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Automated Sleep Staging Using Detrended Fluctuation Analysis of Sleep EEG

机译:自动睡眠分期使用睡眠脑电图的衰减波动分析

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An accurate sleep staging is crucial for the treatment of sleep disorders. Recently some studies demonstrated that the long range correlations of many physiological signals measured during sleep show some variations during the different sleep stages. In this study, detrended fluctuation analysis (DFA) is used to study the electroencephalogram (EEG) signal autocorrelation during different sleep stages. A classification of these stages is then made by introducing the calculated DFA power law exponents to a K-Nearest Neighbor classifier. Our study reveals that a 2-D feature space composed of the DFA power law exponents of both the filtered THETA and BETA brain waves resulted in a classification accuracy of 94.44%, 91.66% and 83.33% for the wake, non-rapid eye movement and rapid eye movement stages, respectively. We conclude that it might be possible to build an automated sleep assessment system based on DFA analysis of the sleep EEG signal.
机译:准确的睡眠分期对于治疗睡眠障碍至关重要。最近一些研究表明,在睡眠期间测量的许多生理信号的长距离相关性在不同的睡眠阶段显示一些变化。在该研究中,用于在不同睡眠阶段期间的脑电图(EEG)信号自相关来研究延迟波动分析(DFA)。然后通过将计算的DFA电力律指数引入K到最近邻分类器来进行这些阶段的分类。我们的研究表明,由过滤的THETA和β脑波的DFA电力律指数组成的二维特征空间,唤醒,非快速眼球运动的分类精度为94.44%,91.66%和83.33%快速眼球运动阶段。我们得出结论,可以基于睡眠EEG信号的DFA分析构建自动睡眠评估系统。

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