Key Laboratory of Advanced Control and Optimization for Chemical Processes, East China University of Science and Technology, Ministry of Education, Shanghai, China.
Department of Automation, School of Information Science and Engineering, East China University of Science and Technology, Shanghai, China.
Comput Intell Neurosci. 2017;2017:4574079. doi: 10.1155/2017/4574079. Epub 2017 Nov 5.
Feature extraction from physiological signals of EEG (electroencephalogram) is an essential part for sleep staging. In this study, multidomain feature extraction was investigated based on time domain analysis, nonlinear analysis, and frequency domain analysis. Unlike the traditional feature calculation in time domain, a sequence merging method was developed as a preprocessing procedure. The objective is to eliminate the clutter waveform and highlight the characteristic waveform for further analysis. The numbers of the characteristic activities were extracted as the features from time domain. The contributions of features from different domains to the sleep stages were compared. The effectiveness was further analyzed by automatic sleep stage classification and compared with the visual inspection. The overnight clinical sleep EEG recordings of 3 patients after the treatment of Continuous Positive Airway Pressure (CPAP) were tested. The obtained results showed that the developed method can highlight the characteristic activity which is useful for both automatic sleep staging and visual inspection. Furthermore, it can be a training tool for better understanding the appearance of characteristic waveforms from raw sleep EEG which is mixed and complex in time domain.
从 EEG(脑电图)生理信号中提取特征是睡眠分期的重要组成部分。在这项研究中,基于时域分析、非线性分析和频域分析,研究了多域特征提取。与传统的时域特征计算不同,开发了一种序列合并方法作为预处理过程。其目的是消除杂乱的波形,突出特征波形,以便进一步分析。从时域中提取特征活动的数量作为特征。比较了不同域的特征对睡眠阶段的贡献。通过自动睡眠分期分析,并与视觉检查进行比较,进一步分析了有效性。对 3 例接受持续气道正压通气(CPAP)治疗后的患者的夜间临床睡眠 EEG 记录进行了测试。结果表明,所开发的方法可以突出特征活动,这对自动睡眠分期和视觉检查都很有用。此外,它可以作为一种训练工具,更好地了解从原始睡眠 EEG 中提取的特征波形的出现,这些特征波形在时域中是混合和复杂的。