 2002-11-05 2008-06-03 Abbott Diabetes Care Inc. Sensor inserter assembly
US7052472B1 (en) * 2002-12-18 2006-05-30 Dsp Diabetes Sentry Products, Inc. Systems and methods for detecting symptoms of hypoglycemia
US8574895B2 (en) 2002-12-30 2013-11-05 Sanofi-Aventis Deutschland Gmbh Method and apparatus using optical techniques to measure analyte levels
US8771183B2 (en) 2004-02-17 2014-07-08 Abbott Diabetes Care Inc. Method and system for providing data communication in continuous glucose monitoring and management system
US7811231B2 (en) 2002-12-31 2010-10-12 Abbott Diabetes Care Inc. Continuous glucose monitoring system and methods of use
US20040132171A1 (en) * 2003-01-06 2004-07-08 Peter Rule Wearable device for measuring analyte concentration
JP2004248793A (en) * 2003-02-19 2004-09-09 Philips Japan Ltd Bedside information system
DK1633235T3 (en) 2003-06-06 2014-08-18 Sanofi Aventis Deutschland Apparatus for sampling body fluid and detecting analyte
US8066639B2 (en) 2003-06-10 2011-11-29 Abbott Diabetes Care Inc. Glucose measuring device for use in personal area network
WO2006001797A1 (en) 2004-06-14 2006-01-05 Pelikan Technologies, Inc. Low pain penetrating
US8761856B2 (en) * 2003-08-01 2014-06-24 Dexcom, Inc. System and methods for processing analyte sensor data
US8275437B2 (en) 2003-08-01 2012-09-25 Dexcom, Inc. Transcutaneous analyte sensor
US8060173B2 (en) 2003-08-01 2011-11-15 Dexcom, Inc. System and methods for processing analyte sensor data
US7774145B2 (en) 2003-08-01 2010-08-10 Dexcom, Inc. Transcutaneous analyte sensor
US20070208245A1 (en) * 2003-08-01 2007-09-06 Brauker James H Transcutaneous analyte sensor
US8845536B2 (en) * 2003-08-01 2014-09-30 Dexcom, Inc. Transcutaneous analyte sensor
US20190357827A1 (en) 2003-08-01 2019-11-28 Dexcom, Inc. Analyte sensor
US8160669B2 (en) * 2003-08-01 2012-04-17 Dexcom, Inc. Transcutaneous analyte sensor
US20050033133A1 (en) * 2003-08-06 2005-02-10 Clifford Kraft Implantable chip medical diagnostic device for bodily fluids
US20050069925A1 (en) * 2003-08-15 2005-03-31 Russell Ford Microprocessors, devices, and methods for use in monitoring of physiological analytes
US6954662B2 (en) * 2003-08-19 2005-10-11 A.D. Integrity Applications, Ltd. Method of monitoring glucose level
US20070185390A1 (en) * 2003-08-19 2007-08-09 Welch Allyn, Inc. Information workflow for a medical diagnostic workstation
US7920906B2 (en) 2005-03-10 2011-04-05 Dexcom, Inc. System and methods for processing analyte sensor data for sensor calibration
US7617002B2 (en) * 2003-09-15 2009-11-10 Medtronic, Inc. Selection of neurostimulator parameter configurations using decision trees
US7239926B2 (en) * 2003-09-15 2007-07-03 Medtronic, Inc. Selection of neurostimulator parameter configurations using genetic algorithms
US7184837B2 (en) * 2003-09-15 2007-02-27 Medtronic, Inc. Selection of neurostimulator parameter configurations using bayesian networks
US8282576B2 (en) 2003-09-29 2012-10-09 Sanofi-Aventis Deutschland Gmbh Method and apparatus for an improved sample capture device
EP1680014A4 (en) 2003-10-14 2009-01-21 Pelikan Technologies Inc Method and apparatus for a variable user interface
US7299082B2 (en) 2003-10-31 2007-11-20 Abbott Diabetes Care, Inc. Method of calibrating an analyte-measurement device, and associated methods, devices and systems
USD914881S1 (en) 2003-11-05 2021-03-30 Abbott Diabetes Care Inc. Analyte sensor electronic mount
US9247900B2 (en) 2004-07-13 2016-02-02 Dexcom, Inc. Analyte sensor
WO2005053526A1 (en) * 2003-11-27 2005-06-16 Solianis Holding Ag Techniques for determining glucose levels
US8197406B2 (en) * 2003-12-02 2012-06-12 Biovotion Ag Device and method for measuring a property of living tissue
US7822454B1 (en) 2005-01-03 2010-10-26 Pelikan Technologies, Inc. Fluid sampling device with improved analyte detecting member configuration
EP1706026B1 (en) 2003-12-31 2017-03-01 Sanofi-Aventis Deutschland GmbH Method and apparatus for improving fluidic flow and sample capture
JP4809779B2 (en) * 2004-02-05 2011-11-09 アーリーセンス・リミテッド Prediction and monitoring technology for clinical onset in respiration
US8491492B2 (en) 2004-02-05 2013-07-23 Earlysense Ltd. Monitoring a condition of a subject
US8403865B2 (en) * 2004-02-05 2013-03-26 Earlysense Ltd. Prediction and monitoring of clinical episodes
US10194810B2 (en) * 2004-02-05 2019-02-05 Earlysense Ltd. Monitoring a condition of a subject
US8942779B2 (en) 2004-02-05 2015-01-27 Early Sense Ltd. Monitoring a condition of a subject
US20070118054A1 (en) * 2005-11-01 2007-05-24 Earlysense Ltd. Methods and systems for monitoring patients for clinical episodes
US8554486B2 (en) * 2004-02-20 2013-10-08 The Mathworks, Inc. Method, computer program product, and apparatus for selective memory restoration of a simulation
RU2345705C2 (en) * 2004-02-26 2009-02-10 Диабетес Тулз Сведен Аб Metabolic control, method and device for obtaining indications about health-determining state of examined person
US20070276209A1 (en) * 2004-04-30 2007-11-29 Fumiaki Emoto Blood-Sugar Level Measuring Device
WO2005110029A2 (en) * 2004-05-07 2005-11-24 Intermed Advisor, Inc. Method and apparatus for real time predictive modeling for chronically ill patients
US20060025931A1 (en) * 2004-07-30 2006-02-02 Richard Rosen Method and apparatus for real time predictive modeling for chronically ill patients
US7251516B2 (en) * 2004-05-11 2007-07-31 Nostix Llc Noninvasive glucose sensor
US8828203B2 (en) 2004-05-20 2014-09-09 Sanofi-Aventis Deutschland Gmbh Printable hydrogels for biosensors
EP1765194A4 (en) 2004-06-03 2010-09-29 Pelikan Technologies Inc Method and apparatus for a fluid sampling device
US20060010098A1 (en) 2004-06-04 2006-01-12 Goodnow Timothy T Diabetes care host-client architecture and data management system
US8565848B2 (en) * 2004-07-13 2013-10-22 Dexcom, Inc. Transcutaneous analyte sensor
US7946984B2 (en) 2004-07-13 2011-05-24 Dexcom, Inc. Transcutaneous analyte sensor
US8452368B2 (en) 2004-07-13 2013-05-28 Dexcom, Inc. Transcutaneous analyte sensor
US8886272B2 (en) 2004-07-13 2014-11-11 Dexcom, Inc. Analyte sensor
US7574382B1 (en) 2004-08-03 2009-08-11 Amazon Technologies, Inc. Automated detection of anomalous user activity associated with specific items in an electronic catalog
US7536232B2 (en) * 2004-08-27 2009-05-19 Alstom Technology Ltd Model predictive control of air pollution control processes
US7117046B2 (en) * 2004-08-27 2006-10-03 Alstom Technology Ltd. Cascaded control of an average value of a process parameter to a desired value
US20060047607A1 (en) * 2004-08-27 2006-03-02 Boyden Scott A Maximizing profit and minimizing losses in controlling air pollution
US7634417B2 (en) * 2004-08-27 2009-12-15 Alstom Technology Ltd. Cost based control of air pollution control
