Literature DB >> 23848178

A glucose model based on support vector regression for the prediction of hypoglycemic events under free-living conditions.

Eleni I Georga1, Vasilios C Protopappas, Diego Ardigò, Demosthenes Polyzos, Dimitrios I Fotiadis.   

Abstract

BACKGROUND: The prevention of hypoglycemic events is of paramount importance in the daily management of insulin-treated diabetes. The use of short-term prediction algorithms of the subcutaneous (s.c.) glucose concentration may contribute significantly toward this direction. The literature suggests that, although the recent glucose profile is a prominent predictor of hypoglycemia, the overall patient's context greatly impacts its accurate estimation. The objective of this study is to evaluate the performance of a support vector for regression (SVR) s.c. glucose method on hypoglycemia prediction.
MATERIALS AND METHODS: We extend our SVR model to predict separately the nocturnal events during sleep and the non-nocturnal (i.e., diurnal) ones over 30-min and 60-min horizons using information on recent glucose profile, meals, insulin intake, and physical activities for a hypoglycemic threshold of 70 mg/dL. We also introduce herein additional variables accounting for recurrent nocturnal hypoglycemia due to antecedent hypoglycemia, exercise, and sleep. SVR predictions are compared with those from two other machine learning techniques.
RESULTS: The method is assessed on a dataset of 15 patients with type 1 diabetes under free-living conditions. Nocturnal hypoglycemic events are predicted with 94% sensitivity for both horizons and with time lags of 5.43 min and 4.57 min, respectively. As concerns the diurnal events, when physical activities are not considered, the sensitivity is 92% and 96% for a 30-min and 60-min horizon, respectively, with both time lags being less than 5 min. However, when such information is introduced, the diurnal sensitivity decreases by 8% and 3%, respectively. Both nocturnal and diurnal predictions show a high (>90%) precision.
CONCLUSIONS: Results suggest that hypoglycemia prediction using SVR can be accurate and performs better in most diurnal and nocturnal cases compared with other techniques. It is advised that the problem of hypoglycemia prediction should be handled differently for nocturnal and diurnal periods as regards input variables and interpretation of results.

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Year:  2013        PMID: 23848178     DOI: 10.1089/dia.2012.0285

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


  14 in total

Review 1.  A systematic review of the applications of artificial intelligence and machine learning in autoimmune diseases.

Authors:  I S Stafford; M Kellermann; E Mossotto; R M Beattie; B D MacArthur; S Ennis
Journal:  NPJ Digit Med       Date:  2020-03-09

2.  Combining information of autonomic modulation and CGM measurements enables prediction and improves detection of spontaneous hypoglycemic events.

Authors:  Simon Lebech Cichosz; Jan Frystyk; Lise Tarnow; Jesper Fleischer
Journal:  J Diabetes Sci Technol       Date:  2014-09-12

3.  Feature-Based Machine Learning Model for Real-Time Hypoglycemia Prediction.

Authors:  Darpit Dave; Daniel J DeSalvo; Balakrishna Haridas; Siripoom McKay; Akhil Shenoy; Chester J Koh; Mark Lawley; Madhav Erraguntla
Journal:  J Diabetes Sci Technol       Date:  2020-06-01

4.  Evaluation of short-term predictors of glucose concentration in type 1 diabetes combining feature ranking with regression models.

Authors:  Eleni I Georga; Vasilios C Protopappas; Demosthenes Polyzos; Dimitrios I Fotiadis
Journal:  Med Biol Eng Comput       Date:  2015-03-15       Impact factor: 2.602

5.  Comparing Machine Learning Techniques for Blood Glucose Forecasting Using Free-living and Patient Generated Data.

Authors:  Hadia Hameed; Samantha Kleinberg
Journal:  Proc Mach Learn Res       Date:  2020-08

6.  Predicting and Preventing Nocturnal Hypoglycemia in Type 1 Diabetes Using Big Data Analytics and Decision Theoretic Analysis.

Authors:  Clara Mosquera-Lopez; Robert Dodier; Nichole S Tyler; Leah M Wilson; Joseph El Youssef; Jessica R Castle; Peter G Jacobs
Journal:  Diabetes Technol Ther       Date:  2020-05-14       Impact factor: 6.118

7.  A novel algorithm for prediction and detection of hypoglycemia based on continuous glucose monitoring and heart rate variability in patients with type 1 diabetes.

Authors:  Simon Lebech Cichosz; Jan Frystyk; Ole K Hejlesen; Lise Tarnow; Jesper Fleischer
Journal:  J Diabetes Sci Technol       Date:  2014-03-31

8.  Predicting Nocturnal Hypoglycemia from Continuous Glucose Monitoring Data with Extended Prediction Horizon.

Authors:  Long Vu; Sarah Kefayati; Tsuyoshi Idé; Venkata Pavuluri; Gretchen Jackson; Lisa Latts; Yuxiang Zhong; Pratik Agrawal; Yuan-Chi Chang
Journal:  AMIA Annu Symp Proc       Date:  2020-03-04

Review 9.  Machine Learning and Data Mining Methods in Diabetes Research.

Authors:  Ioannis Kavakiotis; Olga Tsave; Athanasios Salifoglou; Nicos Maglaveras; Ioannis Vlahavas; Ioanna Chouvarda
Journal:  Comput Struct Biotechnol J       Date:  2017-01-08       Impact factor: 7.271

Review 10.  Artificial Intelligence for Diabetes Management and Decision Support: Literature Review.

Authors:  Ivan Contreras; Josep Vehi
Journal:  J Med Internet Res       Date:  2018-05-30       Impact factor: 5.428

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