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Sleep stage classification based on noise-reduced fractal property of heart rate variability

机译:睡眠阶段分类基于心率变异性降噪分数

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The aim of this study is to examine distinctive features related to sleep stages (wake, light sleep, deep sleep) from heart rate variability (HRV) and evaluate their usefulness in classifying sleep stages. To this end, we looked into DFA alpha1 sequence (DFAseq) in which DFA (Detrended fluctuation analysis) alpha1 values are calculated for every R points of HRV signal over time. This DFAseq can be interpreted as a variation of the fractal property of HRV over time. To investigate the DFAseq data, we reduced noise component from them using the empirical mode decomposition (EMD) method. For experiments, we used the CAP-sleep database from PhysioNet and evaluated the relevance between the noise-reduced DFA alpha1 sequence (NR-DFAseq) and the sleep stage sequence. Our results on 13 subjects showed that the correlation coefficient between sleep stage sequence and NR-DFAseq are 0.65 on the average, while the correlation coefficient without noise reduction is 0.42. For sleep stage classification, we constructed a prediction model that distinguish wake stage from the other sleep stages based on NR-DFAseq, and obtained 77% of sensitivity and 73% of specificity from the model. In addition, we constructed a model that distinguishes deep sleep from light sleep, and obtained 72% of the classification accuracy from the model. Interestingly, our prediction results only with NR-DFAseq are better than some recent study that employed multiple features extracted from heart beat signals. Therefore, it might be worthwhile to see that the noised-reduced fractal property of HRV could be highly correlated with the sleep stage.
机译:本研究的目的是检查与心率变异性(HRV)的睡眠阶段(唤醒,光睡眠,深睡眠)相关的独特特征,并评估其在分类睡眠阶段的实用性。为此,我们研究了DFA alpha1序列(dfaseq),其中DFA(减法波动分析)alpha1值随时间的每个R点计算。该DFaseq可以被解释为HRV随时间的分形特性的变化。为了研究DFASEQ数据,我们使用经验模式分解(EMD)方法从它们中降低噪声分量。对于实验,我们使用来自物理体的帽睡眠数据库,并评估了降噪DFAα1序列(NR-DFAseq)和睡眠阶段序列之间的相关性。我们的13个受试者的结果表明,平均睡眠阶段序列和NR-DFaseq之间的相关系数为0.65,而没有降噪的相关系数为0.42。对于睡眠阶段分类,我们构建了一种基于NR-DFaseq的其他睡眠阶段的唤醒阶段的预测模型,并获得了77%的灵敏度和73%的模型特异性。此外,我们构建了一种模型,区分深睡眠从轻睡眠,并获得了模型的72%的分类精度。有趣的是,我们的预测结果仅具有NR-DFaseq优于一些最近的研究,这些研究采用了从心跳信号中提取的多个特征。因此,有价值的是,有值得注于,HRV的发声分形性能与睡眠阶段高度相关。

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