Hybrid Control Policy for Artificial Pancreas via Ensemble Deep Reinforcement Learning
Wenzhou Lv, Tianyu Wu, Luolin Xiong, Liang Wu, Jian Zhou, Yang Tang,, Feng Qian

TL;DR
This paper introduces a hybrid control policy combining model predictive control and ensemble deep reinforcement learning, enhanced with meta-learning, to improve personalized glucose regulation in artificial pancreas systems for type 1 diabetes.
Contribution
It proposes a novel hybrid control framework that integrates MPC and ensemble DRL with meta-learning for rapid adaptation, advancing personalized and safe glucose control in T1DM.
Findings
Achieved the highest time in euglycemic range in simulations
Reduced hypoglycemia incidents compared to existing methods
Demonstrated effective adaptation to new patients with limited data
Abstract
Objective: The artificial pancreas (AP) has shown promising potential in achieving closed-loop glucose control for individuals with type 1 diabetes mellitus (T1DM). However, designing an effective control policy for the AP remains challenging due to the complex physiological processes, delayed insulin response, and inaccurate glucose measurements. While model predictive control (MPC) offers safety and stability through the dynamic model and safety constraints, it lacks individualization and is adversely affected by unannounced meals. Conversely, deep reinforcement learning (DRL) provides personalized and adaptive strategies but faces challenges with distribution shifts and substantial data requirements. Methods: We propose a hybrid control policy for the artificial pancreas (HyCPAP) to address the above challenges. HyCPAP combines an MPC policy with an ensemble DRL policy, leveraging…
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Taxonomy
TopicsDiabetes Management and Research · Cardiovascular Function and Risk Factors · Pancreatic function and diabetes
