Tracking the Probability for Imminent Hypoglycemia in Diabetes From Self-Monitoring Blood Glucose (SMBG) Data

التفاصيل البيبلوغرافية
العنوان: Tracking the Probability for Imminent Hypoglycemia in Diabetes From Self-Monitoring Blood Glucose (SMBG) Data
Document Number: 20120191361
تاريخ النشر: July 26, 2012
Appl. No: 13/394091
Application Filed: September 02, 2010
مستخلص: A method, system and related computer program product for tracking the probability of hypoglycemia from routine self-monitoring of blood glucose (SMBG) data in patients with diabetes. A specific bivariate probability distribution of low BG events based jointly on the Low BG Index (LBGI) and the Average Daily Risk Range (ADRR) is used to predict hypoglycemia probability of occurrence from inputted SMBG data. The SMBG data is retrieved from a series of SMBG data of a patient available from the patient's glucose meter and allows tracking of the probability for future hypoglycemia over a predetermined duration, e.g., a 24 or 48 hour period. The tracking includes presentation of visual and/or numerical output, as we construction of hypoglycemia risk trajectories that would enable warning messages for crossing of predefined thresholds, such as 50% likelihood for upcoming hypoglycemia below 50 mg/dl.
Inventors: Kovatchev, Boris P. (Charlottesville, VA, US); Breton, Marc D. (Charlottesville, VA, US)
Assignees: UNIVERSITY OF VIRGINIA PATENT FOUNDATION (Charlottesville, VA, US)
Claim: 1. A method for monitoring the probability of occurrence of a hypoglycemic event in a patient within a predetermined future period of time, comprising: creating in a processor a bivariate distribution that maps probability for upcoming hypoglycemia jointly to values of a function measuring glycemic variability and a function measuring low blood glucose (BG), each of said functions being based on self-monitoring blood glucose (SMBG) readings obtained from the patient; optimizing in said processor the bivariate distribution to achieve prediction of a predetermined percentage of hypoglycemic events below a predetermined BG value occurring within a predetermined future time period; tracking in said processor the optimized distribution over time using routine SMBG readings from the patient; and outputting via said processor a message to said patient when said optimized distribution indicates a certain probability for the occurrence of a hypoglycemic event in said patient within said predetermined future time period, based on SMBG data obtained from said patient.
Claim: 2. The method of claim 1, wherein the function measuring glycemic variability is Average Daily Risk Range (ADRR).
Claim: 3. The method of claim 2, wherein [mathematical expression included] LRi=max(rl(x1i), rl(x2i), . . . , rl(xni)) and HRi=max(rh(x1i), rh(x2i), . . . , rh(xni)) for day # i; i=1, 2, . . . M; x1M, x2M, . . . xnM are a series of nM SMBG readings (BG) taken on Day M; rl(BG)=r(BG) if f(BG)<0 and 0 otherwise; rh(BG)=r(BG) if f(BG)>0 and 0 otherwise; r(BG)=10f(BG)2; f(BG,α,β)=[(ln(BG))α−β], α, β>0.
Claim: 4. The method of claim 1, wherein the function measuring low blood glucose is Low Blood Glucose Index (LBGI).
Claim: 5. The method of claim 4, wherein [mathematical expression included] x1M, x2M, . . . xnM are a series of nM SMBG readings (BG) taken on Day M; rl(BG)=r(BG) if f(BG)<0 and 0 otherwise; r(BG)=10f(BG)2; f(BG,α,β)=[(ln(BG))α−β], α, β>0.
Claim: 6. The method of claim 1, wherein said optimizing comprises determining threshold values of said functions that are effective to predict a predefined minimum percentage of all occurrences of hypoglycemic events in said patient.
Claim: 7. The method of claim 6, wherein said percentage is 50%.
Claim: 8. The method of claim 6, wherein a hypoglycemic event is determined to be BG ≦50 mg/dl.
