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EEG Feature Analysis for Detecting the Fluctuation of Consciousness Level during Propofol Anesthesia

机译:脑电图特征分析在丙泊酚麻醉过程中意识水平波动的检测

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Various EEG features have been proposed for differentiating the consciousness and unconsciousness states during general anesthesia. However, their performance for detecting the fluctuation of consciousness level remains unclear. In this work, we recorded 60-channels EEG data during propofol anesthesia, and extracted 110 EEG features that were shown to be sensitive to the change of consciousness level. Then, we used classification model to evaluate the performance of these features in distinguishing the response state fluctuating around the point of loss of behavioral responsiveness (LOBR) to external stimuli. We found that EEG features, including delta power, SynchFastSlow, and the topographical ratio of alpha power, were efficient in distinguishing the stable change in consciousness level with an accuracy of 95.8%, however, these features performed poorly in distinguishing the response state around the point of LOBR with an accuracy of 66.9%. Using EEG features selected specifically for detecting consciousness fluctuation, approximately 10% improvement in accuracy was obtained. Our results suggested that the EEG features that were sensitive to the stable change of consciousness level and fluctuation of consciousness level were largely different. EEG features including theta band power and functional connectivity are more relevant to the fluctuation of consciousness level.
机译:已经提出了各种EEG特征以区分全身麻醉期间的意识状态和无意识状态。但是,它们检测意识水平波动的性能仍不清楚。在这项工作中,我们在异丙酚麻醉期间记录了60通道的脑电图数据,并提取了110个脑电图特征,这些特征表明它们对意识水平的变化很敏感。然后,我们使用分类模型来评估这些功能在区分对外部刺激的行为响应能力丧失(LOBR)周围波动的响应状态方面的性能。我们发现,包括δ功率,SynchFastSlow和地形图的α功率在内的脑电图特征可有效区分意识水平的稳定变化,其准确度为95.8%,但是,这些特征在区分大脑周围的反应状态方面表现不佳。 LOBR点的精度为66.9%。使用专门选择用于检测意识波动的脑电图特征,可以使准确性提高约10%。我们的研究结果表明,对意识水平的稳定变化和意识水平波动敏感的脑电特征存在很大差异。脑电图特征包括θ带功率和功能连接性与意识水平的波动更相关。

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