[2603.04955] Uncertainty-aware Blood Glucose Prediction from Continuous Glucose Monitoring Data

[2603.04955] Uncertainty-aware Blood Glucose Prediction from Continuous Glucose Monitoring Data

arXiv - Machine Learning 3 min read

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Abstract page for arXiv paper 2603.04955: Uncertainty-aware Blood Glucose Prediction from Continuous Glucose Monitoring Data

Computer Science > Machine Learning arXiv:2603.04955 (cs) [Submitted on 5 Mar 2026] Title:Uncertainty-aware Blood Glucose Prediction from Continuous Glucose Monitoring Data Authors:Hai Siong Tan View a PDF of the paper titled Uncertainty-aware Blood Glucose Prediction from Continuous Glucose Monitoring Data, by Hai Siong Tan View PDF HTML (experimental) Abstract:In this work, we investigate uncertainty-aware neural network models for blood glucose prediction and adverse glycemic event identification in Type 1 diabetes. We consider three families of sequence models based on LSTM, GRU, and Transformer architectures, with uncertainty quantification enabled by either Monte Carlo dropout or through evidential output layers compatible with Deep Evidential Regression. Using the HUPA-UCM diabetes dataset for validation, we find that Transformer-based models equipped with evidential output heads provide the most effective uncertainty-aware framework, achieving consistently higher predictive accuracies and better-calibrated uncertainty estimates whose magnitudes significantly correlate with prediction errors. We further evaluate the clinical risk of each model using the recently proposed Diabetes Technology Society error grid, with risk categories defined by international expert consensus. Our results demonstrate the value of integrating principled uncertainty quantification into real-time machine-learning-based blood glucose prediction systems. Comments: Subjects: Machine Learning ...

Originally published on March 06, 2026. Curated by AI News.

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