US7323036B2 (en) * 2004-08-27 2008-01-29 Alstom Technology Ltd Maximizing regulatory credits in controlling air pollution
US7522963B2 (en) * 2004-08-27 2009-04-21 Alstom Technology Ltd Optimized air pollution control
US7113835B2 (en) * 2004-08-27 2006-09-26 Alstom Technology Ltd. Control of rolling or moving average values of air pollution control emissions to a desired value
US8512243B2 (en) 2005-09-30 2013-08-20 Abbott Diabetes Care Inc. Integrated introducer and transmitter assembly and methods of use
US9572534B2 (en) 2010-06-29 2017-02-21 Abbott Diabetes Care Inc. Devices, systems and methods for on-skin or on-body mounting of medical devices
US7883464B2 (en) 2005-09-30 2011-02-08 Abbott Diabetes Care Inc. Integrated transmitter unit and sensor introducer mechanism and methods of use
US7697967B2 (en) 2005-12-28 2010-04-13 Abbott Diabetes Care Inc. Method and apparatus for providing analyte sensor insertion
US8571624B2 (en) 2004-12-29 2013-10-29 Abbott Diabetes Care Inc. Method and apparatus for mounting a data transmission device in a communication system
US9259175B2 (en) 2006-10-23 2016-02-16 Abbott Diabetes Care, Inc. Flexible patch for fluid delivery and monitoring body analytes
US8029441B2 (en) 2006-02-28 2011-10-04 Abbott Diabetes Care Inc. Analyte sensor transmitter unit configuration for a data monitoring and management system
US9743862B2 (en) 2011-03-31 2017-08-29 Abbott Diabetes Care Inc. Systems and methods for transcutaneously implanting medical devices
US10226207B2 (en) 2004-12-29 2019-03-12 Abbott Diabetes Care Inc. Sensor inserter having introducer
US9636450B2 (en) 2007-02-19 2017-05-02 Udo Hoss Pump system modular components for delivering medication and analyte sensing at seperate insertion sites
US9398882B2 (en) 2005-09-30 2016-07-26 Abbott Diabetes Care Inc. Method and apparatus for providing analyte sensor and data processing device
US9788771B2 (en) 2006-10-23 2017-10-17 Abbott Diabetes Care Inc. Variable speed sensor insertion devices and methods of use
US7731657B2 (en) 2005-08-30 2010-06-08 Abbott Diabetes Care Inc. Analyte sensor introducer and methods of use
US8333714B2 (en) 2006-09-10 2012-12-18 Abbott Diabetes Care Inc. Method and system for providing an integrated analyte sensor insertion device and data processing unit
US8652831B2 (en) 2004-12-30 2014-02-18 Sanofi-Aventis Deutschland Gmbh Method and apparatus for analyte measurement test time
ITBO20050002A1 (en) * 2005-01-04 2006-07-05 Giacomo Vespasiani METHOD AND SYSTEM FOR INTERACTIVE MANAGEMENT OF DATA CONCERNING AN INSULIN THERAPY IN SELF-CONTROL FOR A DIABETIC PATIENT
JP2006217167A (en) * 2005-02-02 2006-08-17 Sharp Corp Ip telephone device and ip adapter device
US7545272B2 (en) 2005-02-08 2009-06-09 Therasense, Inc. RF tag on test strips, test strip vials and boxes
US7739143B1 (en) * 2005-03-24 2010-06-15 Amazon Technologies, Inc. Robust forecasting techniques with reduced sensitivity to anomalous data
US7610214B1 (en) * 2005-03-24 2009-10-27 Amazon Technologies, Inc. Robust forecasting techniques with reduced sensitivity to anomalous data
US8112240B2 (en) 2005-04-29 2012-02-07 Abbott Diabetes Care Inc. Method and apparatus for providing leak detection in data monitoring and management systems
US20080314395A1 (en) 2005-08-31 2008-12-25 Theuniversity Of Virginia Patent Foundation Accuracy of Continuous Glucose Sensors
AR058034A1 (en) * 2005-09-07 2008-01-23 Bayer Healthcare Llc METER WITH DATE AND TIME CORRECTION AND METHODS TO PERFORM CORRECTION
US8880138B2 (en) 2005-09-30 2014-11-04 Abbott Diabetes Care Inc. Device for channeling fluid and methods of use
US9521968B2 (en) 2005-09-30 2016-12-20 Abbott Diabetes Care Inc. Analyte sensor retention mechanism and methods of use
US7766829B2 (en) 2005-11-04 2010-08-03 Abbott Diabetes Care Inc. Method and system for providing basal profile modification in analyte monitoring and management systems
WO2007053963A1 (en) * 2005-11-10 2007-05-18 Solianis Holding Ag Device for determining the glucose level in body tissue
US7963917B2 (en) * 2005-12-05 2011-06-21 Echo Therapeutics, Inc. System and method for continuous non-invasive glucose monitoring
US11298058B2 (en) 2005-12-28 2022-04-12 Abbott Diabetes Care Inc. Method and apparatus for providing analyte sensor insertion
EP1968432A4 (en) 2005-12-28 2009-10-21 Abbott Diabetes Care Inc Medical device insertion
US7736310B2 (en) 2006-01-30 2010-06-15 Abbott Diabetes Care Inc. On-body medical device securement
US8640698B2 (en) * 2006-02-17 2014-02-04 Redmed Limited Method and apparatus for monitoring the condition of a patient with diabetes
US7826879B2 (en) 2006-02-28 2010-11-02 Abbott Diabetes Care Inc. Analyte sensors and methods of use
US7885698B2 (en) 2006-02-28 2011-02-08 Abbott Diabetes Care Inc. Method and system for providing continuous calibration of implantable analyte sensors
US7981034B2 (en) 2006-02-28 2011-07-19 Abbott Diabetes Care Inc. Smart messages and alerts for an infusion delivery and management system
US9675290B2 (en) 2012-10-30 2017-06-13 Abbott Diabetes Care Inc. Sensitivity calibration of in vivo sensors used to measure analyte concentration
US8473022B2 (en) 2008-01-31 2013-06-25 Abbott Diabetes Care Inc. Analyte sensor with time lag compensation
US9392969B2 (en) 2008-08-31 2016-07-19 Abbott Diabetes Care Inc. Closed loop control and signal attenuation detection
US7653425B2 (en) 2006-08-09 2010-01-26 Abbott Diabetes Care Inc. Method and system for providing calibration of an analyte sensor in an analyte monitoring system
US8224415B2 (en) 2009-01-29 2012-07-17 Abbott Diabetes Care Inc. Method and device for providing offset model based calibration for analyte sensor
US7801582B2 (en) 2006-03-31 2010-09-21 Abbott Diabetes Care Inc. Analyte monitoring and management system and methods therefor
US8374668B1 (en) 2007-10-23 2013-02-12 Abbott Diabetes Care Inc. Analyte sensor with lag compensation
US7630748B2 (en) 2006-10-25 2009-12-08 Abbott Diabetes Care Inc. Method and system for providing analyte monitoring
US8219173B2 (en) 2008-09-30 2012-07-10 Abbott Diabetes Care Inc. Optimizing analyte sensor calibration
US8226891B2 (en) 2006-03-31 2012-07-24 Abbott Diabetes Care Inc. Analyte monitoring devices and methods therefor
US7620438B2 (en) 2006-03-31 2009-11-17 Abbott Diabetes Care Inc. Method and system for powering an electronic device
US7618369B2 (en) 2006-10-02 2009-11-17 Abbott Diabetes Care Inc. Method and system for dynamically updating calibration parameters for an analyte sensor
US8346335B2 (en) 2008-03-28 2013-01-01 Abbott Diabetes Care Inc. Analyte sensor calibration management
US8140312B2 (en) 2007-05-14 2012-03-20 Abbott Diabetes Care Inc. Method and system for determining analyte levels
WO2007143225A2 (en) 2006-06-07 2007-12-13 Abbott Diabetes Care, Inc. Analyte monitoring system and method
