Claims
- 1. A method for continually or continuously measuring an analyte present in a biological system, said method comprising:
(a) transdermally extracting the analyte from the biological system using a sampling system that is in operative contact with a skin or mucosal surface of said biological system; (b) obtaining a raw signal from the extracted analyte, wherein said raw signal is specifically related to the analyte; (c) performing a calibration step which correlates the raw signal obtained in step (b) with a measurement value indicative of the concentration of analyte present in the biological system at the time of extraction; (d) repeating steps (a)-(b) to obtain 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 biological system to provide for a continual or continuous analyte measurement; and (e) predicting a measurement value based on the series of measurement values using the Mixtures of Experts algorithm, where the individual experts have a linear form 23An=∑i=1nAniwi(1)wherein (An) is an analyte of interest, n is the number of experts, Ani is the analyte predicted by Expert i; and wi is a parameter, and the individual experts Ani are further defined by the expression shown as Equation (2) 24Ani=∑j=1maijPj+zi(2)wherein, Ani is the analyte predicted by Expert i; Pj is one of m parameters, m is typically less than 100; aij are coefficients; and zi is a constant; and further where the weighting value, wi, is defined by the formula shown as Equation (3) 25wi=ⅇdi[∑k=1nⅇdk](3)where e refers to the exponential function and the dk (note that the di in the numerator of Equation 3 is one of the dk) are a parameter set analogous to Equation 2 that is used to determine the weights wi. The dk are given by Equation 4 26dk=∑j=1mαjkPj+ωk(4)where αjk is a coefficient, Pj is one of m parameters, and where ωk is a constant.
- 2. The method of claim 1, wherein the analyte is extracted from the biological system in step (a) into a collection reservoir to obtain a concentration of the analyte in said reservoir.
- 3. The method of claim 2, wherein the collection reservoir is in contact with the skin or mucosal surface of the biological system and the analyte is extracted using an iontophoretic current applied to said skin or mucosal surface.
- 4. The method of claim 3, wherein the collection reservoir contains an enzyme that reacts with the extracted analyte to produce an electrochemically detectable signal.
- 5. The method of claim 4, wherein the analyte is glucose.
- 6. The method of claim 5, wherein the enzyme is glucose oxidase.
- 7. The method of claim 1, wherein the prediction of step (e) is carried out using said series of two or more measurement values in an algorithm represented by the Mixtures of Experts algorithm, where the individual experts have a linear form
- 8. The method of claim 1, wherein the prediction of step (e) is carried out using said series of two or more measurement values in an algorithm represented by the Mixtures of Experts algorithm, where the individual experts have a linear form
- 9. The method of either of claim 7 or claim 8, which includes further parameters for measurement values selected from the group consisting of temperature, ionophoretic voltage, and skin conductivity.
- 10. A method for measuring blood glucose in a subject, said method comprising:
(a) obtaining a raw signal from a sensing apparatus, wherein said raw signal is specifically related to the glucose detected by the sensing apparatus; (b) performing a calibration step which correlates the raw signal obtained in step (a) with a measurement value indicative of the subject's blood glucose concentration; (c) repeating step (a) to obtain a series of measurement values at selected time intervals; and (d) predicting a measurement value using the Mixtures of Experts algorithm, where the individual experts have a linear form: 29An=∑i=1nAniwi(1)wherein (An) is blood glucose value, n is the number of experts, Ani is the blood glucose value predicted by Expert i; and wi is a parameter, and the individual experts Ani are further defined by the expression shown as Equation (2) 30Ani=∑j=1maijPj+zi(2)wherein, Ani is the blood glucose value predicted by Expert i; Pj is one of m parameters, m is typically less than 100; aij are coefficients; and zi is a constant; and further where the weighting value, wi, is defined by the formula shown as Equation (3), 31wi=ⅇdi[∑k=1n ⅇdk](3)where e refers to the exponential function and the dk (note that the di in the numerator of Equation 3 is one of the dk) are a parameter set analogous to Equation 2 that is used to determine the weights wi. The dk are given by Equation 4 32dk=∑j=1m αjkPj+ωk(4)where αjk is a coefficient, Pj is one of m parameters, and where ωk is a constant.
