Bayesian Optimization Assisted Meal Bolus Decision Based on Gaussian Processes Learning and Risk-Sensitive Control
Deheng Cai, Wei Liu, Linong Ji, Dawei Shi

TL;DR
This paper introduces a data-driven, risk-sensitive Bayesian optimization approach using Gaussian processes to improve post-meal glucose control in diabetics without requiring subject-specific parameters.
Contribution
It presents a novel Bayesian optimization framework that learns glucose dynamics and optimizes insulin bolus decisions considering risk asymmetry and uncertainties.
Findings
Achieves comparable glucose control to standard methods in simulations.
Effectively manages hyper- and hypoglycemia risks.
Demonstrates robustness in various meal and basal rate scenarios.
Abstract
Effective postprandial glucose control is important to glucose management for subjects with diabetes mellitus. In this work, a data-driven meal bolus decision method is proposed without the need of subject-specific glucose management parameters. The postprandial glucose dynamics is learnt using Gaussian process regression. Considering the asymmetric risks of hyper- and hypoglycemia and the uncertainties in the predicted glucose trajectories, an asymmetric risk-sensitive cost function is designed. Bayesian optimization is utilized to solve the optimization problem, since the gradient of the cost function is unavailable. The proposed approach is evaluated using the 10-adult cohort of the FDA-accepted UVA/Padova T1DM simulator and compared with the standard insulin bolus calculator. For the case of announced meals, the proposed method achieves satisfactory and similar performance in terms…
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Taxonomy
TopicsDiabetes Management and Research · Advanced Control Systems Optimization · Control Systems and Identification
MethodsGaussian Process
