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Sleep/wake classification using cardiorespiratory features extracted from photoplethysmogram

机译:使用从光电容积描记图中提取的心肺功能对睡眠/苏醒进行分类

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Human sleep cyclically alternates between wakefulness and different sleep stages. There are various physiological changes that occur during wakefulness and sleep transitions. In particular, fluctuations occur in cardiorespiratory activity, mainly determined by the autonomic nervous system. The purpose of this study was to implement a multivariate logistic regression model to classify 30-second epochs of an overnight sleep dataset into awake and sleep states using the features extracted from the photoplethysmogram (PPG). The extracted features provided information about heart rate variability, respiratory activity, vascular tone and body movement. Overnight PPG signals were collected using a smartphone-based pulse oximeter, simultaneously with standard polysomnography from 160 children at the British Columbia Children's hospital. The sleep technician scored all wake/sleep epochs throughout the PSG study. We divided the dataset into training data, used to develop the model using LASSO, and test data, used to validate the model. The developed model was assessed epoch-by-epoch for each subject individually, andfor the complete test dataset. The performance of the model on the full test dataset showed a median accuracy of 77%, sensitivity of 80%, and specificity of 70%. Thus, providing a detailed epoch-by-epoch analysis with at-home pulse oximetry alone is feasible with accuracy, sensitivity and specificity values above 70%. However, the performance of the model might decrease when analyzing subjects with a high number epochs of wakefulness.
机译:人类的睡眠周期性地在清醒和不同的睡眠阶段之间交替。在清醒和睡眠过渡期间会发生各种生理变化。特别是,主要由自主神经系统决定的心肺活动出现波动。这项研究的目的是实施一个多变量logistic回归模型,使用从光电容积描记图(PPG)中提取的特征将一夜睡眠数据集的30秒历时分为清醒状态和睡眠状态。提取的特征提供有关心率变异性,呼吸活动,血管紧张度和身体运动的信息。使用基于智能手机的脉搏血氧仪和标准的多导睡眠监测仪从不列颠哥伦比亚省儿童医院的160名儿童中收集了隔夜的PPG信号。睡眠技术人员在整个PSG研究中对所有唤醒/睡眠时期进行了评分。我们将数据集分为训练数据(用于使用LASSO开发模型)和测试数据(用于验证模型)。针对每个受试者以及完整的测试数据集逐个评估了开发的模型。该模型在完整测试数据集上的性能显示中值准确度为77%,灵敏度为80%,特异性为70%。因此,仅使用家庭脉搏血氧饱和度法进行详细的逐周期分析是可行的,其准确性,敏感性和特异性值均高于70%。但是,当分析具有大量清醒时期的对象时,模型的性能可能会降低。

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