Classification of midazolam-induced sedation depth based on spatial and spectral analysis

Hwi-Jae Kim, Seul-Ki Yeom, K. Seo, Hyun Jeong Kim, Seong-Whan Lee
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引用次数: 1

Abstract

Distinction of loss and recovery of consciousness is an important component in consciousness study. To find transitions in and out unconsciousness, monitoring depth of anesthesia (DOA) should be reliably assessed. Previous studies have proposed several methods for measuring DOA, and one of the significant methods to identify between awaked and anesthetized state is global filed synchrony (GFS). GFS used the coherence information from the global electroencephalogram (EEG) channels by using the effects of phase and amplitude relationship simultaneously. However, most recent work showed that there were specific independent EEG amplitude as a biomarker of consciousness while changing the transition into and out unconsciousness. In this paper, we proposed a GFS based feature extraction technique, using coefficients of multi-dimensional channels in interest frequency range in repeated sedation condition. It allows to extract significant spatial and spectral features. We classified the ‘wakefulness’ and ‘unconsciousness’ from midazolam-induced sedation and linear discriminant analysis (LDA). As a result, classification performance in 25 subjects represented 97.09%. Also, it showed that the proposed method was an efficient feature extraction method for classification of ‘wakefulness’ and ‘unconsciousness’.
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基于空间和光谱分析的咪达唑仑致镇静深度分类
区分意识的丧失与恢复是意识研究的一个重要组成部分。为了发现昏迷状态的过渡,应可靠地评估麻醉监测深度(DOA)。以往的研究提出了几种测量DOA的方法,其中全局场同步(global field synchronization, GFS)是识别清醒和麻醉状态的重要方法之一。GFS同时利用相位和振幅关系的影响,利用了全局脑电信号通道的相干性信息。然而,最近的研究表明,在进入和退出无意识的过程中,有特定的独立脑电图振幅作为意识的生物标志物。本文提出了一种基于GFS的特征提取技术,利用重复镇静状态下兴趣频率范围内的多维通道系数进行特征提取。它允许提取重要的空间和光谱特征。我们从咪达唑仑诱导的镇静和线性判别分析(LDA)中分类了“清醒”和“无意识”。结果,25名受试者的分类成绩占97.09%。结果表明,该方法是一种有效的“清醒”和“无意识”分类特征提取方法。
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