GB0611872D0 (en) * 2006-06-15 2006-07-26 Hypo Safe As Analysis of EEG signals to detect hypoglycaemia
US9119582B2 (en) 2006-06-30 2015-09-01 Abbott Diabetes Care, Inc. Integrated analyte sensor and infusion device and methods therefor
US8206296B2 (en) 2006-08-07 2012-06-26 Abbott Diabetes Care Inc. Method and system for providing integrated analyte monitoring and infusion system therapy management
US8932216B2 (en) 2006-08-07 2015-01-13 Abbott Diabetes Care Inc. Method and system for providing data management in integrated analyte monitoring and infusion system
ATE465674T1 (en) * 2006-08-08 2010-05-15 Koninkl Philips Electronics Nv METHOD AND DEVICE FOR MONITORING A PHYSIOLOGICAL PARAMETER
US7996077B2 (en) * 2006-09-06 2011-08-09 Encore Medical Asset Corporation Iontophoresis apparatus and method
US8214030B2 (en) 2006-09-06 2012-07-03 Encore Medical Asset Corporation Iontophoresis apparatus and method
JP4853207B2 (en) * 2006-09-28 2012-01-11 ニプロ株式会社 Blood glucose measuring device
EP2106238A4 (en) 2006-10-26 2011-03-09 Abbott Diabetes Care Inc Method, system and computer program product for real-time detection of sensitivity decline in analyte sensors
US8439837B2 (en) * 2006-10-31 2013-05-14 Lifescan, Inc. Systems and methods for detecting hypoglycemic events having a reduced incidence of false alarms
US8214007B2 (en) 2006-11-01 2012-07-03 Welch Allyn, Inc. Body worn physiological sensor device having a disposable electrode module
US20080306353A1 (en) * 2006-11-03 2008-12-11 Douglas Joel S Calculation device for metabolic control of critically ill and/or diabetic patients
US20080114215A1 (en) * 2006-11-09 2008-05-15 Isense Corporation Shape recognition of hypoglycemia and hyperglycemia
US20080199894A1 (en) 2007-02-15 2008-08-21 Abbott Diabetes Care, Inc. Device and method for automatic data acquisition and/or detection
US8121857B2 (en) 2007-02-15 2012-02-21 Abbott Diabetes Care Inc. Device and method for automatic data acquisition and/or detection
US8732188B2 (en) 2007-02-18 2014-05-20 Abbott Diabetes Care Inc. Method and system for providing contextual based medication dosage determination
US8930203B2 (en) 2007-02-18 2015-01-06 Abbott Diabetes Care Inc. Multi-function analyte test device and methods therefor
US8123686B2 (en) 2007-03-01 2012-02-28 Abbott Diabetes Care Inc. Method and apparatus for providing rolling data in communication systems
US20080228056A1 (en) 2007-03-13 2008-09-18 Michael Blomquist Basal rate testing using frequent blood glucose input
JP2008253560A (en) * 2007-04-05 2008-10-23 Shinichi Yoshida Device for detecting pseudohypoglycemia and issuing alarm
ES2817503T3 (en) 2007-04-14 2021-04-07 Abbott Diabetes Care Inc Procedure and apparatus for providing data processing and control in a medical communication system
WO2008128210A1 (en) 2007-04-14 2008-10-23 Abbott Diabetes Care, Inc. Method and apparatus for providing data processing and control in medical communication system
CA2683959C (en) 2007-04-14 2017-08-29 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in medical communication system
CA2683721C (en) 2007-04-14 2017-05-23 Abbott Diabetes Care Inc. Method and apparatus for providing dynamic multi-stage signal amplification in a medical device
CA2683953C (en) 2007-04-14 2016-08-02 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in medical communication system
EP2146625B1 (en) 2007-04-14 2019-08-14 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in medical communication system
US8585607B2 (en) 2007-05-02 2013-11-19 Earlysense Ltd. Monitoring, predicting and treating clinical episodes
WO2009138976A2 (en) * 2008-05-12 2009-11-19 Earlysense Ltd Monitoring, predicting and treating clinical episodes
US8665091B2 (en) 2007-05-08 2014-03-04 Abbott Diabetes Care Inc. Method and device for determining elapsed sensor life
US7928850B2 (en) 2007-05-08 2011-04-19 Abbott Diabetes Care Inc. Analyte monitoring system and methods
US8461985B2 (en) 2007-05-08 2013-06-11 Abbott Diabetes Care Inc. Analyte monitoring system and methods
US8456301B2 (en) 2007-05-08 2013-06-04 Abbott Diabetes Care Inc. Analyte monitoring system and methods
US10002233B2 (en) 2007-05-14 2018-06-19 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8560038B2 (en) 2007-05-14 2013-10-15 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8444560B2 (en) 2007-05-14 2013-05-21 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8600681B2 (en) 2007-05-14 2013-12-03 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US7996158B2 (en) 2007-05-14 2011-08-09 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8239166B2 (en) 2007-05-14 2012-08-07 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US9125548B2 (en) 2007-05-14 2015-09-08 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8103471B2 (en) 2007-05-14 2012-01-24 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8260558B2 (en) 2007-05-14 2012-09-04 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US8026382B2 (en) * 2007-05-18 2011-09-27 Heidi Kay Lipid raft, caveolin protein, and caveolar function modulation compounds and associated synthetic and therapeutic methods
US7751907B2 (en) 2007-05-24 2010-07-06 Smiths Medical Asd, Inc. Expert system for insulin pump therapy
US8221345B2 (en) 2007-05-30 2012-07-17 Smiths Medical Asd, Inc. Insulin pump based expert system
WO2008150917A1 (en) 2007-05-31 2008-12-11 Abbott Diabetes Care, Inc. Insertion devices and methods
JP5680960B2 (en) 2007-06-21 2015-03-04 アボット ダイアベティス ケア インコーポレイテッドAbbott Diabetes Care Inc. Health care device and method
US8617069B2 (en) 2007-06-21 2013-12-31 Abbott Diabetes Care Inc. Health monitor
US8818782B2 (en) * 2007-06-27 2014-08-26 Roche Diagnostics Operations, Inc. System for developing patient specific therapies based on dynamic modeling of patient physiology and method thereof
US8641618B2 (en) 2007-06-27 2014-02-04 Abbott Diabetes Care Inc. Method and structure for securing a monitoring device element
CN101821741B (en) 2007-06-27 2013-12-04 霍夫曼-拉罗奇有限公司 Medical diagnosis, therapy, and prognosis system for invoked events and method thereof
US8085151B2 (en) 2007-06-28 2011-12-27 Abbott Diabetes Care Inc. Signal converting cradle for medical condition monitoring and management system
US8160900B2 (en) 2007-06-29 2012-04-17 Abbott Diabetes Care Inc. Analyte monitoring and management device and method to analyze the frequency of user interaction with the device
US8834366B2 (en) 2007-07-31 2014-09-16 Abbott Diabetes Care Inc. Method and apparatus for providing analyte sensor calibration
US7768386B2 (en) 2007-07-31 2010-08-03 Abbott Diabetes Care Inc. Method and apparatus for providing data processing and control in a medical communication system
US7731659B2 (en) * 2007-10-18 2010-06-08 Lifescan Scotland Limited Method for predicting a user's future glycemic state
