Time to hypoglycemia prediction for personalized diabetes care and management
Publication date
2024-12-17
Document type
Conference paper
Author
Organisational unit
Scopus ID
Conference
46th Annual International Conference of the IEEE Engineering in Medicine and Biology Society (EMBC 2024) ; Orlando, FL, USA ; July 15-19, 2024
Publisher
IEEE
Book title
IEEE EMBC 2024 conference proceedings : 2024 46th Annual International Conference of the IEEE Engineering in Medicine and Biology Society, Orlando, July 15-19, 2024
Article ID
10782855
Part of the university bibliography
✅
Language
English
Abstract
Hypoglycemia is a medical emergency characterized by low glucose levels (70 mg/dL or 3.9 mmol/L), which can be asymptomatic and difficult to predict in patients with type 1 diabetes (T1D). This study leverages the synergistic capabilities of advanced machine learning (ML) models and integrates noninvasive heart rate with continuous glucose monitoring to predict the time to onset of hypoglycemia events. Unlike prior research, this study extends prediction times and customizes personalized prediction models for early detection of hypoglycemia. In this study, we evaluate and develop the Fully Convolutional Networks (FCN) and Residual Networks (ResNet) models. Our results showed that FCN outperformed ResNet with 97% accuracy and robustness across different time classes, along with critical local feature coverage compared to the ResNet model’s accuracy of 94%. These results highlight the implications of model architecture, validation techniques, and personalization in predicting hypoglycemia in T1D patients.
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Published version
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