Literature DB >> 25316712

Hypoglycemia prediction using machine learning models for patients with type 2 diabetes.

Bharath Sudharsan1, Malinda Peeples1, Mansur Shomali2.   

Abstract

Minimizing the occurrence of hypoglycemia in patients with type 2 diabetes is a challenging task since these patients typically check only 1 to 2 self-monitored blood glucose (SMBG) readings per day. We trained a probabilistic model using machine learning algorithms and SMBG values from real patients. Hypoglycemia was defined as a SMBG value < 70 mg/dL. We validated our model using multiple data sets. In addition, we trained a second model, which used patient SMBG values and information about patient medication administration. The optimal number of SMBG values needed by the model was approximately 10 per week. The sensitivity of the model for predicting a hypoglycemia event in the next 24 hours was 92% and the specificity was 70%. In the model that incorporated medication information, the prediction window was for the hour of hypoglycemia, and the specificity improved to 90%. Our machine learning models can predict hypoglycemia events with a high degree of sensitivity and specificity. These models-which have been validated retrospectively and if implemented in real time-could be useful tools for reducing hypoglycemia in vulnerable patients.
© 2014 Diabetes Technology Society.

Entities:  

Keywords:  hypoglycemia prediction; machine learning; type 2 diabetes

Mesh:

Year:  2014        PMID: 25316712      PMCID: PMC4495530          DOI: 10.1177/1932296814554260

Source DB:  PubMed          Journal:  J Diabetes Sci Technol        ISSN: 1932-2968


  5 in total

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3.  Evaluation of a new measure of blood glucose variability in diabetes.

Authors:  Boris P Kovatchev; Erik Otto; Daniel Cox; Linda Gonder-Frederick; William Clarke
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4.  Statistical hypoglycemia prediction.

Authors:  Fraser Cameron; Günter Niemeyer; Karen Gundy-Burlet; Bruce Buckingham
Journal:  J Diabetes Sci Technol       Date:  2008-07

5.  Cluster-randomized trial of a mobile phone personalized behavioral intervention for blood glucose control.

Authors:  Charlene C Quinn; Michelle D Shardell; Michael L Terrin; Erik A Barr; Shoshana H Ballew; Ann L Gruber-Baldini
Journal:  Diabetes Care       Date:  2011-07-25       Impact factor: 19.112

  5 in total
  30 in total

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Authors:  Morten H Jensen; Claus Dethlefsen; Peter Vestergaard; Ole Hejlesen
Journal:  J Diabetes Sci Technol       Date:  2019-08-08

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7.  Predicting Progression Patterns of Type 2 Diabetes using Multi-sensor Measurements.

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Journal:  Smart Health (Amst)       Date:  2021-06-12

8.  Quantifying the utility of islet autoantibody levels in the prediction of type 1 diabetes in children.

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Journal:  Diabetologia       Date:  2022-10-05       Impact factor: 10.460

9.  Machine-Learning-Based Prediction of a Missed Scheduled Clinical Appointment by Patients With Diabetes.

Authors:  Hisashi Kurasawa; Katsuyoshi Hayashi; Akinori Fujino; Koichi Takasugi; Tsuneyuki Haga; Kayo Waki; Takashi Noguchi; Kazuhiko Ohe
Journal:  J Diabetes Sci Technol       Date:  2016-05-03

10.  Deep transfer learning and data augmentation improve glucose levels prediction in type 2 diabetes patients.

Authors:  Yixiang Deng; Lu Lu; Laura Aponte; Angeliki M Angelidi; Vera Novak; George Em Karniadakis; Christos S Mantzoros
Journal:  NPJ Digit Med       Date:  2021-07-14
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