US7695434B2 (en) * 2007-10-19 2010-04-13 Lifescan Scotland, Ltd. Medical device for predicting a user's future glycemic state
US8377031B2 (en) 2007-10-23 2013-02-19 Abbott Diabetes Care Inc. Closed loop control system with safety parameters and methods
US8409093B2 (en) 2007-10-23 2013-04-02 Abbott Diabetes Care Inc. Assessing measures of glycemic variability
US8216138B1 (en) 2007-10-23 2012-07-10 Abbott Diabetes Care Inc. Correlation of alternative site blood and interstitial fluid glucose concentrations to venous glucose concentration
US8417312B2 (en) 2007-10-25 2013-04-09 Dexcom, Inc. Systems and methods for processing sensor data
US20090164239A1 (en) 2007-12-19 2009-06-25 Abbott Diabetes Care, Inc. Dynamic Display Of Glucose Information
US20090164482A1 (en) * 2007-12-20 2009-06-25 Partha Saha Methods and systems for optimizing projection of events
CN101904118B (en) * 2007-12-20 2014-07-23 皇家飞利浦电子股份有限公司 Electrode diversity for body-coupled communication systems
US20090177147A1 (en) 2008-01-07 2009-07-09 Michael Blomquist Insulin pump with insulin therapy coaching
US8252229B2 (en) 2008-04-10 2012-08-28 Abbott Diabetes Care Inc. Method and system for sterilizing an analyte sensor
WO2009126900A1 (en) 2008-04-11 2009-10-15 Pelikan Technologies, Inc. Method and apparatus for analyte detecting device
US9883809B2 (en) 2008-05-01 2018-02-06 Earlysense Ltd. Monitoring, predicting and treating clinical episodes
US8882684B2 (en) 2008-05-12 2014-11-11 Earlysense Ltd. Monitoring, predicting and treating clinical episodes
US8133197B2 (en) 2008-05-02 2012-03-13 Smiths Medical Asd, Inc. Display for pump
US8924159B2 (en) 2008-05-30 2014-12-30 Abbott Diabetes Care Inc. Method and apparatus for providing glycemic control
US7826382B2 (en) 2008-05-30 2010-11-02 Abbott Diabetes Care Inc. Close proximity communication device and methods
US8591410B2 (en) 2008-05-30 2013-11-26 Abbott Diabetes Care Inc. Method and apparatus for providing glycemic control
US20100010320A1 (en) * 2008-07-07 2010-01-14 Perkins David G Mobile medical workstation and a temporarily associating mobile computing device
WO2010009172A1 (en) 2008-07-14 2010-01-21 Abbott Diabetes Care Inc. Closed loop control system interface and methods
US20110160555A1 (en) * 2008-07-31 2011-06-30 Jacques Reifman Universal Models for Predicting Glucose Concentration in Humans
WO2010019919A1 (en) 2008-08-14 2010-02-18 University Of Toledo Multifunctional neural network system and uses thereof for glycemic forecasting
US8734422B2 (en) 2008-08-31 2014-05-27 Abbott Diabetes Care Inc. Closed loop control with improved alarm functions
US9943644B2 (en) 2008-08-31 2018-04-17 Abbott Diabetes Care Inc. Closed loop control with reference measurement and methods thereof
US20100057040A1 (en) 2008-08-31 2010-03-04 Abbott Diabetes Care, Inc. Robust Closed Loop Control And Methods
US8622988B2 (en) 2008-08-31 2014-01-07 Abbott Diabetes Care Inc. Variable rate closed loop control and methods
US8986208B2 (en) 2008-09-30 2015-03-24 Abbott Diabetes Care Inc. Analyte sensor sensitivity attenuation mitigation
US9326707B2 (en) 2008-11-10 2016-05-03 Abbott Diabetes Care Inc. Alarm characterization for analyte monitoring devices and systems
EP2196140B1 (en) 2008-12-11 2014-03-19 Trout GmbH Method and device for non-invasive determination of the blood sugar level
DE102008061900A1 (en) * 2008-12-11 2010-06-17 Trout Gmbh Method for non-invasive determination of blood sugar content in blood by measuring impedance of body of patient or part of body of patient, involves bringing high and low-frequency current into body of patient
US10456036B2 (en) * 2008-12-23 2019-10-29 Roche Diabetes Care, Inc. Structured tailoring
US10437962B2 (en) 2008-12-23 2019-10-08 Roche Diabetes Care Inc Status reporting of a structured collection procedure
US20120011125A1 (en) 2008-12-23 2012-01-12 Roche Diagnostics Operations, Inc. Management method and system for implementation, execution, data collection, and data analysis of a structured collection procedure which runs on a collection device
US9117015B2 (en) 2008-12-23 2015-08-25 Roche Diagnostics Operations, Inc. Management method and system for implementation, execution, data collection, and data analysis of a structured collection procedure which runs on a collection device
US9918635B2 (en) * 2008-12-23 2018-03-20 Roche Diabetes Care, Inc. Systems and methods for optimizing insulin dosage
JP2012513626A (en) 2008-12-23 2012-06-14 エフ.ホフマン−ラ ロシュ アーゲー Management method and system for implementation, execution, data collection, and data analysis of structured collection procedures operating on a collection device
US8849458B2 (en) * 2008-12-23 2014-09-30 Roche Diagnostics Operations, Inc. Collection device with selective display of test results, method and computer program product thereof
US8103456B2 (en) 2009-01-29 2012-01-24 Abbott Diabetes Care Inc. Method and device for early signal attenuation detection using blood glucose measurements
US9375169B2 (en) 2009-01-30 2016-06-28 Sanofi-Aventis Deutschland Gmbh Cam drive for managing disposable penetrating member actions with a single motor and motor and control system
US9402544B2 (en) 2009-02-03 2016-08-02 Abbott Diabetes Care Inc. Analyte sensor and apparatus for insertion of the sensor
US8497777B2 (en) 2009-04-15 2013-07-30 Abbott Diabetes Care Inc. Analyte monitoring system having an alert
WO2010121229A1 (en) 2009-04-16 2010-10-21 Abbott Diabetes Care Inc. Analyte sensor calibration management
US9226701B2 (en) 2009-04-28 2016-01-05 Abbott Diabetes Care Inc. Error detection in critical repeating data in a wireless sensor system
EP2424426B1 (en) 2009-04-29 2020-01-08 Abbott Diabetes Care, Inc. Method and system for providing data communication in continuous glucose monitoring and management system
US8483967B2 (en) 2009-04-29 2013-07-09 Abbott Diabetes Care Inc. Method and system for providing real time analyte sensor calibration with retrospective backfill
US9184490B2 (en) 2009-05-29 2015-11-10 Abbott Diabetes Care Inc. Medical device antenna systems having external antenna configurations
US8613892B2 (en) 2009-06-30 2013-12-24 Abbott Diabetes Care Inc. Analyte meter with a moveable head and methods of using the same
DK3689237T3 (en) 2009-07-23 2021-08-16 Abbott Diabetes Care Inc Method of preparation and system for continuous analyte measurement
EP3936032A1 (en) 2009-07-23 2022-01-12 Abbott Diabetes Care, Inc. Real time management of data relating to physiological control of glucose levels
WO2011014704A2 (en) 2009-07-30 2011-02-03 Tandem Diabetes Care, Inc. Infusion pump system with disposable cartridge having pressure venting and pressure feedback
WO2011014851A1 (en) 2009-07-31 2011-02-03 Abbott Diabetes Care Inc. Method and apparatus for providing analyte monitoring system calibration accuracy
