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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Automatic identification of rapid eye movement sleep based on random forest using heart rate variability
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Automatic identification of rapid eye movement sleep based on random forest using heart rate variability

机译:基于随机林利用心率变异的自动识别快速眼运动睡眠

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There is broad evidence that the abnormality of rapid eye movement (REM) sleep may be an indicator of some diseases. The scientific identification of REM sleep thus plays a vital role in sleep medicine. Since the activity of autonomic nervous system (ANS) which can be reflected in heart rate variability (HRV) was associated with sleep states, we aimed to develop an automatic REM detecting system based on HRV analysis and machine learning. HRV signals which derived from 45 healthy participants were adopted and 69 HRV features were extracted and fed into a random forest (RF) classifier. We compared different strategies for the segmentation of HRV time series. The results showed a relative good classification performance by segmenting the whole record into overlapping sections, suggesting that the Surrounding Strategy overwhelms the Truncating one in RF based REM identification. Moreover, the classification performance exhibited a non-monotonic trend along with the length of the symmetric surrounding window. When there was 390 data points in such a window, we got the best performance to distinguish REM and non-REM sleeps with an accuracy of 0.84, a sensitivity of 0.80, a specificity of 0.88, a positive predictive value of 0.90, a negative predictive value of 0.85 and a kappa coefficient of 0.68. Our study showed the promising application of HRV-based methods in REM detecting, and furthermore, we threw light on the scientific segmentation of HRV signals in sleep staging. As the Surrounding strategy proposed in this study makes it possible to produce enough learning samples, our results may bring more impetus on machine learning-based algorithm, such as deep learning in this field. (C) 2019 Elsevier B.V. All rights reserved.
机译:有广泛的证据表明快速眼球运动的异常(REM)睡眠可能是某些疾病的指标。因此,REM睡眠的科学鉴定在睡眠中起着至关重要的作用。由于可以反映在心率变异性(HRV)中的自主神经系统(ANS)的活动与睡眠状态相关,我们旨在通过HRV分析和机器学习开发自动REM检测系统。采用了源自45个健康参与者的HRV信号,提取了69个HRV特征,并喂入随机林(RF)分类器。我们比较了HRV时间序列分割的不同策略。结果通过将整个记录分段为重叠部分将整个记录分段进行了相对良好的分类性能,这表明周围策略压倒了基于RF的RF中的截断一个。此外,分类性能具有非单调趋势以及对称周围窗口的长度。当这样的窗口中有390个数据点时,我们得到了以0.84的准确度区分REM和非REM睡眠的最佳性能,灵敏度为0.80,特异性为0.88,阳性预测值为0.90,是一个负面的预测值值0.85和κ系数0.68。我们的研究表明,基于HRV的方法在REM检测中,我们抛出了HRV信号在睡眠分段中的SCOLIC分割的光明。由于本研究中提出的周围策略使得可以产生足够的学习样本,我们的结果可能会对基于机器学习的算法带来更多动力,例如在该领域的深度学习。 (c)2019 Elsevier B.v.保留所有权利。

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