首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >The addition of entropy-based regularity parameters improves sleep stage classification based on heart rate variability
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The addition of entropy-based regularity parameters improves sleep stage classification based on heart rate variability

机译:基于熵的规则性参数的添加提高了基于心率变异性的睡眠阶段分类

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摘要

The work considers automatic sleep stage classification, based on heart rate variability (HRV) analysis, with a focus on the distinction of wakefulness (WAKE) from sleep and rapid eye movement (REM) from non-REM (NREM) sleep. A set of 20 automatically annotated one-night polysomnographic recordings was considered, and artificial neural networks were selected for classification. For each inter-heartbeat (RR) series, beside features previously presented in literature, we introduced a set of four parameters related to signal regularity. RR series of three different lengths were considered (corresponding to 2, 6, and 10 successive epochs, 30 s each, in the same sleep stage). Two sets of only four features captured 99 % of the data variance in each classification problem, and both of them contained one of the new regularity features proposed. The accuracy of classification for REM versus NREM (68.4 %, 2 epochs; 83.8 %, 10 epochs) was higher than when distinguishing WAKE versus SLEEP (67.6 %, 2 epochs; 71.3 %, 10 epochs). Also, the reliability parameter (Cohens's Kappa) was higher (0.68 and 0.45, respectively). Sleep staging classification based on HRV was still less precise than other staging methods, employing a larger variety of signals collected during polysomnographic studies. However, cheap and unobtrusive HRV-only sleep classification proved sufficiently precise for a wide range of applications.
机译:该工作考虑了自动睡眠阶段分类,基于心率变异性(HRV)分析,重点关注来自非REM(NREM)睡眠的睡眠和快速眼球运动(REM)的觉醒(唤醒)的区别。考虑了一组20自动注释的单夜多仪表录制,选择人工神经网络进行分类。对于每个心跳间(RR)系列,在以前在文献中呈现的功能旁边,我们介绍了一组与信号规律相关的四个参数。考虑了三种不同长度的RR系列(对应于2,6和10个连续的时期,每次30秒,在同一睡眠阶段)。两组只有四个功能捕获了每个分类问题的数据方差99%,并且它们都包含了一个建议的新规则性功能之一。 REM与NREM分类的准确性(68.4%,2个时期; 83.8%,10个时期)高于区分唤醒与睡眠时(67.6%,2个时期; 71.3%,10时期)。此外,可靠性参数(Cohens的Kappa)分别更高(分别为0.68和0.45)。基于HRV的睡眠分类分类仍然比其他分期方法更低,采用多种信号在多瘤研究期间收集的各种信号。但是,对于广泛的应用,廉价和不引人注目的HRV睡眠分类证明是充分精确的。

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