US20110034792A1 (en) * 2009-08-05 2011-02-10 Williams Ronald L Noninvasive Body Chemistry Monitor and Method
EP2290371A1 (en) * 2009-08-27 2011-03-02 F. Hoffmann-La Roche AG Calibration method for prospective calibration of a measuring device
ES2912584T3 (en) 2009-08-31 2022-05-26 Abbott Diabetes Care Inc A glucose monitoring system and method
EP3923295A1 (en) 2009-08-31 2021-12-15 Abbott Diabetes Care, Inc. Medical devices and methods
WO2011026148A1 (en) 2009-08-31 2011-03-03 Abbott Diabetes Care Inc. Analyte monitoring system and methods for managing power and noise
US9314195B2 (en) 2009-08-31 2016-04-19 Abbott Diabetes Care Inc. Analyte signal processing device and methods
JP5830466B2 (en) * 2009-09-02 2015-12-09 ユニバーシティ オブ ヴァージニア パテント ファウンデーション Method for observing the possibility of occurrence of hypoglycemia in a patient within a predetermined future period, system therefor, and computer program therefor
WO2011041469A1 (en) 2009-09-29 2011-04-07 Abbott Diabetes Care Inc. Method and apparatus for providing notification function in analyte monitoring systems
WO2011041531A1 (en) 2009-09-30 2011-04-07 Abbott Diabetes Care Inc. Interconnect for on-body analyte monitoring device
US8690820B2 (en) * 2009-10-06 2014-04-08 Illinois Institute Of Technology Automatic insulin pumps using recursive multivariable models and adaptive control algorithms
WO2011053881A1 (en) * 2009-10-30 2011-05-05 Abbott Diabetes Care Inc. Method and apparatus for detecting false hypoglycemic conditions
JP2013509278A (en) * 2009-11-04 2013-03-14 アイメディックス ピーティーワイ リミテッド System and method for incorporating fused data hypoglycemia warnings into a closed loop blood glucose management system
US8490829B2 (en) * 2009-11-24 2013-07-23 Pepsico, Inc. Personalized beverage dispensing device
US8335592B2 (en) 2009-11-24 2012-12-18 Pepsico, Inc. Beverage dispensing device
US8882701B2 (en) 2009-12-04 2014-11-11 Smiths Medical Asd, Inc. Advanced step therapy delivery for an ambulatory infusion pump and system
US20110184265A1 (en) * 2010-01-22 2011-07-28 Abbott Diabetes Care Inc. Method and Apparatus for Providing Notification in Analyte Monitoring Systems
US8843321B2 (en) * 2010-01-26 2014-09-23 Roche Diagnostics Operations, Inc. Methods and systems for processing glucose data measured from a person having diabetes
USD924406S1 (en) 2010-02-01 2021-07-06 Abbott Diabetes Care Inc. Analyte sensor inserter
US20130226660A1 (en) * 2010-03-04 2013-08-29 Lusine Yepremyan Cyclicality-Based Rules for Data Anomaly Detection
US8306943B2 (en) * 2010-03-04 2012-11-06 NTelx, Inc. Seasonality-based rules for data anomaly detection
WO2011112753A1 (en) 2010-03-10 2011-09-15 Abbott Diabetes Care Inc. Systems, devices and methods for managing glucose levels
ES2881798T3 (en) 2010-03-24 2021-11-30 Abbott Diabetes Care Inc Medical device inserters and medical device insertion and use procedures
AU2010351115A1 (en) * 2010-04-12 2012-03-08 Saad Abdulamir Abbas Alarming system for a low sugar level (hypoglycemia) "hypometer"
US8965476B2 (en) 2010-04-16 2015-02-24 Sanofi-Aventis Deutschland Gmbh Tissue penetration device
US8235897B2 (en) 2010-04-27 2012-08-07 A.D. Integrity Applications Ltd. Device for non-invasively measuring glucose
US8532933B2 (en) 2010-06-18 2013-09-10 Roche Diagnostics Operations, Inc. Insulin optimization systems and testing methods with adjusted exit criterion accounting for system noise associated with biomarkers
US8635046B2 (en) 2010-06-23 2014-01-21 Abbott Diabetes Care Inc. Method and system for evaluating analyte sensor response characteristics
US11064921B2 (en) 2010-06-29 2021-07-20 Abbott Diabetes Care Inc. Devices, systems and methods for on-skin or on-body mounting of medical devices
US10092229B2 (en) 2010-06-29 2018-10-09 Abbott Diabetes Care Inc. Calibration of analyte measurement system
US20120006100A1 (en) * 2010-07-06 2012-01-12 Medtronic Minimed, Inc. Method and/or system for determining blood glucose reference sample times
US11213226B2 (en) 2010-10-07 2022-01-04 Abbott Diabetes Care Inc. Analyte monitoring devices and methods
US10292625B2 (en) 2010-12-07 2019-05-21 Earlysense Ltd. Monitoring a sleeping subject
US20120173151A1 (en) 2010-12-29 2012-07-05 Roche Diagnostics Operations, Inc. Methods of assessing diabetes treatment protocols based on protocol complexity levels and patient proficiency levels
US10136845B2 (en) 2011-02-28 2018-11-27 Abbott Diabetes Care Inc. Devices, systems, and methods associated with analyte monitoring devices and devices incorporating the same
CN103619255B (en) 2011-02-28 2016-11-02 雅培糖尿病护理公司 The device that associates with analyte monitoring device, system and method and combine their device
DK3575796T3 (en) 2011-04-15 2021-01-18 Dexcom Inc ADVANCED ANALYZE SENSOR CALIBRATION AND ERROR DETECTION
US8766803B2 (en) * 2011-05-13 2014-07-01 Roche Diagnostics Operations, Inc. Dynamic data collection
US8755938B2 (en) 2011-05-13 2014-06-17 Roche Diagnostics Operations, Inc. Systems and methods for handling unacceptable values in structured collection protocols
WO2013066849A1 (en) 2011-10-31 2013-05-10 Abbott Diabetes Care Inc. Model based variable risk false glucose threshold alarm prevention mechanism
WO2013066873A1 (en) 2011-10-31 2013-05-10 Abbott Diabetes Care Inc. Electronic devices having integrated reset systems and methods thereof
US9980669B2 (en) 2011-11-07 2018-05-29 Abbott Diabetes Care Inc. Analyte monitoring device and methods
US8710993B2 (en) 2011-11-23 2014-04-29 Abbott Diabetes Care Inc. Mitigating single point failure of devices in an analyte monitoring system and methods thereof
US9317656B2 (en) 2011-11-23 2016-04-19 Abbott Diabetes Care Inc. Compatibility mechanisms for devices in a continuous analyte monitoring system and methods thereof
WO2013078426A2 (en) 2011-11-25 2013-05-30 Abbott Diabetes Care Inc. Analyte monitoring system and methods of use
US9734304B2 (en) 2011-12-02 2017-08-15 Lumiradx Uk Ltd Versatile sensors with data fusion functionality
US9700222B2 (en) 2011-12-02 2017-07-11 Lumiradx Uk Ltd Health-monitor patch
FI3300658T3 (en) 2011-12-11 2024-03-01 Abbott Diabetes Care Inc Analyte sensor methods
WO2013090791A1 (en) 2011-12-15 2013-06-20 Becton, Dickinson And Company Near field telemetry link for passing a shared secret to establish a secure radio frequency communication link in a physiological condition monitoring system
WO2013102158A1 (en) * 2011-12-30 2013-07-04 Abbott Diabetes Care Inc. Method and apparatus for determining medication dose information
JP6046116B2 (en) * 2012-03-27 2016-12-14 テルモ株式会社 Analytical monitoring system and monitoring method
US9180242B2 (en) 2012-05-17 2015-11-10 Tandem Diabetes Care, Inc. Methods and devices for multiple fluid transfer
