Department of Electrical and Electronic Engineering, Bangladesh University of Engineering and Technology, Dhaka, 1205, Bangladesh.
Institute of Biomaterials and Biomedical Engineering, University of Toronto, Toronto, ON, Canada.
Comput Biol Med. 2018 Nov 1;102:211-220. doi: 10.1016/j.compbiomed.2018.08.022. Epub 2018 Aug 22.
Sleep stage classification is an important task for the timely diagnosis of sleep disorders and sleep-related studies. In this paper, automatic scoring of sleep stages using Electrooculogram (EOG) is presented. Single channel EOG signals are analyzed in Discrete Wavelet Transform (DWT) domain employing various statistical features such as Spectral Entropy, Moment-based Measures, Refined Composite Multiscale Dispersion Entropy (RCMDE) and Autoregressive (AR) Model Coefficients. The discriminating ability of the features is studied using the One Way Analysis of Variance (ANOVA) and box plots. A feature reduction algorithm based on Neighborhood Component Analysis is used to reduce the model complexity and select the features with highest discriminating abilities. Random Under-Sampling Boosting (RUSBoost), Random Forest (RF) and Support Vector Machine (SVM) are employed to classify various sleep stages for 2-6 stage classification problem. Performance of the proposed method is studied using three publicly available databases, the Sleep-EDF, Sleep-EDFX and ISRUC-Sleep databases consisting of 8, 20 and 10 subjects respectively. The proposed method outperforms the state-of-the-art EOG based techniques in accuracy. In addition, its performance is shown to be on par or better than those of various single channel EEG based methods. An important limitation of existing sleep detection methods is the low accuracy of the S1 sleep stage classification for which the proposed method using the RUSBoost classifier gives a superior accuracy as compared to those of EOG and EEG based techniques.
睡眠阶段分类是及时诊断睡眠障碍和睡眠相关研究的重要任务。本文提出了一种使用眼电图(EOG)自动进行睡眠阶段评分的方法。在离散小波变换(DWT)域中分析单通道 EOG 信号,利用各种统计特征,如谱熵、基于矩的度量、改进复合多尺度散布熵(RCMDE)和自回归(AR)模型系数。使用单向方差分析(ANOVA)和箱线图研究特征的判别能力。基于邻域成分分析的特征降维算法用于降低模型复杂度并选择具有最高判别能力的特征。随机欠采样提升(RUSBoost)、随机森林(RF)和支持向量机(SVM)用于对 2-6 阶段分类问题的各种睡眠阶段进行分类。使用三个公开可用的数据库,即 Sleep-EDF、Sleep-EDFX 和 ISRUC-Sleep 数据库,研究了所提出方法的性能,这些数据库分别包含 8、20 和 10 个受试者。所提出的方法在准确性方面优于基于 EOG 的最新技术。此外,它的性能与各种基于单通道 EEG 的方法相当或更好。现有睡眠检测方法的一个重要局限性是 S1 睡眠阶段分类的准确性较低,与基于 EOG 和 EEG 的技术相比,使用 RUSBoost 分类器的方法在 S1 睡眠阶段分类的准确性方面具有优势。