Zhu Guohun, Li Yan, Wen Peng Paul
IEEE J Biomed Health Inform. 2014 Nov;18(6):1813-21. doi: 10.1109/JBHI.2014.2303991.
The existing sleep stages classification methods are mainly based on time or frequency features. This paper classifies the sleep stages based on graph domain features from a single-channel electroencephalogram (EEG) signal. First, each epoch (30 s) EEG signal is mapped into a visibility graph (VG) and a horizontal VG (HVG). Second, a difference VG (DVG) is obtained by subtracting the edges set of the HVG from the edges set of the VG to extract essential degree sequences and to detect the gait-related movement artifact recordings. The mean degrees (MDs) and degree distributions (DDs) P (k) on HVGs and DVGs are analyzed epoch-by-epoch from 14,963 segments of EEG signals. Then, the MDs of each DVG and HVG and seven distinguishable DD values of P (k) from each DVG are extracted. Finally, nine extracted features are forwarded to a support vector machine to classify the sleep stages into two, three, four, five, and six states. The accuracy and kappa coefficients of six-state classification are 87.5% and 0.81, respectively. It was found that the MDs of the VGs on the deep sleep stage are higher than those on the awake and light sleep stages, and the MDs of the HVGs are just the reverse.
现有的睡眠阶段分类方法主要基于时间或频率特征。本文基于单通道脑电图(EEG)信号的图域特征对睡眠阶段进行分类。首先,将每个时段(30秒)的EEG信号映射到一个可见性图(VG)和一个水平可见性图(HVG)中。其次,通过从VG的边集减去HVG的边集来获得差异可见性图(DVG),以提取基本度序列并检测与步态相关的运动伪迹记录。从14963段EEG信号中逐时段分析HVG和DVG上的平均度(MD)和度分布(DD)P(k)。然后,提取每个DVG的MD以及每个DVG的P(k)的七个可区分的DD值。最后,将提取的九个特征输入支持向量机,将睡眠阶段分为两、三、四、五和六种状态。六状态分类的准确率和kappa系数分别为87.5%和0.81。研究发现,深度睡眠阶段VG的MD高于清醒和浅睡眠阶段,而HVG的MD则相反。