US9238100B2 (en) 2012-06-07 2016-01-19 Tandem Diabetes Care, Inc. Device and method for training users of ambulatory medical devices
EP3395252A1 (en) 2012-08-30 2018-10-31 Abbott Diabetes Care, Inc. Dropout detection in continuous analyte monitoring data during data excursions
US9968306B2 (en) 2012-09-17 2018-05-15 Abbott Diabetes Care Inc. Methods and apparatuses for providing adverse condition notification with enhanced wireless communication range in analyte monitoring systems
US20140088372A1 (en) * 2012-09-25 2014-03-27 Google Inc. Information processing method
US9907492B2 (en) 2012-09-26 2018-03-06 Abbott Diabetes Care Inc. Method and apparatus for improving lag correction during in vivo measurement of analyte concentration with analyte concentration variability and range data
WO2014055718A1 (en) 2012-10-04 2014-04-10 Aptima, Inc. Clinical support systems and methods
US10067054B2 (en) 2012-10-16 2018-09-04 K Sciences Gp, Llc Simple sugar concentration sensor and method
EP2908718A4 (en) * 2012-10-16 2016-07-13 Night Sense Ltd Comfortable and personalized monitoring device, system, and method for detecting physiological health risks
US9119528B2 (en) 2012-10-30 2015-09-01 Dexcom, Inc. Systems and methods for providing sensitive and specific alarms
US9486578B2 (en) * 2012-12-07 2016-11-08 Animas Corporation Method and system for tuning a closed-loop controller for an artificial pancreas
US9173998B2 (en) 2013-03-14 2015-11-03 Tandem Diabetes Care, Inc. System and method for detecting occlusions in an infusion pump
US9474475B1 (en) 2013-03-15 2016-10-25 Abbott Diabetes Care Inc. Multi-rate analyte sensor data collection with sample rate configurable signal processing
WO2014152034A1 (en) 2013-03-15 2014-09-25 Abbott Diabetes Care Inc. Sensor fault detection using analyte sensor data pattern comparison
US10433773B1 (en) 2013-03-15 2019-10-08 Abbott Diabetes Care Inc. Noise rejection methods and apparatus for sparsely sampled analyte sensor data
US20160021425A1 (en) * 2013-06-26 2016-01-21 Thomson Licensing System and method for predicting audience responses to content from electro-dermal activity signals
US9867937B2 (en) 2013-09-06 2018-01-16 Tandem Diabetes Care, Inc. System and method for mitigating risk in automated medicament dosing
WO2015073459A1 (en) * 2013-11-14 2015-05-21 Dexcom, Inc. Devices and methods for continuous analyte monitoring
US20150173674A1 (en) * 2013-12-20 2015-06-25 Diabetes Sentry Products Inc. Detecting and communicating health conditions
CA2933166C (en) 2013-12-31 2020-10-27 Abbott Diabetes Care Inc. Self-powered analyte sensor and devices using the same
US20150269355A1 (en) * 2014-03-19 2015-09-24 Peach Intellihealth, Inc. Managing allocation of health-related expertise and resources
EP4151150A1 (en) 2014-03-30 2023-03-22 Abbott Diabetes Care, Inc. Method and apparatus for determining meal start and peak events in analyte monitoring systems
US9669160B2 (en) 2014-07-30 2017-06-06 Tandem Diabetes Care, Inc. Temporary suspension for closed-loop medicament therapy
US10120979B2 (en) * 2014-12-23 2018-11-06 Cerner Innovation, Inc. Predicting glucose trends for population management
US10213139B2 (en) 2015-05-14 2019-02-26 Abbott Diabetes Care Inc. Systems, devices, and methods for assembling an applicator and sensor control device
WO2016183493A1 (en) 2015-05-14 2016-11-17 Abbott Diabetes Care Inc. Compact medical device inserters and related systems and methods
US10646650B2 (en) 2015-06-02 2020-05-12 Illinois Institute Of Technology Multivariable artificial pancreas method and system
WO2017011346A1 (en) 2015-07-10 2017-01-19 Abbott Diabetes Care Inc. System, device and method of dynamic glucose profile response to physiological parameters
US11464456B2 (en) 2015-08-07 2022-10-11 Aptima, Inc. Systems and methods to support medical therapy decisions
US11426100B1 (en) * 2015-12-08 2022-08-30 Socrates Health Solutions, Inc. Blood glucose trend meter
US10569016B2 (en) 2015-12-29 2020-02-25 Tandem Diabetes Care, Inc. System and method for switching between closed loop and open loop control of an ambulatory infusion pump
GB201601140D0 (en) 2016-01-21 2016-03-09 Oxehealth Ltd Method and apparatus for estimating heart rate
GB201601143D0 (en) 2016-01-21 2016-03-09 Oxehealth Ltd Method and apparatus for health and safety monitoring of a subject in a room
GB201601217D0 (en) * 2016-01-22 2016-03-09 Oxehealth Ltd Signal processing method and apparatus
US10575790B2 (en) 2016-03-02 2020-03-03 Roche Diabetes Care, Inc. Patient diabetes monitoring system with clustering of unsupervised daily CGM profiles (or insulin profiles) and method thereof
US10478556B2 (en) 2016-03-04 2019-11-19 Roche Diabetes Care, Inc. Probability based controller gain
US9918128B2 (en) * 2016-04-08 2018-03-13 Orange Content categorization using facial expression recognition, with improved detection of moments of interest
US10311976B2 (en) 2016-04-28 2019-06-04 Roche Diabetes Care, Inc. Bolus calculator with probabilistic carbohydrate measurements
US10888281B2 (en) 2016-05-13 2021-01-12 PercuSense, Inc. System and method for disease risk assessment and treatment
US10297350B2 (en) 2016-06-01 2019-05-21 Roche Diabetes Care, Inc. Risk-based control-to-range
US10332632B2 (en) 2016-06-01 2019-06-25 Roche Diabetes Care, Inc. Control-to-range failsafes
US10332633B2 (en) 2016-06-01 2019-06-25 Roche Diabetes Care, Inc. Control-to-range aggressiveness
GB201615899D0 (en) 2016-09-19 2016-11-02 Oxehealth Ltd Method and apparatus for image processing
US10885349B2 (en) 2016-11-08 2021-01-05 Oxehealth Limited Method and apparatus for image processing
US10956821B2 (en) 2016-11-29 2021-03-23 International Business Machines Corporation Accurate temporal event predictive modeling
US10783801B1 (en) 2016-12-21 2020-09-22 Aptima, Inc. Simulation based training system for measurement of team cognitive load to automatically customize simulation content
CN110461217B (en) 2017-01-23 2022-09-16 雅培糖尿病护理公司 Systems, devices, and methods for analyte sensor insertion
US11596330B2 (en) 2017-03-21 2023-03-07 Abbott Diabetes Care Inc. Methods, devices and system for providing diabetic condition diagnosis and therapy
GB201706449D0 (en) 2017-04-24 2017-06-07 Oxehealth Ltd Improvements in or realting to in vehicle monitoring
US10692065B2 (en) * 2017-06-19 2020-06-23 Accenture Global Solutions Limited Using a mixture model to generate simulated transaction information
EP3642789A4 (en) * 2017-06-20 2021-01-27 Chan, Sidney Soong-Ling Method and system for monitoring a diabetes treatment plan
US11331019B2 (en) 2017-08-07 2022-05-17 The Research Foundation For The State University Of New York Nanoparticle sensor having a nanofibrous membrane scaffold
KR102003667B1 (en) * 2017-08-21 2019-07-25 포항공과대학교 산학협력단 Apparatus, method, and program for predicting hypoglycemia, and apparatus, method, and program for generating hypoglycemia prediction model
