基于随机森林分类器的脑电信号自动睡眠分期方法分析与研究

Qunxia Gao, Peng Zhao, Kai Wu
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引用次数: 0

摘要

自动睡眠分期提高了工作效率,降低了人工成本。为此,对基于脑电信号的随机森林分类器睡眠阶段自动分类方法进行了分析和研究。然后,利用Sleep-EDF数据库中Fpz-Cz和Pz-Oz的双通道eleeg信号对方法进行验证。以EEG信号中6个特征波的功率谱密度为特征,构建随机森林分类器,对5种睡眠状态(W、Nl、N2、N3、REM)进行识别。比较了不同交叉验证方法和分类器的效果。当使用10倍交叉验证和随机森林分类器时表现最佳,总体分类精度、宏观平均F1值和Kappa系数分别达到91.57、69和0.819。与已有研究相比,该方法更简单有效,具有更好的鲁棒性和泛化能力,适合于自动实现。
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Analysis and Research of Automatic Sleep Staging Method with EEG signals Using Random Forest Classifier
Automatic sleep staging improves work efficiency and reduces labor costs through it. Thus, an EEG signals-based automatic sleep stages classification method with a random forest classifier is analyzed and studied. Then, two-channelEEG signals of Fpz-Cz and Pz-Oz in the Sleep-EDF database are used for validating the method. With the power spectral density of six characteristic waves in EEG signals as features, a random forest classifier is constructed to recognizefive sleep states (W, Nl, N2, N3, and REM). The effects of different cross-validation methods and classifiers are compared. It performs best when using a 10-fold cross-validation and random forest classifier with the overall classification accuracy, macro-average F1 value, and Kappa coefficient reaching 91.57, 69, and 0.819, respectively. Compared with the existing research, this method is simpler and more effective with better robustness and generalization ability and is suitable for automatic implementation.
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