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Reinforcement Learning for Closed-Loop Propofol Anesthesia: A Human Volunteer Study

机译:闭环丙泊酚麻醉的强化学习:一项人类志愿者研究

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摘要

Research has demonstrated the efficacy of closed-loop control of anesthesia using the bispectral index (BIS) of the electroencephalogram as the controlled variable, and the development of model-based, patient-adaptive systems has considerably improved anesthetic control. To further explore the use of model-based control in anesthesia, we investigated the application of reinforcement learning (RL) in the delivery of patient-specific, propofol-induced hypnosis in human volunteers. When compared to published performance metrics, RL control demonstrated accuracy and stability, indicating that further, more rigorous clinical study is warranted.
机译:研究表明,使用脑电图的双谱指数(BIS)作为控制变量进行麻醉的闭环控制是有效的,基于模型的患者自适应系统的开发大大改善了麻醉控制。为了进一步探索麻醉中基于模型的控制的应用,我们调查了强化学习(RL)在人类志愿者中由患者进行的丙泊酚诱导的催眠作用中的应用。与已发布的性能指标相比,RL控制具有准确性和稳定性,表明需要进行更严格的临床研究。

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