Huang Chih-Sheng, Lin Chun-Ling, Ko Li-Wei, Liu Shen-Yi, Su Tung-Ping, Lin Chin-Teng
Brain Research Center, National Chiao-Tung University Hsinchu, Taiwan ; Institute of Electrical Control Engineering, National Chiao-Tung University Hsinchu, Taiwan.
Brain Research Center, National Chiao-Tung University Hsinchu, Taiwan ; Department of Electrical Engineering, Ming Chi University of Technology New Taipei City, Taiwan.
Front Neurosci. 2014 Sep 4;8:263. doi: 10.3389/fnins.2014.00263. eCollection 2014.
Sleep quality is important, especially given the considerable number of sleep-related pathologies. The distribution of sleep stages is a highly effective and objective way of quantifying sleep quality. As a standard multi-channel recording used in the study of sleep, polysomnography (PSG) is a widely used diagnostic scheme in sleep medicine. However, the standard process of sleep clinical test, including PSG recording and manual scoring, is complex, uncomfortable, and time-consuming. This process is difficult to implement when taking the whole PSG measurements at home for general healthcare purposes. This work presents a novel sleep stage classification system, based on features from the two forehead EEG channels FP1 and FP2. By recording EEG from forehead, where there is no hair, the proposed system can monitor physiological changes during sleep in a more practical way than previous systems. Through a headband or self-adhesive technology, the necessary sensors can be applied easily by users at home. Analysis results demonstrate that classification performance of the proposed system overcomes the individual differences between different participants in terms of automatically classifying sleep stages. Additionally, the proposed sleep stage classification system can identify kernel sleep features extracted from forehead EEG, which are closely related with sleep clinician's expert knowledge. Moreover, forehead EEG features are classified into five sleep stages by using the relevance vector machine. In a leave-one-subject-out cross validation analysis, we found our system to correctly classify five sleep stages at an average accuracy of 76.7 ± 4.0 (SD) % [average kappa 0.68 ± 0.06 (SD)]. Importantly, the proposed sleep stage classification system using forehead EEG features is a viable alternative for measuring EEG signals at home easily and conveniently to evaluate sleep quality reliably, ultimately improving public healthcare.
睡眠质量很重要,尤其是考虑到与睡眠相关的病症数量众多。睡眠阶段的分布是量化睡眠质量的一种高效且客观的方法。作为睡眠研究中使用的标准多通道记录方式,多导睡眠图(PSG)是睡眠医学中广泛使用的诊断方案。然而,睡眠临床测试的标准流程,包括PSG记录和人工评分,复杂、让人不适且耗时。当出于一般医疗保健目的在家中进行完整的PSG测量时,这个过程很难实施。这项工作提出了一种基于前额两个脑电图(EEG)通道FP1和FP2特征的新型睡眠阶段分类系统。通过记录前额无毛发处的脑电图,该系统能够以比以往系统更实用的方式监测睡眠期间的生理变化。通过头带或自粘技术,用户可以轻松在家中应用必要的传感器。分析结果表明,该系统在自动分类睡眠阶段方面的分类性能克服了不同参与者之间的个体差异。此外,所提出的睡眠阶段分类系统能够识别从前额脑电图中提取的关键睡眠特征,这些特征与睡眠临床医生的专业知识密切相关。而且,前额脑电图特征通过使用相关向量机被分类为五个睡眠阶段。在留一法交叉验证分析中,我们发现我们的系统能够以76.7±4.0(标准差)%的平均准确率正确分类五个睡眠阶段[平均卡帕值为0.68±0.06(标准差)]。重要的是,所提出的使用前额脑电图特征的睡眠阶段分类系统是一种可行的替代方案,能够轻松方便地在家中测量脑电图信号,以可靠地评估睡眠质量,最终改善公共医疗保健。