Department of Electrical and Computer Engineering, University of Cyprus, Kallipoleos 75, Nicosia 1678, Cyprus.
Clin EEG Neurosci. 2011 Jan;42(1):24-8. doi: 10.1177/155005941104200107.
This work proposes the use of Permutation Entropy (PE), a measure of time-series complexity, to characterize electroencephalogram (EEG) signals recorded during sleep. Such a measure could provide information concerning the different sleep stages and, thus, be utilized as an additional aid to obtain sleep staging information. PE has been estimated for artifact-free 30s segments from more than 80 hours of EEG records obtained from 16 subjects during all-night recordings, from which the mean PE for each sleep stage was obtained. It was found that different sleep stages are characterized by significantly different PE values, which track the physiological changes in the complexity of the EEG signals observed at the different sleep stages. This finding encourages the use of PE as an additional aide to either visual or automated sleep staging.
本研究提出使用排列熵(Permutation Entropy,PE)这一时间序列复杂度的度量方法,来对睡眠期间记录的脑电图(EEG)信号进行特征描述。该度量方法可以提供有关不同睡眠阶段的信息,因此可以作为获得睡眠分期信息的额外辅助手段。对 16 名受试者整夜记录的超过 80 小时的 EEG 记录中无伪迹的 30 秒片段进行了 PE 估计,并获得了每个睡眠阶段的平均 PE 值。研究发现,不同的睡眠阶段具有显著不同的 PE 值,这些值反映了在不同睡眠阶段观察到的 EEG 信号复杂度的生理变化。这一发现鼓励使用 PE 作为视觉或自动睡眠分期的附加辅助手段。