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Identifying episodes of sleep apnea in ECG by machine learning methods

机译:通过机器学习方法识别ECG中的睡眠呼吸暂停发作

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The paper is devoted to the application of machine learning methods for computerized sleep apnea detection based on single lead electrocardiographic signal (ECG). In order to explore the possibilities of machine learning for ECG-based apnea detection, the Apnea-ECG database provided by the PhysioNet resource was used in this study. A distinctive peculiarity of this database is that it contains the annotations for each minute of each recording indicating the presence or absence of apnea at the current moment of time. To evaluate the effectiveness of ECG derived parameters for sleep apnea detection, 80 ECG segments of 10 minutes duration, annotated as apnea, and 73 ECG segments of the same duration, annotated as normal sleeping were extracted and investigated. The purpose of this work is to define and compare the informative features for identifying episodes of sleep apnea in ECG by heart rate variability analysis, as well as to choose the classification method that provides the highest accuracy for this task. The time-domain, frequency domain, spectral-temporal and wavelet features are considered. Using these feature sets, the performances of a number of classifiers based on decision trees, discriminant analysis, logistic regression, support vector machines, variations of k-nearest neighbors' method, and ensemble learning, were determined. Based on this, a combination of features and classifiers are proposed that provides the highest accuracy of sleep apnea episodes recognition in single lead ECG. The choice of model options for the best performing classifiers was investigated.
机译:本文致力于将机器学习方法用于基于单导联心电图信号(ECG)的计算机化睡眠呼吸暂停检测。为了探索机器学习对基于ECG的呼吸暂停检测的可能性,本研究使用了PhysioNet资源提供的Apnea-ECG数据库。该数据库的独特之处在于,它包含每个记录的每一分钟的注释,以指示当前时间点是否存在呼吸暂停。为了评估ECG派生参数对睡眠呼吸暂停检测的有效性,提取并研究了80个10分钟持续时间的ECG段(标注为呼吸暂停)和73个相同持续时间的心电图段(标注为正常睡眠)并进行了研究。这项工作的目的是定义和比较可通过心率变异性分析识别ECG中睡眠呼吸暂停发作的信息功能,以及选择能够为该任务提供最高准确度的分类方法。考虑了时域,频域,频谱时域和小波特征。使用这些功能集,确定了基于决策树,判别分析,逻辑回归,支持向量机,k近邻方法变异和集成学习的多个分类器的性能。基于此,提出了在单导联心电图中提供最高准确度的睡眠呼吸暂停发作识别的特征和分类器的组合。研究了性能最佳的分类器的模型选项选择。

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