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An Adaptive Neural Network Filter for Improved Patient State Estimation in Closed-Loop Anesthesia Control

机译:一种自适应神经网络滤波器,用于改进闭环麻醉控制中的患者状态估计

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Recent studies in the controlled administration of intravenous propofol favor a robust automated delivery control system in lieu of a manual controller. In previous work, a Reinforcement Learning (RL) controller was successfully tested in silico and in human volunteers with promising results. In this paper, an Adaptive Neural Network Filter (ANNF) is introduced in an effort to improve RL control of propofol hypnosis. The modified controller was tested in silico on simulated intraoperative patients, and its performance was compared against previously published results. Results from the experiments show that the new controller outperformed the previous controller in the maintenance of propofol anesthesia, with modest improvement in performance during anesthetic induction.
机译:静脉内异丙酚的受控管理最近的研究有利于鲁棒自动化交付控制系统代替手动控制器。在以前的工作中,加强学习(RL)控制器在Silico和人类志愿者中成功测试,具有有希望的结果。本文旨在提高对类异丙酚催眠的RL控制的自适应神经网络过滤器(AnnF)。改性控制器在模拟术中患者的硅中测试,并将其性能与先前公布的结果进行了比较。实验结果表明,新的控制器在维持异丙酚麻醉方面优于先前的控制器,在麻醉感应期间的性能适度提高。

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