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Automatic Detection of Arousals During Sleep Using Multiple Physiological Signals

机译:使用多种生理信号自动检测睡眠中的唤醒

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The visual scoring of arousals during sleep routinely conducted by sleep experts is a challenging task warranting an automatic approach. This paper presents an algorithm for automatic detection of arousals during sleep. Using the PhysioNet/CinC Challenge dataset, an 80-20% subject-level split was performed to create in-house training and test sets, respectively. The data for each subject in the training set was split to 30-second epochs with no overlap. A total of 428 features from EEG, EMG, EOG, airflow, and SaO2 in each epoch were extracted and used for creating subject-specific models based on an ensemble of bagged classification trees, resulting in 943 models. For marking arousal and non-arousal regions in the test set, the data in the test set was split to 30-second epochs with 50% overlaps. The average of arousal probabilities from different patient-specific models was assigned to each 30-second epoch and then a sample-wise probability vector with the same length as test data was created for model evaluation. Using the PhysioNet/CinC Challenge 2018 scoring criteria, AUPRCs of 0.25 and 0.21 were achieved for the in-house test and blind test sets, respectively.
机译:睡眠专家对睡眠过程中的觉醒进行视觉评分是一项具有挑战性的任务,需要采用自动方法。本文提出了一种自动检测睡眠中觉醒的算法。使用PhysioNet / CinC Challenge数据集,进行了80-20%的主题级别拆分,以分别创建内部培训和测试集。训练集中每个受试者的数据被划分为30秒纪元,没有重叠。每个时期总共提取了428个来自EEG,EMG,EOG,气流和SaO2的特征,并用于根据袋装分类树的集合创建特定于主题的模型,从而产生了943个模型。为了标记测试集中的唤醒区域和非唤醒区域,将测试集中的数据划分为30秒的时间段,重叠率达到50%。将来自不同患者特定模型的平均唤醒概率分配给每个30秒,然后创建一个与测试数据长度相同的按样本概率矢量,以进行模型评估。使用PhysioNet / CinC Challenge 2018评分标准,内部测试集和盲测试集的AUPRC分别达到0.25和0.21。

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