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Automatic Regulation of Anesthesia via Ultra-Local Model Control

机译:通过超本地模型控制自动调节麻醉

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摘要

As a part of the BMS2021 Benchmark Challenge, this paper deals with the design and testing of a closed-loop anesthesia delivery regulation system by exploiting the open-source Matlab-based patient simulator. Because of system inherent complexity together with intra-and inter-patient parameters variability and partially unknown disturbances, traditional model-based approaches may suffer. To overcome these limitations, we opt for a data-driven approach using real-time ultra-local models coupled with the corresponding so-called intelligent controllers. In this way, one maintains the hemodynamic variables while regulating the levels of hypnosis, analgesia, and neuromuscular blockade in anesthesia by automatic delivery of drugs. The performance of the proposed approach has been evaluated in silico by considering a representative dataset composed of 24 patients, the presence of disturbances mimicking both surgical stimulations and actions of “anesthesiologist in the loop”, including also noise effects and time-varying system delays.
机译:作为BMS2021基准挑战的一部分,本文通过利用基于开源Matlab的患者模拟器来涉及闭环麻醉输送调控系统的设计和测试。由于系统固有复杂性与患有患者间参数的变异性和部分未知的干扰,基于传统的基于模型的方法可能受到影响。为了克服这些限制,我们使用与相应的所谓的智能控制器耦合的实时超本地模型选择数据驱动方法。通过这种方式,通过自动递送药物来调节麻醉中麻醉的催眠,镇痛和神经肌肉细分水平的同时保持血液动力学变量。通过考虑由24名患者组成的代表性数据集,在Silico中评估了所提出的方法的性能,这些障碍物模仿手术刺激和“环中的麻醉师的作用”,包括噪声效应和时变系统延迟。

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