Literature DB >> 22690875

Clinically relevant hypoglycemia prediction metrics for event mitigation.

Rebecca A Harvey1, Eyal Dassau, Howard C Zisser, Wendy Bevier, Dale E Seborg, Lois Jovanovič, Francis J Doyle.   

Abstract

BACKGROUND: The purpose of this study was to develop a method to compare hypoglycemia prediction algorithms and choose parameter settings for different applications, such as triggering insulin pump suspension or alerting for rescue carbohydrate treatment.
MATERIALS AND METHODS: Hypoglycemia prediction algorithms with different parameter settings were implemented on an ambulatory dataset containing 490 days from 30 subjects with type 1 diabetes mellitus using the Dexcom™ (San Diego, CA) SEVEN™ continuous glucose monitoring system. The performance was evaluated using a proposed set of metrics representing the true-positive ratio, false-positive rate, and distribution of warning times. A prospective, in silico study was performed to show the effect of using different parameter settings to prevent or rescue from hypoglycemia.
RESULTS: The retrospective study results suggest the parameter settings for different methods of hypoglycemia mitigation. When rescue carbohydrates are used, a high true-positive ratio, a minimal false-positive rate, and alarms with short warning time are desired. These objectives were met with a 30-min prediction horizon and two successive flags required to alarm: 78% of events were detected with 3.0 false alarms/day and 66% probability of alarms occurring within 30 min of the event. This parameter setting selection was confirmed in silico: treating with rescue carbohydrates reduced the duration of hypoglycemia from 14.9% to 0.5%. However, for a different method, such as pump suspension, this parameter setting only reduced hypoglycemia to 8.7%, as can be expected by the low probability of alarming more than 30 min ahead.
CONCLUSIONS: The proposed metrics allow direct comparison of hypoglycemia prediction algorithms and selection of parameter settings for different types of hypoglycemia mitigation, as shown in the prospective in silico study in which hypoglycemia was alerted or treated with rescue carbohydrates.

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Year:  2012        PMID: 22690875      PMCID: PMC3409456          DOI: 10.1089/dia.2011.0198

Source DB:  PubMed          Journal:  Diabetes Technol Ther        ISSN: 1520-9156            Impact factor:   6.118


  16 in total

1.  Diagnostic tests. 1: Sensitivity and specificity.

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Authors: 
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5.  Detection of hypoglycemia with continuous interstitial and traditional blood glucose monitoring using the FreeStyle Navigator Continuous Glucose Monitoring System.

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6.  Real-Time hypoglycemia prediction suite using continuous glucose monitoring: a safety net for the artificial pancreas.

Authors:  Eyal Dassau; Fraser Cameron; Hyunjin Lee; B Wayne Bequette; Howard Zisser; Lois Jovanovic; H Peter Chase; Darrell M Wilson; Bruce A Buckingham; Francis J Doyle
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7.  Prevention of nocturnal hypoglycemia using predictive alarm algorithms and insulin pump suspension.

Authors:  Bruce Buckingham; H Peter Chase; Eyal Dassau; Erin Cobry; Paula Clinton; Victoria Gage; Kimberly Caswell; John Wilkinson; Fraser Cameron; Hyunjin Lee; B Wayne Bequette; Francis J Doyle
Journal:  Diabetes Care       Date:  2010-03-03       Impact factor: 19.112

8.  Statistical hypoglycemia prediction.

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Journal:  J Diabetes Sci Technol       Date:  2008-07

9.  The effect of intensive treatment of diabetes on the development and progression of long-term complications in insulin-dependent diabetes mellitus.

Authors:  D M Nathan; S Genuth; J Lachin; P Cleary; O Crofford; M Davis; L Rand; C Siebert
Journal:  N Engl J Med       Date:  1993-09-30       Impact factor: 91.245

10.  Hypoglycemia prediction with subject-specific recursive time-series models.

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Journal:  J Diabetes Sci Technol       Date:  2010-01-01
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Authors:  Rebecca A Harvey; Eyal Dassau; Howard Zisser; Dale E Seborg; Lois Jovanovič; Francis J Doyle
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