通过脑电图探索揭示意识水平的神经生理学标记

Jingming Gong, Linfeng Sui, Ran Zhang, Boning Li, Chengyuan Shen, ,Taiyo Maeda, Jianting Cao
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引用次数: 0

摘要

意识水平的概念通常是指与个体的认知、感知、思考和意识相关的各个方面和层次。虽然目前还没有明确的神经生理学标记来区分这些细微的层次,但本文介绍了一种稳健的标记--近似熵(ApEn),它可以量化脑电信号的复杂性,从而区分意识改变的状态。利用 ApEn,我们分析了额叶--与意识密切相关的区域--的脑电图数据,这些数据显示了严重的意识改变状态,特别是麻醉、昏迷和脑死亡。为了提高意识水平评估的精确度,我们采用了支持向量机(SVM)模型,该模型根据脑电图的复杂度对状态进行分类。这种方法不仅为了解与这些临界状态变化相关的神经相关性提供了宝贵的见解,还凸显了将脑电图定量分析与机器学习技术相结合以促进我们对意识的理解的潜力。研究结果表明,使用 ApEn 分析脑电图的复杂性并结合 SVM 分类,为评估和区分意识程度提供了一种新颖而有效的方法。这种方法有望对临床诊断和病人监护产生重大影响。
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Unveiling Neurophysiological Markers of Consciousness Levels through EEG Exploration
The concept of consciousness levels typically refers to various aspects and tiers related to an individual’s cognition, perception, thinking, and awareness. Although neurophysiological markers have not yet been definitively identified to distinguish between these nuanced levels, this paper introduces a robust marker, the Approximate Entropy (ApEn), which quantifies the complexity of EEG signals to differentiate states of altered consciousness. Utilizing ApEn, we analyze EEG data from the frontal lobe—a region closely associated with consciousness—in states indicative of severely altered conditions, specifically anesthesia, coma, and brain death. To enhance the precision of consciousness levelassessment, we employ a Support Vector Machine (SVM) model, which classifies the states based on EEG complexity measures. This approach not only provides valuable insights into the neural correlations associated with changes in these critical states but also underscores the potential of combining quantitative EEG analysis with machine learning techniques to advance our understanding of consciousness. The findings demonstrate that EEG complexity, when analyzed using ApEn coupled with SVM classification, offers a novel and effective method for assessing and distinguishing between degrees of consciousness. This approach promises significant implications for clinical diagnostics and patient monitoring.
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