首页> 外文期刊>Computer Methods and Programs in Biomedicine: An International Journal Devoted to the Development, Implementation and Exchange of Computing Methodology and Software Systems in Biomedical Research and Medical Practice >Phase space and power spectral approaches for EEG-based automatic sleep-wake classification in humans: A comparative study using short and standard epoch lengths
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Phase space and power spectral approaches for EEG-based automatic sleep-wake classification in humans: A comparative study using short and standard epoch lengths

机译:基于EEG的人类自动睡眠-觉醒分类的相空间和功率谱方法:使用短时和标准时长的比较研究

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Sleep disorders in humans have become a public health issue in recent years. Sleep can be analysed by studying the electroencephalogram (EEG) recorded during a night's sleep. Alternating between sleep-wake stages gives information related to the sleep quality and quantity since this alternating pattern is highly affected during sleep disorders. Spectral composition of EEG signals varies according to sleep stages, alternating phases of high energy associated to low frequency (deep sleep) with periods of low energy associated to high frequency (wake and light sleep). The analysis of sleep in humans is usually made on periods (epochs) of 30-s length according to the original Rechtschaffen and Kales sleep scoring manual. In this work, we propose a new phase space-based (mainly based on Poincar?? plot) algorithm for automatic classification of sleep-wake states in humans using EEG data gathered over relatively short-time periods. The effectiveness of our approach is demonstrated through a series of experiments involving EEG data from seven healthy adult female subjects and was tested on epoch lengths ranging from 3-s to 30-s. The performance of our phase space approach was compared to a 2-dimensional state space approach using the power spectral (PS) in two selected human-specific frequency bands. These powers were calculated by dividing integrated spectral amplitudes at selected human-specific frequency bands. The comparison demonstrated that the phase space approach gives better performance in the case of short as well as standard 30-s epoch lengths. ? 2012 Elsevier Ireland Ltd.
机译:近年来,人类的睡眠障碍已成为公共卫生问题。可以通过研究夜间睡眠期间记录的脑电图(EEG)来分析睡眠。睡眠唤醒阶段之间的交替提供了与睡眠质量和数量有关的信息,因为这种交替模式在睡眠障碍期间会受到很大影响。脑电信号的频谱组成根据睡眠阶段,与低频相关的高能量(深度睡眠)与与高频相关的低能量周期(唤醒和轻度睡眠)的交替阶段而变化。根据原始的Rechtschaffen和Kales睡眠评分手册,通常在30秒长的时间段内对人类的睡眠进行分析。在这项工作中,我们提出了一种新的基于相空间的(主要基于Poincar ?? plot)算法,该算法使用在相对较短的时间段内收集的EEG数据对人的睡眠-觉醒状态进行自动分类。我们的方法的有效性通过一系列涉及7名健康成年女性受试者的EEG数据的实验证明,并在3到30 s的历元长度上进行了测试。我们将相位空间方法的性能与使用两个选定的人类特定频段中的功率谱(PS)的二维状态空间方法进行了比较。这些功率是通过在选定的人类特定频段划分积分频谱幅度来计算的。比较结果表明,在较短以及标准的30秒历元长度的情况下,相空间方法都能提供更好的性能。 ? 2012爱思唯尔爱尔兰有限公司

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