Litcius/Paper detail

Prediction of Nocturnal Hypoglycemia in Adults with Type 1 Diabetes under Multiple Daily Injections Using Continuous Glucose Monitoring and Physical Activity Monitor

Arthur Bertachi, Clara Viñals, Lyvia Biagi, Iván Contreras, Josep Vehı́, Ignacio Conget, Marga Giménez

2020Sensors86 citationsDOIOpen Access PDF

Abstract

(1) Background: nocturnal hypoglycemia (NH) is one of the most challenging side effects of multiple doses of insulin (MDI) therapy in type 1 diabetes (T1D). This work aimed to investigate the feasibility of a machine-learning-based prediction model to anticipate NH in T1D patients on MDI. (2) Methods: ten T1D adults were studied during 12 weeks. Information regarding T1D management, continuous glucose monitoring (CGM), and from a physical activity tracker were obtained under free-living conditions at home. Supervised machine-learning algorithms were applied to the data, and prediction models were created to forecast the occurrence of NH. Individualized prediction models were generated using multilayer perceptron (MLP) and a support vector machine (SVM). (3) Results: population outcomes indicated that more than 70% of the NH may be avoided with the proposed methodology. The predictions performed by the SVM achieved the best population outcomes, with a sensitivity and specificity of 78.75% and 82.15%, respectively. (4) Conclusions: our study supports the feasibility of using ML techniques to address the prediction of nocturnal hypoglycemia in the daily life of patients with T1D on MDI, using CGM and a physical activity tracker.

Topics & Concepts

HypoglycemiaType 1 diabetesSupport vector machinePopulationMultilayer perceptronContinuous glucose monitoringMachine learningMedicineArtificial intelligenceDiabetes mellitusComputer scienceEndocrinologyArtificial neural networkEnvironmental healthDiabetes Management and ResearchDiabetes and associated disordersDiabetes Treatment and Management