Automated Sleep Stage Scoring Using Brain Effective Connectivity and EEG Signals

Masood Hamed Saghayan, Saman Seifpour, Ali Khadem
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引用次数: 1

Abstract

Sleep staging is necessary for the diagnosis of sleep disorders and evaluating the quality of sleep. Scoring of sleep stages is mainly done manually by a specialist based on Polysomnography data and mainly EEG, which is very time consuming and costly. Hence, it is essential to provide an automated method. This paper proposes an automatic sleep staging method based on brain effective connectivity. In this study, using the Granger causality criterion, causality matrices for each epoch of EEG data sampled from 10 healthy individuals were extracted as features. Then, the Gaussian SVM classifier has been employed to classify sleep stages using extracted features. For feature reduction, two algorithms, PCA and RSFS, were assessed, but we did not apply feature reduction in the final method due to the insignificant effect on classification accuracy. Finally, we were able to classify sleep stages with 72.7% accuracy and Cohen's Kappa Coefficient of 0.65. The experimental results demonstrate that the combination of Granger causality features and SVM can be used as an efficient framework for automated sleep stage scoring with regard to promising classification performance in terms of accuracy and Cohen's Kappa coefficient.
使用大脑有效连接和脑电图信号的自动睡眠阶段评分
睡眠分期是诊断睡眠障碍和评价睡眠质量的必要手段。睡眠阶段的评分主要是由专家根据多导睡眠图数据(主要是脑电图)手工完成的,这非常耗时和昂贵。因此,提供一个自动化的方法是必要的。提出了一种基于大脑有效连接的自动睡眠分期方法。在本研究中,采用格兰杰因果准则,抽取10个健康个体脑电图数据的每一历元因果矩阵作为特征。然后,利用提取的特征对睡眠阶段进行高斯支持向量机分类。对于特征约简,我们评估了PCA和RSFS两种算法,但由于对分类精度的影响不显著,我们没有在最终方法中应用特征约简。最后,我们能够以72.7%的准确率对睡眠阶段进行分类,科恩的Kappa系数为0.65。实验结果表明,格兰杰因果特征与支持向量机的结合可以作为一种有效的自动睡眠阶段评分框架,在准确率和Cohen’s Kappa系数方面都有很好的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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