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Automatic detection of sleep-disordered breathing events using recurrent neural networks from an electrocardiogram signal

机译:使用来自心电图信号的经常性神经网络自动检测睡眠无序呼吸事件

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摘要

In this study, we propose a novel method for automatically detecting sleep-disordered breathing (SDB) events using a recurrent neural network (RNN) to analyze nocturnal electrocardiogram (ECG) recordings. We design a deep RNN model comprising six stacked recurrent layers for the automatic detection of SDB events. The proposed deep RNN model utilizes long short-term memory (LSTM) and a gated-recurrent unit (GRU). To evaluate the performance of the proposed RNN method, 92 SDB patients were enrolled. Single-lead ECG recordings were measured for an average 7.2-h duration and segmented into 10-s events. The dataset comprised a training dataset (68,545 events) from 74 patients and test dataset (17,157 events) from 18 patients. The proposed method achieved high performance with an F1-score of 98.0% for LSTM and 99.0% for GRU. The results demonstrate superior performance over conventional methods. The proposed method can be used as a precise screening and diagnosing tool for patients with SDB disorders.
机译:在本研究中,我们提出了一种新的方法,用于使用经常性神经网络(RNN)自动检测睡眠无序呼吸(SDB)事件来分析夜间心电图(ECG)记录。我们设计了一个深度RNN模型,包括六个堆叠的经常性层,用于自动检测SDB事件。所提出的深rnn模型利用长短期存储器(LSTM)和门控复发单元(GRU)。为了评估所提出的RNN方法的性能,注册了92例SDB患者。单引线ECG记录平均测量为7.2-H持续时间,并分段为10-S事件。 DataSet由来自18名患者的74名患者和测试数据集(17,157个事件)组成的培训数据集(68,545个事件)。所提出的方法实现了高性能,F1分数为LSTM的98.0%,GRU的99.0%。结果表明了传统方法的卓越性能。该方法可用作SDB疾病患者的精确筛选和诊断工具。

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