US20190120785A1 (en) 2017-10-24 2019-04-25 Dexcom, Inc. Pre-connected analyte sensors
US11331022B2 (en) 2017-10-24 2022-05-17 Dexcom, Inc. Pre-connected analyte sensors
US11471082B2 (en) 2017-12-13 2022-10-18 Medtronic Minimed, Inc. Complex redundancy in continuous glucose monitoring
US11213230B2 (en) * 2017-12-13 2022-01-04 Medtronic Minimed, Inc. Optional sensor calibration in continuous glucose monitoring
JP2021511094A (en) 2018-01-23 2021-05-06 デックスコム・インコーポレーテッド Systems, devices and methods for compensating for temperature effects on sensors
WO2019145791A1 (en) 2018-01-29 2019-08-01 Stratuscent Inc. Chemical sensing system
KR102511670B1 (en) * 2018-02-01 2023-03-21 삼성전자주식회사 Electric device for sensing biometric information and controlling method thereof
GB201803508D0 (en) 2018-03-05 2018-04-18 Oxehealth Ltd Method and apparatus for monitoring of a human or animal subject
US11224693B2 (en) 2018-10-10 2022-01-18 Tandem Diabetes Care, Inc. System and method for switching between medicament delivery control algorithms
US10891551B2 (en) * 2018-10-30 2021-01-12 ICE Benchmark Administration Limited Projecting data trends using customized modeling
GB201900034D0 (en) 2019-01-02 2019-02-13 Oxehealth Ltd Method and apparatus for monitoring of a human or animal subject
GB201900032D0 (en) 2019-01-02 2019-02-13 Oxehealth Ltd Method and apparatus for monitoring of a human or animal subject
GB201900033D0 (en) 2019-01-02 2019-02-13 Oxehealth Ltd Mrthod and apparatus for monitoring of a human or animal subject
WO2020170036A1 (en) 2019-02-22 2020-08-27 Stratuscent Inc. Systems and methods for learning across multiple chemical sensing units using a mutual latent representation
USD1002852S1 (en) 2019-06-06 2023-10-24 Abbott Diabetes Care Inc. Analyte sensor device
WO2021034784A1 (en) * 2019-08-16 2021-02-25 Poltorak Technologies, LLC Device and method for medical diagnostics
WO2021076984A1 (en) * 2019-10-18 2021-04-22 The Texas A & M University System Glucose prediction systems and associated methods
US20210396592A1 (en) * 2020-06-22 2021-12-23 DataGarden, Inc. Method and Apparatus for Non-Contact Temperature Measurement and Analysis for Detection of Symptomatic Conditions
USD999913S1 (en) 2020-12-21 2023-09-26 Abbott Diabetes Care Inc Analyte sensor inserter

Citations (8)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
WO1991012772A1 (en) 1990-02-23 1991-09-05 Cygnus Therapeutic Systems Ultrasound enhanced delivery of materials through skin
DE4221848A1 (en) * 1992-07-03 1994-01-05 Eckard Dr Salzsieder Automatic in situ calibration of in vivo glucose sensors - by comparing measured value with reference signal from independent model, calculating quality control values and correcting sensor signal if these exceed specified limits
WO1997038126A1 (en) 1996-04-05 1997-10-16 Mercury Diagnostics, Inc. Methods and devices for determination of an analyte in body fluid
WO1997039341A1 (en) * 1996-04-15 1997-10-23 Solid State Farms, Inc. Improving radio frequency spectral analysis for in vitro or in vivo environments
WO1997042888A1 (en) 1996-05-17 1997-11-20 Mercury Diagnostics Inc. Blood and interstitial fluid sampling device
WO1997043962A1 (en) 1996-05-17 1997-11-27 Mercury Diagnostics, Inc. Methods and apparatus for expressing body fluid from an incision
WO1999058973A1 (en) * 1998-05-13 1999-11-18 Cygnus, Inc. Method and device for predicting physiological values
US6023629A (en) * 1994-06-24 2000-02-08 Cygnus, Inc. Method of sampling substances using alternating polarity of iontophoretic current

Family Cites Families (19)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US4509531A (en) * 1982-07-28 1985-04-09 Teledyne Industries, Inc. Personal physiological monitor
US5362307A (en) * 1989-01-24 1994-11-08 The Regents Of The University Of California Method for the iontophoretic non-invasive-determination of the in vivo concentration level of an inorganic or organic substance
WO1989006989A1 (en) * 1988-01-29 1989-08-10 The Regents Of The University Of California Iontophoretic non-invasive sampling or delivery device
US5144869A (en) * 1992-03-09 1992-09-08 Jessie Chow Control device for ratchet wrenches
CA2226176C (en) 1995-07-12 2003-09-16 Cygnus, Inc. Hydrogel patch
US5735273A (en) * 1995-09-12 1998-04-07 Cygnus, Inc. Chemical signal-impermeable mask
JP3316820B2 (en) * 1995-12-28 2002-08-19 シィグナス インコーポレィティド Apparatus and method for continuous monitoring of a physiological analyte of a subject
US5747806A (en) * 1996-02-02 1998-05-05 Instrumentation Metrics, Inc Method and apparatus for multi-spectral analysis in noninvasive nir spectroscopy
US5954685A (en) * 1996-05-24 1999-09-21 Cygnus, Inc. Electrochemical sensor with dual purpose electrode
US5760714A (en) 1996-11-20 1998-06-02 Motorola, Inc. Interrupt-driven keypad scanning method and apparatus
DE19652596C2 (en) * 1996-12-18 1999-02-25 Heraeus Electro Nite Int Method and immersion probe for measuring electrochemical activity
JP3057019B2 (en) * 1997-01-24 2000-06-26 キヤノン株式会社 Component selection device and component selection system with CAD function
US6139718A (en) * 1997-03-25 2000-10-31 Cygnus, Inc. Electrode with improved signal to noise ratio
WO1999058050A1 (en) * 1998-05-13 1999-11-18 Cygnus, Inc. Signal processing for measurement of physiological analytes
EP1077634B1 (en) * 1998-05-13 2003-07-30 Cygnus, Inc. Monitoring of physiological analytes
WO1999058190A1 (en) 1998-05-13 1999-11-18 Cygnus, Inc. Collection assemblies for transdermal sampling system
JPH11328689A (en) * 1998-05-21 1999-11-30 Samsung Electronics Co Ltd Seek control method in reproduction device of disk-shaped storage medium
DE69908602T2 (en) * 1998-09-30 2004-06-03 Cygnus, Inc., Redwood City METHOD AND DEVICE FOR PREDICTING PHYSIOLOGICAL MEASUREMENTS
US6180416B1 (en) * 1998-09-30 2001-01-30 Cygnus, Inc. Method and device for predicting physiological values

Patent Citations (13)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US5636632A (en) 1990-02-23 1997-06-10 Cygnus, Inc. Ultrasound-enhanced sampling of materials through the skin
WO1991012772A1 (en) 1990-02-23 1991-09-05 Cygnus Therapeutic Systems Ultrasound enhanced delivery of materials through skin
DE4221848A1 (en) * 1992-07-03 1994-01-05 Eckard Dr Salzsieder Automatic in situ calibration of in vivo glucose sensors - by comparing measured value with reference signal from independent model, calculating quality control values and correcting sensor signal if these exceed specified limits
US5792668A (en) * 1993-08-06 1998-08-11 Solid State Farms, Inc. Radio frequency spectral analysis for in-vitro or in-vivo environments
US6023629A (en) * 1994-06-24 2000-02-08 Cygnus, Inc. Method of sampling substances using alternating polarity of iontophoretic current
