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Ensemble SVM Method for Automatic Sleep Stage Classification

机译:用于自动睡眠阶段分类的合奏SVM方法

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Sleep scoring is used as a diagnostic technique in the diagnosis and treatment of sleep disorders. Automated sleep scoring is crucial, since the large volume of data should be analyzed visually by the sleep specialists which is burdensome, time-consuming tedious, subjective, and error prone. Therefore, automated sleep stage classification is a crucial step in sleep research and sleep disorder diagnosis. In this paper, a robust system, consisting of three modules, is proposed for automated classification of sleep stages from the single-channel electroencephalogram (EEG). In the first module, signals taken from Pz-Oz electrode were denoised using multiscale principal component analysis. In the second module, the most informative features are extracted using discrete wavelet transform (DWT), and then, statistical values of DWT subbands are calculated. In the third module, extracted features were fed into an ensemble classifier, which can be called as rotational support vector machine (RotSVM). The proposed classifier combines advantages of the principal component analysis and SVM to improve classification performances of the traditional SVM. The sensitivity and accuracy values across all subjects were 84.46% and 91.1%, respectively, for the five-stage sleep classification with Cohen's kappa coefficient of 0.88. Obtained classification performance results indicate that, it is possible to have an efficient sleep monitoring system with a single-channel EEG, and can be used effectively in medical and home-care applications.
机译:睡眠评分被用作睡眠障碍诊断和治疗中的诊断技术。自动睡眠评分至关重要,由于睡眠专家应该在视觉上分析大量数据,这是繁重,耗时的繁琐,主观和易于错误的。因此,自动睡眠阶段分类是睡眠研究和睡眠障碍诊断的关键步骤。在本文中,提出了一种由三个模块组成的鲁棒系统,用于自动分类来自单通道脑电图(EEG)的睡眠阶段。在第一模块中,使用多尺度主成分分析,从PZ-OZ电极取出的信号。在第二模块中,使用离散小波变换(DWT)提取最大信息特征,然后计算DWT子带的统计值。在第三模块中,将提取的特征馈入集合分类器,其可以称为旋转支持向量机(ROLSVM)。所提出的分类器结合了主成分分析和SVM的优点,以改善传统SVM的分类性能。对于具有0.88的COHEN的Kappa系数,所有受试者对所有受试者的敏感性和精度分别为84.46%和91.1%。获得的分类性能结果表明,可以使用单通道EEG具有高效的睡眠监控系统,可有效地使用医疗和家庭护理应用。

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