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机器学习在联合脑电图麻醉指数中用于检测麻醉下的意识。

Machine learning for a combined electroencephalographic anesthesia index to detect awareness under anesthesia.

机构信息

Department of Anesthesiology, Klinikum rechts der Isar, Technische Universität München, Munich, Germany.

Department of Pediatric Neurology, Munich University Children's Hospital, Ludwig-Maximilans-Universität München, Munich, Germany.

出版信息

PLoS One. 2020 Aug 26;15(8):e0238249. doi: 10.1371/journal.pone.0238249. eCollection 2020.

Abstract

Spontaneous electroencephalogram (EEG) and auditory evoked potentials (AEP) have been suggested to monitor the level of consciousness during anesthesia. As both signals reflect different neuronal pathways, a combination of parameters from both signals may provide broader information about the brain status during anesthesia. Appropriate parameter selection and combination to a single index is crucial to take advantage of this potential. The field of machine learning offers algorithms for both parameter selection and combination. In this study, several established machine learning approaches including a method for the selection of suitable signal parameters and classification algorithms are applied to construct an index which predicts responsiveness in anesthetized patients. The present analysis considers several classification algorithms, among those support vector machines, artificial neural networks and Bayesian learning algorithms. On the basis of data from the transition between consciousness and unconsciousness, a combination of EEG and AEP signal parameters developed with automated methods provides a maximum prediction probability of 0.935, which is higher than 0.916 (for EEG parameters) and 0.880 (for AEP parameters) using a cross-validation approach. This suggests that machine learning techniques can successfully be applied to develop an improved combined EEG and AEP parameter to separate consciousness from unconsciousness.

摘要

自发性脑电图(EEG)和听觉诱发电位(AEP)已被建议用于监测麻醉期间的意识水平。由于这两种信号反映了不同的神经元通路,因此来自这两种信号的参数组合可能提供关于麻醉期间大脑状态的更广泛信息。适当的参数选择和组合对于利用这种潜力至关重要。机器学习领域为参数选择和组合提供了算法。在这项研究中,应用了几种已建立的机器学习方法,包括用于选择合适信号参数和分类算法的方法,以构建预测麻醉患者反应性的指数。本分析考虑了几种分类算法,其中包括支持向量机、人工神经网络和贝叶斯学习算法。基于从意识和无意识之间的转变的数据,使用自动化方法开发的 EEG 和 AEP 信号参数的组合提供了 0.935 的最大预测概率,高于使用交叉验证方法的 0.916(用于 EEG 参数)和 0.880(用于 AEP 参数)。这表明机器学习技术可以成功地应用于开发改进的 EEG 和 AEP 参数组合,以分离意识和无意识。

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