Claim: 9. The method of claim 6, wherein said predetermined future time period is a succeeding 24 hour time period.
Claim: 10. The method of claim 3, wherein the function measuring low blood glucose is Low Blood Glucose Index (LBGI).
Claim: 11. The method of claim 10, wherein [mathematical expression included] x1M, x2M, . . . xnM are a series of nM SMBG readings (BG) taken on Day M; rl(BG)=r(BG) if f(BG)<0 and 0 otherwise; r(BG)=10f(BG)2; f(BG,α,β)=[(ln(BG))α−β], α, β>0.
Claim: 12. The method of claim 11, wherein the probability P for upcoming hypoglycemia is given by [mathematical expression included] [mathematical expression included] [mathematical expression included] [mathematical expression included]
Claim: 13. The method of claim 12, wherein αa=15.1 range: [5,20] βa=3.13 range : [1,5] αb=116 range : [50,150] βb=−5.66 range : [−−10,0] αc=2.9 range: [1,5] βc=1 range : [1,5] δc=2.35 range : [1,10] γc=3.76 range : [1,5]
Claim: 14. The method of claim 13, wherein said mapping is based on results of a training data set obtained from a population of subjects having Type 1 diabetes.
Claim: 15. The method of claim 14, wherein said mapping maps coordinate pairs of {LBGI, ADRR} to the probability for hypoglycemia, defined as BG ≦50 mg/dl, in the subsequent 24 hours.
Claim: 16. The method of claim 15, wherein LBGI is computed from SMBG readings in the preceding 48 hours.
Claim: 17. The method of claim 16, wherein ADRR is computed from SMBG readings in the preceding 14 days.
Claim: 18. The method of claim 17, wherein the presence of a flag triggers outputting of said message, and wherein [mathematical expression included] Where x and y are predefined values.
Claim: 19. A system for monitoring the probability of occurrence of a hypoglycemic event in a patient within a predetermined future period of time, comprising: a processor; a storage medium; a bivariate distribution stored in said storage medium, which maps probability for upcoming hypoglycemia jointly to values of a function measuring glycemic variability and a function measuring low blood glucose (BG), each of said functions being based on self-monitoring blood glucose (SMBG) readings obtained from the patient, wherein said bivariate distribution allows prediction of a predetermined percentage of hypoglycemic events below a predetermined BG value occurring within a predetermined future time period; said processor being adapted to track the optimized distribution over time using routine SMBG readings from the patient; and said processor being adapted to output a message to said patient when said optimized distribution indicates a certain probability for the occurrence of a hypoglycemic event in said patient within said predetermined future time period, based on SMBG data obtained from said patient.
Claim: 20. The system of claim 19, wherein the function measuring glycemic variability is Average Daily Risk Range (ADRR).
Claim: 21. The system of claim 20, wherein [mathematical expression included] LRi=max(r1(x1i), rl(x2i), . . . , rl(xni)) and HRi=max(rh(x1i), rh(x2i), . . . , rh(xni)) for day # i; i=1, 2, . . . M; x1M, x2M, xnM are a series of nM SMBG readings (BG) taken on Day M; rl(BG)=r(BG) if f(BG)<0 and 0 otherwise; rh(BG)=r(BG) if f(BG)>0 and 0 otherwise; r(BG)=10f(BG)2; f(BG,α,β)=[(ln(BG))α−β], α, β>0.
Claim: 22. The system of claim 19, wherein the function measuring low blood glucose is Low Blood Glucose Index (LBGI).
Claim: 23. The system of claim 22, wherein [mathematical expression included] x1M, x2M, xnM are a series of nM SMBG readings (BG) taken on Day M; rl(BG)=r(BG) if f(BG)<0 and 0 otherwise; r(BG)=10f(BG)2; f(BG,α,β)=[(ln(BG))α−β], α, β>0.
