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Application of the Permutation Entropy over the Heart Rate Variability for the Improvement of Electrocardiogram-based Sleep Breathing Pause Detection

机译:置换熵在心率变异性上的应用改善基于心电图的睡眠呼吸暂停检测

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In this paper the permutation entropy (PE) obtained from heart rate variability (HRV) is analyzed in a statistical model. In this model we also integrate other feature extraction techniques, the cepstrum coefficients derived from the same HRV and a set of band powers obtained from the electrocardiogram derived respiratory (EDR) signal. The aim of the model is detecting obstructive sleep apnea (OSA) events. For this purpose, we apply two statistical classification methods: Logistic Regression (LR) and Quadratic Discriminant Analysis (QDA). For testing the models we use seventy ECG recordings from the Physionet database which are divided into equal-size learning and testing sets. Both sets consist of 35 recordings, each containing a single ECG signal. In our experiments we have found that the features extracted from the EDR signal present a sensitivity of 65.6% and specificity of 87.7% (auc = 85) in the LR classifier, and sensitivity of 59.4% and specificity of 90.3% (auc = 83.9) in the QDA classifier. The HRV-based cepstrum coefficients present a sensitivity of 63.8% and specificity of 89.2% (auc = 86) in the LR classifier, and sensitivity of 67.2% and specificity of 86.8% (auc = 86.9) in the QDA. Subsequent tests show that the contribution of the permutation entropy increases the performance of the classifiers, implying that the complexity of RR interval time series play an important role in the breathing pauses detection. Particularly, when all features are jointly used, the quantification task reaches a sensitivity of 71.9% and specificity of 92.1% (auc = 90.3) for LR. Similarly, for QDA the sensitivity is 75.1% and the specificity is 90.5% (auc = 91.7).
机译:在本文中,从心率变异性(HRV)获得的置换熵(PE)在统计模型中进行了分析。在此模型中,我们还集成了其他特征提取技术,从相同HRV得出的倒谱系数和从心电图得出的呼吸(EDR)信号获得的一组带功率。该模型的目的是检测阻塞性睡眠呼吸暂停(OSA)事件。为此,我们应用了两种统计分类方法:逻辑回归(LR)和二次判别分析(QDA)。为了测试模型,我们使用了来自Physionet数据库的70个ECG记录,这些记录被分为相等大小的学习和测试集。两组都包含35个记录,每个记录包含一个ECG信号。在我们的实验中,我们发现从EDR信号中提取的特征在LR分类器中的灵敏度为65.6%,特异性为87.7%(auc = 85),灵敏度为59.4%,特异性为90.3%(auc = 83.9)在QDA分类器中。基于HRV的倒频谱系数在LR分类器中的灵敏度为63.8%,特异性为89.2%(auc = 86),在QDA中,灵敏度为67.2%,特异性为86.8%(auc = 86.9)。随后的测试表明,置换熵的贡献提高了分类器的性能,这表明RR间隔时间序列的复杂性在呼吸暂停检测中起着重要作用。尤其是,当所有特征共同使用时,定量任务对LR的灵敏度为71.9%,特异性为92.1%(auc = 90.3)。同样,对于QDA,敏感性为75.1%,特异性为90.5%(auc = 91.7)。

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