- 11. The method of claim 10, where in said Mixtures of Experts algorithm, the individual experts have a linear form
- 12. The method of claim 10, where in said Mixtures of Experts algorithm, the individual experts have a linear form
- 13. The method of either claim 11 or claim 12, wherein the sensing apparatus is a near-IR spectrometer.
- 14. The method of either claim 11 or claim 12, wherein the sensing means comprises a biosensor having an electrochemical sensing element.
- 15. A monitoring system for continually or continuously measuring an analyte present in a biological system, said system comprising, in operative combination:
(a) sampling means for continually or continuously extracting the analyte from the biological system, wherein said sampling means is adapted for extracting the analyte across a skin or mucosal surface of said biological system; (b) sensing means in operative contact with the analyte extracted by the sampling means, wherein said sensing means obtains a raw signal from the extracted analyte and said raw signal is specifically related to the analyte; and (c) microprocessor means in operative communication with the sampling means and the sensing means, wherein said microprocessor means (i) is used to control the sampling means and the sensing means to obtain a series of raw signals at selected time intervals during a continual or continuous measurement period, (ii) correlate the raw signals with measurement values indicative of the concentration of analyte present in the biological system, and (iii) predict a measurement value using the Mixtures of Experts algorithm, where the individual experts have a linear form 35An=∑i=1n Aniwi(1)wherein (An) is an analyte of interest, n is the number of experts, Ani is the analyte predicted by Expert i; and wi is a parameter, and the individual experts Ani are further defined by the expression shown as Equation (2) 36Ani=∑j=1m aijPj+zi(2)wherein, Ani is the analyte predicted by Expert i; Pj is one of m parameters, m is typically less than 100; aij are coefficients; and zi is a constant; and further where the weighting value, wi, is defined by the formula shown as Equation (3) 37wi=ⅇdi[∑k=1n ⅇdk](3)where e refers to the exponential function and the dk (note that the di in the numerator of Equation 3 is one of the dk) are a parameter set analogous to Equation 2 that is used to determine the weights wi. The dk are given by Equation 4 38dk=∑j=1m αjkPj+ωk(4)where αjk is a coefficient, Pj is one of m parameters, and where ωk is a constant.
- 16. The monitoring system of claim 15, wherein the sampling means includes one or more collection reservoirs for containing the extracted analyte.
- 17. The monitoring system of claim 16, wherein the sampling means uses an iontophoretic current to extract the analyte from the biological system.
- 18. The monitoring system of claim 17, wherein the collection reservoir contains an enzyme that reacts with the extracted analyte to produce an electrochemically detectable signal.
- 19. The monitoring system of claim 18, wherein the analyte is glucose and the enzyme is glucose oxidase.
- 20. A monitoring system for measuring blood glucose in a subject, said system comprising, in operative combination:
(a) sensing means in operative contact with the subject or with a glucose-containing sample extracted from the subject, wherein said sensing means obtains a raw signal specifically related to blood glucose in the subject; and (b) microprocessor means in operative communication with the sensing means, wherein said microprocessor means (i) is used to control the sensing means to obtain a series of raw signals at selected time intervals, (ii) correlates the raw signals with measurement values indicative of the concentration of blood glucose present in the subject, and (iii) predicts a measurement value at a further time interval using the Mixtures of Experts algorithm, where the individual experts have a linear form BG=w1BG1+w2BG2+w3BG3 (5) wherein (BG) is blood glucose, there are three experts (n=3) and BGi is the analyte predicted by Expert i; wi is a parameter, and the individual Experts BGi are further defined by the expression shown as Equations 6, 7, and 8 BG1=p1(time)+q1(active)+r1(signal)+s1(BG|cp)+t1 (6) BG2=p2(time)+q2(active)+r2(signal)+s2(BG|cp)+t2 (7) BG3=p3(time)+q3(active)+r3(signal)+s3(BG|cp)+t3 (8) wherein, BGi is the analyte predicted by Expert i; parameters include, time (elapsed time since the sampling system was placed in operative contact with said biological system), active (active signal), signal (calibrated signal), and BG/cp (blood glucose value at a calibration point); pi, qi, ri, and si are coefficients; and ti is a constant; and further where the weighting value, wi, is defined by the formulas shown as Equations 9, 10, and 11 39w1=ⅇd1ⅇd1+ⅇd2+ⅇd3(9)w2=ⅇd2ⅇd1+ⅇd2+ⅇd3(10)w3=ⅇd3ⅇd1+ⅇd2+ⅇd3(11)where e refers to the exponential function and di is a parameter set (analogous to Equations 6, 7, and 8) that are used to determine the weights wi, given by Equations 9, 10, and 11, and d1=τ1(time)+β1(active)+γ1(signal)+δ1(BG|cp)+∈1 (12) d2=τ2(time)+β2(active)+γ2(signal)+δ2(BG|cp)+∈2 (13) d3=τ3(time)+β3(active)+γ3(signal)+δ3(BG|cp)+∈3 (14) where τi, βi, γi and δi are coefficients, and where ∈i is a constant.
