Enhancing Blood Glucose Prediction with Meal Absorption and Physical Exercise Information
Chengyuan Liu, Josep Vehi, Nick Oliver, Pantelis Georgiou, Pau, Herrero

TL;DR
This paper introduces a novel glucose prediction algorithm that incorporates meal absorption and physical exercise data, significantly improving accuracy over existing models for type 1 diabetes management.
Contribution
The study presents a new compartmental model combining meal and exercise data, outperforming previous algorithms in glucose prediction accuracy.
Findings
Improved prediction accuracy with RMSE reduced from 26.68 to 23.89 in silico.
Enhanced clinical prediction with RMSE reduced from 37.02 to 35.96.
Statistically significant improvements over LVX model in both datasets.
Abstract
Objective: Numerous glucose prediction algorithm have been proposed to empower type 1 diabetes (T1D) management. Most of these algorithms only account for input such as glucose, insulin and carbohydrate, which limits their performance. Here, we present a novel glucose prediction algorithm which, in addition to standard inputs, accounts for meal absorption and physical exercise information to enhance prediction accuracy. Methods: a compartmental model of glucose-insulin dynamics combined with a deconvolution technique for state estimation is employed for glucose prediction. In silico data corresponding from the 10 adult subjects of UVa-Padova simulator, and clinical data from 10 adults with T1D were used. Finally, a comparison against a validated glucose prediction algorithm based on a latent variable with exogenous input (LVX) model is provided. Results: For a prediction horizon of 60…
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Taxonomy
TopicsDiabetes Management and Research · Diet and metabolism studies · Diabetes and associated disorders