WO1997038126A1 (en) 1996-04-05 1997-10-16 Mercury Diagnostics, Inc. Methods and devices for determination of an analyte in body fluid
WO1997039341A1 (en) * 1996-04-15 1997-10-23 Solid State Farms, Inc. Improving radio frequency spectral analysis for in vitro or in vivo environments
WO1997042882A1 (en) 1996-05-17 1997-11-20 Mercury Diagnostics, Inc. Methods and apparatus for sampling and analyzing body fluid
WO1997042885A1 (en) 1996-05-17 1997-11-20 Mercury Diagnostics, Inc. Methods and apparatus for sampling body fluid
WO1997043962A1 (en) 1996-05-17 1997-11-27 Mercury Diagnostics, Inc. Methods and apparatus for expressing body fluid from an incision
WO1997042886A1 (en) 1996-05-17 1997-11-20 Mercury Diagnostics, Inc. Body fluid sampling device and methods of use
WO1997042888A1 (en) 1996-05-17 1997-11-20 Mercury Diagnostics Inc. Blood and interstitial fluid sampling device
WO1999058973A1 (en) * 1998-05-13 1999-11-18 Cygnus, Inc. Method and device for predicting physiological values

Cited By (45)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US7011630B2 (en) 2001-06-22 2006-03-14 Animas Technologies, Llc Methods for computing rolling analyte measurement values, microprocessors comprising programming to control performance of the methods, and analyte monitoring devices employing the methods
US7699775B2 (en) 2001-06-22 2010-04-20 Animas Technologies, Llc Methods for estimating analyte-related signals, microprocessors comprising programming to control performance of the methods, and analyte monitoring devices employing the methods
US7519478B2 (en) 2002-03-22 2009-04-14 Animas Technologies, Llc Microprocessors, devices and methods for use in analyte monitoring systems
WO2003082098A2 (en) 2002-03-22 2003-10-09 Cygnus, Inc. Improving performance of an analyte monitoring device
US7711493B2 (en) 2002-03-22 2010-05-04 Animas Corporation Micropressors, devices and methods for use in analyte monitoring systems
US7523004B2 (en) 2002-03-22 2009-04-21 Animas Technologies, Llc Micropressors, devices and methods for use in analyte monitoring systems
EP2270696A3 (en) * 2002-06-05 2011-04-06 Diabetes Diagnostics, Inc. Analyte testing device
EP2327359A1 (en) * 2002-08-13 2011-06-01 University Of Virginia Patent Foundation Method, system, and computer program product for processing of self-monitoring blood glucose (smbg) data to enhance diabetic self-management
JP2006501477A (en) * 2002-10-01 2006-01-12 ヒーモスコープ コーポレイション Method and apparatus for hemostasis and blood treatment
US7252090B2 (en) 2003-09-15 2007-08-07 Medtronic, Inc. Selection of neurostimulator parameter configurations using neural network
US10524669B2 (en) 2003-10-13 2020-01-07 Novo Nordisk A/S Apparatus and method for determining a physiological condition
WO2005037092A1 (en) * 2003-10-13 2005-04-28 Novo Nordisk A/S Apparatus and method for determining a physiological condition
US11638541B2 (en) 2003-12-09 2023-05-02 Dexconi, Inc. Signal processing for continuous analyte sensor
US10898113B2 (en) 2003-12-09 2021-01-26 Dexcom, Inc. Signal processing for continuous analyte sensor
EP3263032A1 (en) * 2003-12-09 2018-01-03 Dexcom, Inc. Signal processing for continuous analyte sensor
US7650244B2 (en) 2004-04-24 2010-01-19 Roche Diagnostics Operations, Inc. Method and device for monitoring analyte concentration by determining its progression in the living body of a human or animal
US8734347B2 (en) 2005-12-03 2014-05-27 Roche Diagnostics Operations, Inc. Analytical method and investigation system
WO2007062755A1 (en) * 2005-12-03 2007-06-07 Roche Diagnostics Gmbh Evaluation method and investigation system
EP1793321A1 (en) 2005-12-03 2007-06-06 Roche Diagnostics GmbH Evaluation method and analysis system of an analyte in the bodily fluid of a human or animal
US8311636B2 (en) 2006-04-28 2012-11-13 Medtronic, Inc. Tree-based electrical stimulator programming
US8306624B2 (en) 2006-04-28 2012-11-06 Medtronic, Inc. Patient-individualized efficacy rating
US7801619B2 (en) 2006-04-28 2010-09-21 Medtronic, Inc. Tree-based electrical stimulator programming for pain therapy
US8380300B2 (en) 2006-04-28 2013-02-19 Medtronic, Inc. Efficacy visualization
US7706889B2 (en) 2006-04-28 2010-04-27 Medtronic, Inc. Tree-based electrical stimulator programming
US7715920B2 (en) 2006-04-28 2010-05-11 Medtronic, Inc. Tree-based electrical stimulator programming
GB2443434A (en) * 2006-11-02 2008-05-07 Richard Butler Method for predicting nocturnal hypoglycaemia
US9629548B2 (en) 2006-12-27 2017-04-25 Cardiac Pacemakers, Inc. Within-patient algorithm to predict heart failure decompensation
US8456309B2 (en) 2006-12-27 2013-06-04 Cardiac Pacemakers, Inc. Within-patient algorithm to predict heart failure decompensation
US20080234992A1 (en) * 2007-03-20 2008-09-25 Pinaki Ray Systems and methods for pattern recognition in diabetes management
US8758245B2 (en) 2007-03-20 2014-06-24 Lifescan, Inc. Systems and methods for pattern recognition in diabetes management
EP2400416A3 (en) * 2007-03-20 2013-07-17 LifeScan, Inc. Systems and methods for pattern recognition in diabetes management
EP2144066A4 (en) * 2007-04-27 2013-04-17 Arkray Inc Measurement device
EP2144066A1 (en) * 2007-04-27 2010-01-13 Arkray, Inc. Measurement device
EP2368497A1 (en) 2010-03-26 2011-09-28 Sysmex Corporation Diagnosis support method, diagnosis support system, and diagnosis support apparatus
US8916109B2 (en) 2010-03-26 2014-12-23 Sysmex Corporation Diagnosis support method, diagnosis support system, and diagnosis support apparatus
US9351670B2 (en) 2012-12-31 2016-05-31 Abbott Diabetes Care Inc. Glycemic risk determination based on variability of glucose levels
US10383580B2 (en) 2012-12-31 2019-08-20 Abbott Diabetes Care Inc. Analysis of glucose median, variability, and hypoglycemia risk for therapy guidance
US10010291B2 (en) 2013-03-15 2018-07-03 Abbott Diabetes Care Inc. System and method to manage diabetes based on glucose median, glucose variability, and hypoglycemic risk
US10672509B2 (en) 2013-06-26 2020-06-02 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US11361857B2 (en) 2013-06-26 2022-06-14 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US11521727B2 (en) 2013-06-26 2022-12-06 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US11538582B2 (en) 2013-06-26 2022-12-27 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US9824190B2 (en) 2013-06-26 2017-11-21 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US11651845B2 (en) 2013-06-26 2023-05-16 WellDoc, Inc. Systems and methods for creating and selecting models for predicting medical conditions
US11488038B2 (en) 2019-03-29 2022-11-01 Sony Network Communications Europe B.V. Method and device for monitoring

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