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An Evaluation of Cardiorespiratory and Movement Features With Respect to Sleep-Stage Classification

机译:关于睡眠阶段分类的心脏呼吸和运动特征的评估

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摘要

Polysomnography (PSG) is considered the gold standard to assess sleep accurately, but it can be expensive, time-consuming, and uncomfortable, specifically in long-term sleep studies. Actigraphy, on the other hand, is both cheap and user-friendly, but depending on the application lacks detail and accuracy. Our aim was to evaluate cardiorespiratory and movement signals in discriminating between wake, rapid-eye-movement (REM), light (N1N2), and deep (N3) sleep. The dataset comprised 85 nights of PSG from a healthy population. Starting from a total of 750 characteristic variables (features), problem-specific subsets of 40 features were forwardly selected using the combination of a wrapper method (Cohen's kappa statistic on radial basis function (RBF)-kernel support vector machine (SVM) classifier) and filter method (minimum redundancy maximum relevance criterion on mutual information). Final classification was performed using an RBF-kernel SVM. Non-subject-specific wake versus sleep classification resulted in a Cohen's kappa value of 0.695, while REM versus NREM resulted in 0.558 and N3 versus N1N2 in 0.553. The broad pool of initial features gave insight in which features discriminated best between the different classes. The classification results demonstrate the possibility of making long-term sleep monitoring more widely available.
机译:多导睡眠图(PSG)被认为是准确评估睡眠的黄金标准,但它可能昂贵,耗时且不舒服,特别是在长期睡眠研究中。另一方面,书法术既便宜又用户友好,但是取决于应用场合,它缺乏细节和准确性。我们的目的是评估心肺和运动信号,以区分唤醒,快速眼动(REM),轻度(N1N2)和深度(N3)睡眠。该数据集包含来自健康人群的85个晚上的PSG。从总共750个特征变量(特征)开始,使用包装方法(Cohen基于径向基函数的Kappa统计量(RBF)-内核支持向量机(SVM)分类器)预先选择了40个特征的特定于问题的子集。和过滤方法(互信息的最小冗余最大相关性准则)。使用RBF内核SVM执行最终分类。非受试者特定的苏醒与睡眠分类导致Cohen的kappa值为0.695,而REM对NREM的值为0.558,N3对N1N2的值为0.553。广泛的初始功能库可让您深入了解哪些功能在不同类别之间得到最好的区分。分类结果表明,可以更广泛地使用长期睡眠监测。

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