Blood Glucose Control Via Pre-trained Counterfactual Invertible Neural Networks
Jingchi Jiang, Rujia Shen, Boran Wang, Yi Guan

TL;DR
This paper introduces a novel reinforcement learning approach for blood glucose control in type 1 diabetes using pre-trained counterfactual invertible neural networks to improve stability and safety.
Contribution
It proposes integrating a pre-trained CINN as an introspective module in RL to enhance blood glucose regulation safety and accuracy.
Findings
Pre-trained CINN accurately predicts blood glucose levels.
CINN-guided RL achieves safer blood glucose control.
Enhanced generalization in blood glucose prediction.
Abstract
Type 1 diabetes mellitus (T1D) is characterized by insulin deficiency and blood glucose (BG) control issues. The state-of-the-art solution for continuous BG control is reinforcement learning (RL), where an agent can dynamically adjust exogenous insulin doses in time to maintain BG levels within the target range. However, due to the lack of action guidance, the agent often needs to learn from randomized trials to understand misleading correlations between exogenous insulin doses and BG levels, which can lead to instability and unsafety. To address these challenges, we propose an introspective RL based on Counterfactual Invertible Neural Networks (CINN). We use the pre-trained CINN as a frozen introspective block of the RL agent, which integrates forward prediction and counterfactual inference to guide the policy updates, promoting more stable and safer BG control. Constructed based on…
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Taxonomy
TopicsSpectroscopy Techniques in Biomedical and Chemical Research · Brain Tumor Detection and Classification · ECG Monitoring and Analysis
MethodsWeight Normalization · Affine Coupling
