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Online Single EEG Channel Based Automatic Sleep Staging

机译:基于在线单EEG通道的自动睡眠分级

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摘要

Recent evidence supports the positive effects of external intervention during specific sleep stages (e.g. enhanced memory consolidation and depression relief). To enable timely intervention, online automated sleep staging is required and preferably with short latency. In this paper, we propose an approach to achieve this based on the analysis of spectral features of a single electroencephalogram (EEG) channel and the use of Gaussian Mixture Models. We compare among several choices for the EEG signal location, the type of spectral features, and the duration of the signal segment (epoch) that is required to automatically identify the sleep stage. The performance metric used for comparison purposes is the kappa statistic, which measures the agreement between the automatic and manual sleep staging. The performance is higher when central EEG locations (C3, C4), longer epochs, and the power in five frequency bands are used. However, good results (kappa=0.6) can also be obtained for an epoch duration of 12 seconds.
机译:最近的证据支持在特定的睡眠阶段进行外部干预的积极作用(例如,增强记忆巩固和抑郁缓解)。为了能够及时进行干预,需要在线自动睡眠分期,并且最好具有较短的等待时间。在本文中,我们基于分析单个脑电图(EEG)通道的频谱特征并使用高斯混合模型,提出了一种实现此目标的方法。我们在EEG信号位置,频谱特征的类型以及自动识别睡眠阶段所需的信号段(历元)的持续时间的几种选择之间进行比较。用于比较目的的性能指标是kappa统计信息,用于衡量自动和手动睡眠阶段之间的一致性。当使用中央EEG位置(C3,C4),较长的时间段以及五个频段的功率时,性能会更高。然而,对于12秒的历时持续时间,也可以获得良好的结果(kappa = 0.6)。

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