- 21. A monitoring system for measuring blood glucose in a subject, said system comprising, in operative combination:
(a) sensing means in operative contact with the subject or with a glucose-containing sample extracted from the subject, wherein said sensing means obtains a raw signal specifically related to blood glucose in the subject; and (b) microprocessor means in operative communication with the sensing means, wherein said microprocessor means (i) is used to control the sensing means to obtain a series of raw signals at selected time intervals, (ii) correlates the raw signals with measurement values indicative of the concentration of blood glucose present in the subject, and (iii) predicts a measurement value at a further time interval using the Mixtures of Experts algorithm, where the individual experts have a linear form BG=w1BG1+w2BG2+w3BG3 (15) wherein (BG) is blood glucose, there are three experts (n=3) and BGi is the analyte predicted by Expert i; wi is a parameter, and the individual Experts BGi are further defined by the expression shown as Equations 16, 17, and 18 BG1=p1(timec)+q1(active)+r1(signal)+s1(BG|cp)+t1 (16) BG2=p2(timec)+q2(active)+r2(signal)+s2(BG|cp)+t2 (17) BG3=p3(timec)+q3(active)+r3(signal)+s3(BG|cp)+t3 (18) wherein, BGi is the analyte predicted by Expert i; parameters include, timec (elapsed time from a calibration of said sampling system), active (active signal), signal (calibrated signal), and BG/cp (blood glucose value at a calibration point); pi, qi, ri, and si are coefficients; and ti is a constant; and further where the weighting value, wi, is defined by the formulas shown as Equations 19, 20, and 21 40w1=ⅇd1ⅇd1+ⅇd2+ⅇd3(19)w2=ⅇd2ⅇd1+ⅇd2+ⅇd3(20)w3=ⅇd3ⅇd1+ⅇd2+ⅇd3(21)where e refers to the exponential function and di is a parameter set (analogous to Equations 6, 7, and 8) that are used to determine the weights wi, given by Equations 19, 20, and 21, and d1τ1(timec)+β1(active)+γ1(signal)+δ1(BG|cp)+∈1 (22) d2τ2(timec)+β2(active)+γ2(signal)+δ2(BG|cp)+∈2 (23) d3τ3(timec)+β3(active)+γ3(signal)+δ3(BG|cp)+∈3 (24) where τi, βi, γi and δi are coefficients, and where ∈i is a constant.
- 22. The monitoring system of either claim 20 or claim 21, which includes further parameters for raw signals selected from the group consisting of temperature, ionophoretic voltage, and skin conductivity.
- 23. The monitoring system of either claim 20 or claim 21, wherein the sensing means comprises a biosensor having an electrochemical sensing element.
- 24. The monitoring system of either claim 20 or claim 21, wherein the sensing means comprises a near-IR spectrometer.
CROSS-REFERENCE TO RELATED APPLICATIONS
[0001] This application is a continuation-in-part of U.S. patent application Ser. No. 09/241,929, filed Feb. 1, 1999, which is a continuation-in-part of U.S. patent application Ser. No. 09/198,039, filed Nov. 23, 1998, which is a continuation-in-part of U.S. patent application Ser. No. 09/163,856, filed Sep. 30, 1998, all applications are herein incorporated by reference in their entireties.
Continuations (2)
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Continuation in Parts (3)
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