2023
DOI: 10.48550/arxiv.2303.10180
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Towards Safe Propofol Dosing during General Anesthesia Using Deep Offline Reinforcement Learning

Abstract: Automated anesthesia promises to enable more precise and personalized anesthetic administration and free anesthesiologists from repetitive tasks, allowing them to focus on the most critical aspects of a patient's surgical care. Current research has typically focused on creating simulated environments from which agents can learn. These approaches have demonstrated good experimental results, but are still far from clinical application. In this paper, Policy Constraint Q-Learning (PCQL), a data-driven reinforceme… Show more

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