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An Approach to the Improvement of Electrocardiogram-based Sleep Breathing Pauses Detection by means of Permutation Entropy of the Heart Rate Variability

机译:通过心率变异性的排列熵改进基于心电图的睡眠呼吸暂停检测的方法

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Permutation entropy obtained from heart rate variability (HRV) is analyzed in a statistical model integrating electrocardiogram derived respiratory (EDR) features and cepstrum coefficients in order to detect obstructive sleep apnea (OSA) events. 70 ECG recordings from Physionet database are divided into a learning set and a test set of equal size. Each set consists of 35 recordings, containing a single ECG signal. Each recording includes a set of reference annotations, one for each minute, which indicates the presence or absence of apnea during that minute. Statistical classification methods based on Logistic Regression (LR) is applied to the classification of sleep apnea epochs. EDR presents a sensitivity of 64.3% and specificity of 86.5% (auc=83.9). Cepstrum presents a sensitivity of 63.8% and specificity of 89.2% (auc=86). Contribution of the permutation entropy increases the performance of the LR model, playing an important role in the OSA quantification task. In particular, when all features are analyzed, classifier reaches a sensitivity of 70.2% and specificity of 91.8% (auc=89.8).
机译:从心率变异性(HRV)获得的置换熵在整合心电图得出的呼吸(EDR)特征和倒频谱系数的统计模型中进行分析,以检测阻塞性睡眠呼吸暂停(OSA)事件。来自Physionet数据库的70个ECG记录被分为一个学习集和一个大小相等的测试集。每组包括35条记录,其中包含一个ECG信号。每个记录都包含一组参考注释,每分钟一个,用于指示该分钟内是否存在呼吸暂停。基于Logistic回归(LR)的统计分类方法被应用于睡眠呼吸暂停时期的分类。 EDR的敏感性为64.3%,特异性为86.5%(auc = 83.9)。倒谱的灵敏度为63.8%,特异性为89.2%(auc = 86)。置换熵的贡献提高了LR模型的性能,在OSA量化任务中发挥了重要作用。特别地,当分析所有特征时,分类器达到70.2%的灵敏度和91.8%的特异性(auc = 89.8)。

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