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Improving sleep/wake classification with recurrence quantification analysis features

机译:通过循环量化分析功能改善睡眠/觉醒分类

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In this work the method of Recurrence Quantification Analysis (RQA), often used for the analysis of complex dynamic systems, is employed to extract novel features for sleep/wake classification only using cardio-respiratory signals like electrocardiogram (ECG), heart rate (HR) and respiratory effort (RE). A polysomnography data set consisting of 313 full-night recordings is used to evaluate the features. The sleep/wake classification is performed with a classifier based on Linear Discriminant Analysis (LDA) and it is validated in a Leave One Subject Out cross-validation (LOSOCV) scheme. More than 1300 features are extracted from five different cardio-respiratory modalities (ECG, RE, HR, and combinations of ECG+ RE and RE + HR). Each modality is processed to obtain 13 basic RQA features, five post-processed versions and, furthermore, three normalizations are applied, leading to a total count of 975 RQA features. From literature, 126 known cardio-respiratory and actigraphy features, normalized with the same procedures thus resulting in 378 distinct features, are used for performance comparison. A feature selection method based on the Mahalanobis distance and the inter-feature correlation is used to determine the most relevant features of both sets, resulting in a set of 158 from the existing features (set A) and 232 from the RQA based features (set B). The pooled Cohen's kappa coefficient for set A and set B is 0.586 and 0.522, respectively. The combination of both feature sets (set C) improves the kappa value to 0.625.In addition, ROC and PR curves with their corresponding Area Under Curve (AUC) values are computed. It is also shown that derived sleep statistics (sleep efficiency, sleep onset, total sleep time, etc.) deviate less with respect to the ground truth annotations using the additional RQA features compared to the use of literature-based features only.Besides the overall performance, the data set is split into six different but almost equally sized age and sex groups to allow unbiased comparisons among each other. It is shown, that the classification performance decreases with increasing age but is almost independent from sex. Hence, for future work it is suggested to implement the RQA features and also to focus on the improvement of features especially for elderly persons. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在这项工作中,经常用于复杂动态系统分析的循环定量分析(RQA)方法仅通过使用心电图(ECG),心率(HR)等心肺信号来提取睡眠/苏醒分类的新特征。 )和呼吸力(RE)。多导睡眠图数据集由313个整夜记录组成,用于评估功能。睡眠/唤醒分类是使用基于线性判别分析(LDA)的分类器执行的,并在“遗忘一物”交叉验证(LOSOCV)方案中进行了验证。从五种不同的心肺模式(ECG,RE,HR以及ECG + RE和RE + HR的组合)中提取了1300多个特征。每个模态都经过处理以获得13个基本RQA功能,五个后处理版本,并且还应用了三个规范化,因此总数为975个RQA功能。从文献中,将126个已知的心肺功能和心电图特征(以相同的程序进行标准化),从而得到378个不同的特征,用于性能比较。使用基于马氏距离和特征间相关性的特征选择方法来确定这两个集合中最相关的特征,从而从现有特征(集合A)中获得158个集合,从基于RQA的特征(集合中​​得出232个) B)。集合A和集合B的合并Cohenκ系数分别为0.586和0.522。这两个特征集(集合C)的组合将kappa值提高到0.625。此外,还计算了ROC和PR曲线及其对应的曲线下面积(AUC)值。还表明,与仅使用基于文献的功能相比,使用附加的RQA功能得出的睡眠统计数据(睡眠效率,睡眠发作,总睡眠时间等)与地面真相注释的偏差较小。在性能方面,该数据集被分为六个不同但大小均相等的年龄组和性别组,以实现彼此之间的无偏比较。结果表明,分类性能随着年龄的增长而降低,但几乎与性别无关。因此,在以后的工作中,建议实施RQA功能,并着重于改进功能,尤其是针对老年人。 (C)2018 Elsevier Ltd.保留所有权利。

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