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Sleep stages classification based on heart rate variability and random forest

机译:基于心率变异性和随机森林的睡眠阶段分类

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摘要

An alternative technique for sleep stages classification based on heart rate variability (HRV) was presented in this paper. The simple subject specific scheme and a more practical subject independent scheme were designed to classify wake, rapid eye movement (REM) sleep and non-REM (NREM) sleep. 41 HRV features extracted from RR sequence of 45 healthy subjects were trained and tested through random forest (RF) method. Among the features, 25 were newly proposed or applied to sleep study for the first time. For the subject independent classifier, all features were normalized with our developed fractile values based method. Besides, the importance of each feature for sleep staging was also assessed by RF and the appropriate number of features was explored. For the subject specific classifier, a mean accuracy of 88.67% with Cohen's kappa statistic k of 0.7393 was achieved. While the accuracy and κ dropped to 72.58% and 0.4627, respectively when the subject independent classifier was considered. Some new proposed HRV features even performed more effectively than the conventional ones. The proposed method could be used as an alternative or aiding technique for rough and convenient sleep stages classification.
机译:本文提出了一种基于心率变异性(HRV)的睡眠阶段分类的替代技术。设计了简单的主题特定计划和更实用的主题独立计划,以对唤醒,快速眼动(REM)睡眠和非REM(NREM)睡眠进行分类。通过随机森林(RF)方法对从45名健康受试者的RR序列中提取的41种HRV特征进行了训练和测试。在这些功能中,有25个是新提议或首次用于睡眠研究。对于主题独立分类器,所有特征均使用我们开发的基于分数值的方法进行归一化。此外,RF还评估了每种功能对于睡眠分期的重要性,并探索了适当数量的功能。对于主题特定的分类器,科恩的k统计值k为0.7393,平均准确度达到了88.67%。当考虑主题独立分类器时,准确性和κ分别降至72.58%和0.4627。某些新提出的HRV功能甚至比传统功能更有效。所提出的方法可以用作粗略和方便的睡眠阶段分类的替代或辅助技术。

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