Claim: 24. The system of claim 19, wherein said optimizing comprises determining threshold values of said functions that are effective to predict a predefined minimum percentage of all occurrences of hypoglycemic events in said patient.
Claim: 25. The system of claim 24, wherein said percentage is 50%.
Claim: 26. The system of claim 24, wherein a hypoglycemic event is determined to be BG ≦50 mg/dl.
Claim: 27. The system of claim 24, wherein said predetermined future time period is a succeeding 24 hour time period.
Claim: 28. The system of claim 21, wherein the function measuring low blood glucose is Low Blood Glucose Index (LBGI).
Claim: 29. The system of claim 28, wherein [mathematical expression included] x1M, x2M, . . . , xnM are a series of nM SMBG readings (BG) taken on Day M; rl(BG)=r(BG) if f(BG)<0 and 0 otherwise; r(BG)=10f(BG)2; f(BG,α,β)=[(ln(BG))α−β], α, β>0.
Claim: 30. The system of claim 29, wherein the probability P for upcoming hypoglycemia is given by [mathematical expression included] [mathematical expression included] [mathematical expression included] [mathematical expression included]
Claim: 31. The system of claim 30, wherein αa=15.1 range: [5,20] βa=3.13 range : [1,5] αb=116 range : [50,150] βb=−5.66 range : [−10,0] αc=2.9 range: [1,5] βc=1 range : [1,5] δc=2.35 range : [1,10] γc=3.76 range : [1,5]
Claim: 32. The system of claim 31, wherein said mapping is based on results of a training data set obtained from a population of subjects having Type 1 diabetes.
Claim: 33. The system of claim 32, wherein said mapping maps coordinate pairs of {LBGI, ADRR} to the probability for hypoglycemia, defined as BG ≦50 mg/dl, in the subsequent 24 hours.
Claim: 34. The system of claim 33, wherein LBGI is computed from SMBG readings in the preceding 48 hours.
Claim: 35. The system of claim 34, wherein ADRR is computed from SMBG readings in the preceding 14 days.
Claim: 36. The system of claim 35, wherein the presence of a flag triggers outputting of said message, and wherein flag={1 if ADRR>x & LBGI>y 0 otherwise Where x and y are predefined values.
Claim: 37. The method of claim 1, wherein SMBG data obtained from said patient is an individual SMBG reading.
Claim: 38. The method of claim 1, wherein SMBG data obtained from said patient is all SMBG data collected from a patient in a predetermined cycle.
Claim: 39. The system of claim 19, wherein SMBG data obtained from said patient is an individual SMBG reading.
Claim: 40. The system of claim 19, wherein SMBG data obtained from said patient is all SMBG data collected from a patient in a predetermined cycle.
Claim: 41. A computer program product comprising a non-transitory computer-readable storage medium containing computer-executable instructions for monitoring the probability of occurrence of a hypoglycemic event in a patient within a predetermined future period of time, said instructions causing a computer to: create a bivariate distribution in said storage medium, which maps probability for upcoming hypoglycemia jointly to values of a function measuring glycemic variability and a function measuring low blood glucose (BG), each of said functions being based on self-monitoring blood glucose (SMBG) readings obtained from the patient, wherein said bivariate distribution allows prediction of a predetermined percentage of hypoglycemic events below a predetermined BG value occurring within a predetermined future time period; track the optimized distribution over time using routine SMBG readings from the patient; and output a message to said patient when said optimized distribution indicates a certain probability for the occurrence of a hypoglycemic event in said patient within said predetermined future time period, based on SMBG data obtained from said patient.
Claim: 42. The computer program product of claim 41, wherein SMBG data obtained from said patient is an individual SMBG reading.
Claim: 43. The computer program product of claim 41, wherein SMBG data obtained from said patient is all SMBG data collected from a patient in a predetermined cycle.
Current U.S. Class: 702/19
Current International Class: 06; 01
رقم الانضمام: edspap.20120191361
قاعدة البيانات: USPTO Patent Applications