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Computerized obstructive sleep apnea diagnosis from single-lead ECG signals using dual-tree complex wavelet transform

机译:使用双树复小波变换从单导联心电图信号进行计算机阻塞性睡眠呼吸暂停诊断

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An algorithm for apnea identification using one-lead electrocardiogram is presented in this article. Segments of ECG signals are fed into dual-tree complex wavelet transform (DT-CWT) to generate frequency sub-bands. Three statistical moment parameters are then developed from the DT-CWT outputs. The suitability of these statistical moments in distinguishing normal and apneic ECG signals is investigated through extensive analyses. The overall algorithmic detection accuracy of the scheme is determined for various machine learning classifiers. Sleep apnea classification is done using logistic boosting (LogitBoost). Until now this is for the first time LogitBoost has been implemented for automated sleep apnea detection. We also performed cross validation for classification model evaluation and optimal parameter selection. Results suggest that the detection accuracy of the apnea screening scheme presented in this work is comparable to extant sleep apnea screening systems of the literature. It can be anticipated that upon its implementation, the detection scheme proposed in this work will take us one step closer to sleep apnea monitoring device implementation and eradicate the onus of the physicians.
机译:本文提出了一种使用单引灯心电图的呼吸暂停识别算法。 ECG信号的区段被馈送到双树复小波变换(DT-CWT)中以产生频率子带。然后从DT-CWT输出开发了三个统计时刻参数。通过广泛的分析研究了区分正常和通风的ECG信号时这些统计矩的适用性。针对各种机器学习分类器确定方案的整体算法检测精度。睡眠呼吸暂停分类是使用Logistic Boosting(Logitboost)完成的。到目前为止,这是为了第一次为自动睡眠APNEA检测实施了LogitBoost。我们还对分类模型评估和最佳参数选择进行了交叉验证。结果表明,该工作中呼吸呼吸暂停筛选方案的检测精度与文献的突出睡眠呼吸暂停筛选系统相当。可以预期,在实现后,在这项工作中提出的检测方案将使我们更接近睡眠呼吸暂停监测设备实施,并消除医生的ONU。

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