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Screening for obstructive sleep apnea by cyclic variation of heart rate.

机译:通过心率的周期性变化筛查阻塞性睡眠呼吸暂停。

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BACKGROUND: Despite the adverse cardiovascular consequences of obstructive sleep apnea, the majority of patients remain undiagnosed. To explore an efficient ECG-based screening tool for obstructive sleep apnea, we examined the usefulness of automated detection of cyclic variation of heart rate (CVHR) in a large-scale controlled clinical setting. METHODS AND RESULTS: We developed an algorithm of autocorrelated wave detection with adaptive threshold (ACAT). The algorithm was optimized with 63 sleep studies in a training cohort, and its performance was confirmed with 70 sleep studies of the Physionet Apnea-ECG database. We then applied the algorithm to ECGs extracted from all-night polysomnograms in 862 consecutive subjects referred for diagnostic sleep study. The number of CVHR per hour (the CVHR index) closely correlated (r=0.84) with the apnea-hypopnea index, although the absolute agreement with the apnea-hypopnea index was modest (the upper and lower limits of agreement, 21 per hour and -19 per hour) with periodic leg movement causing most of the disagreement (P<0.001). The CVHR index showed a good performance in identifying the patients with an apnea-hypopnea index >/=15 per hour (area under the receiver-operating characteristic curve, 0.913; 83% sensitivity and 88% specificity, with the predetermined cutoff threshold of CVHR index >/=15 per hour). The classification performance was unaffected by older age (>/=65 years) or cardiac autonomic dysfunction (SD of normal-to-normal R-R intervals over the entire length of recording <65 ms; area under the receiver-operating characteristic curve, 0.915 and 0.911, respectively). CONCLUSIONS: The automated detection of CVHR with the ACAT algorithm provides a powerful ECG-based screening tool for moderate-to-severe obstructive sleep apnea, even in older subjects and in those with cardiac autonomic dysfunction.
机译:背景:尽管阻塞性睡眠呼吸暂停会带来不良的心血管后果,但大多数患者仍未得到诊断。为了探索一种有效的基于ECG的阻塞性睡眠呼吸暂停筛查工具,我们研究了在大规模对照临床环境中自动检测心率周期性变化(CVHR)的有用性。方法和结果:我们开发了一种自适应阈值(ACAT)的自相关波检测算法。该算法在训练队列中通过63次睡眠研究进行了优化,而Physionet呼吸暂停-ECG数据库的70次睡眠研究证实了该算法的性能。然后,我们将该算法应用于从862例连续的通宵多导睡眠图中提取的ECG,这些连续的受试者被推荐用于诊断性睡眠研究。每小时CVHR的数量(CVHR指数)与呼吸暂停低通气指数密切相关(r = 0.84),尽管与呼吸暂停低通气指数的绝对一致性不高(协议上限和下限,每小时21和每小时-19),腿部周期性运动会导致大部分分歧(P <0.001)。 CVHR指数在识别呼吸暂停-呼吸不足指数> / = 15每小时的患者中表现出良好的表现(接受者工作特征曲线下的区域为0.913;灵敏度为83%,特异性为88%,具有CVHR的预定临界阈值索引> / = 15每小时)。分类性能不受年龄(> / = 65岁)或心脏自主神经功能障碍(在整个记录时间内<65 ms正常至正常RR间隔的SD;在接收器工作特性曲线下的面积,0.915和分别为0.911)。结论:利用ACAT算法自动检测CVHR,为中重度阻塞性睡眠呼吸暂停提供了基于ECG的强大筛查工具,即使在老年受试者和患有心脏自主神经功能障碍的受试者中也是如此。

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