首页> 外文会议>Computing in Cardiology 2012.;vol. 39. >Estimation of the apnea-hypopnea index from epoch-based classification of the ECG using modulations of QRS area and respiratory myogram interference
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Estimation of the apnea-hypopnea index from epoch-based classification of the ECG using modulations of QRS area and respiratory myogram interference

机译:使用QRS面积和呼吸肌象干扰对心电图进行基于时代的心电图分类来评估呼吸暂停低通气指数

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Most approaches for ECG-based detection of sleep apnea classify fixed-duration epochs (here: 60s) in a binary way with respect to the presence or absence of respiratory events. Identifying time-locked modulations in QRS-amplitude and respiratory myogram interference with a single feature, this paper presents a new method to transform such results into an estimate of the apnea-hypopnea-index (AHI). The basic idea is to translate the local period duration of the event-related quasi-periodic oscillations into a weighting factor for each epoch's result. We present a binary and a ternary strategy (including a borderline class) for identification of patients with an AHI ≥ 15. Results on a large (N = 140) and representative clinical sample indicate 100% sensitivity and 86.4% accuracy for the binary strategy. The ternary strategy achieves 95.1% accuracy for a subset of 83.6% of the recordings. The remaining 16.4% of the sample are classified as ‘boderline cases’. Additional validation on the independent Physionet Apnea ECG Database (N = 69) resulted in perfect separation of the apnea group from the control cases. We conclude that it is possible to provide a physiologically meaningful estimate of the AHI from epoch-based classifications of the ECG: It promises robust detection of apnea patients in various clinical scenarios such as screening of Holter ECGs.
机译:大多数基于ECG的睡眠呼吸暂停检测方法都以固定时间段(此处为60 s)以二进制方式对是否存在呼吸事件进行分类。识别具有单个特征的QRS振幅和呼吸肌电图干扰中的时间锁定调制,本文提出了一种将这种结果转换为呼吸暂停低通气指数(AHI)估计值的新方法。基本思想是将与事件相关的准周期振荡的本地周期持续时间转换为每个时期结果的加权因子。我们提出了一种二元和三元策略(包括临界值分类)来识别AHI≥15的患者。在大量样本(N = 140)和代表性临床样本上的结果表明,二元策略的敏感性为100%,准确度为86.4%。三元策略对于83.6%的记录子集可达到95.1%的准确性。其余16.4%的样本被归类为“边界案件”。在独立的Physionet呼吸暂停心电图数据库(N = 69)上进行的额外验证可将呼吸暂停组与对照组完全隔离。我们得出结论,有可能从基于时代的心电图分类中提供对AHI的生理意义的估计:它有望在各种临床情况(如动态心电图筛查)中对呼吸暂停患者进行可靠的检测。

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