Prediction of Nocturnal Hypoglycemia in Adults with Type 1 Diabetes under Multiple Daily Injections Using Continuous Glucose Monitoring and Physical Activity Monitor.
Arthur BertachiClara ViñalsLyvia BiagiIvan ContrerasJosep VehíIgnacio CongetMarga GiménezPublished in: Sensors (Basel, Switzerland) (2020)
(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.
Keyphrases
- physical activity
- type diabetes
- machine learning
- glycemic control
- sleep quality
- room temperature
- blood pressure
- big data
- obstructive sleep apnea
- artificial intelligence
- body mass index
- end stage renal disease
- cardiovascular disease
- insulin resistance
- newly diagnosed
- perovskite solar cells
- risk assessment
- bone marrow
- chronic kidney disease
- depressive symptoms
- healthcare
- adipose tissue
- peritoneal dialysis
- mesenchymal stem cells
- platelet rich plasma
- ultrasound guided
- social media
- metabolic syndrome
- gestational age
- skeletal muscle
- data analysis
- ionic liquid
- metal organic framework