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Discrimination power of long-term heart rate variability measures

机译:长期心率变异性测量的判别力

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Heart rate variability (HRV) can be assessed by time- or frequency-domain methods. The time-domain HRV measures are based on beat-to-beat intervals whereas frequency-domain analysis expresses HRV in terms of its constituent frequency components. HRV analysis has emerged as a diagnostic tool that quantifies the functioning of the anatomic regulation of the heart and heart's ability to respond. However, majority of studies on HRV report several different time and frequency domain HRV measures together, which may be redundant and confusing in many cases. The question of which HRV measures are the strongest overall indicators of the cardiac condition has not been addressed. In this study, using data from 52 normal subjects and 22 patients with congestive heart failure, and linear discriminant analysis, we investigated the class, i.e. normal versus abnormal, discrimination power of 9 commonly used long-term HRV measures and identified the one that indicates the cardiac condition with higher sensitivity and specificity. Our results revealed that the standard deviation of all normal-to-normal beat intervals (SDNN) has the highest class discrimination power and a Bayesian classifier based on this index achieves sensitivity and specificity rates of 81.8% and 98.1% respectively.
机译:心率变异性(HRV)可以通过时域或频域方法进行评估。时域HRV量度基于拍频间隔,而频域分析则根据其组成频率分量来表示HRV。 HRV分析已成为一种诊断工具,可量化心脏的解剖调节功能和心脏的反应能力。但是,大多数有关HRV的研究报告在一起报告了几种不同的时域和频域HRV度量,这在许多情况下可能是多余且令人困惑的。哪些HRV措施是心脏疾病最强的总体指标的问题尚未得到解决。在这项研究中,我们使用来自52名正常受试者和22名充血性心力衰竭患者的数据,并进行线性判别分析,我们研究了9种常用长期HRV措施的分类能力,即正常与异常的辨别力,并确定了一种心脏疾病具有更高的敏感性和特异性。我们的结果表明,所有正常到正常搏动间隔(SDNN)的标准差都具有最高的分类判别力,基于该指标的贝叶斯分类器的灵敏度和特异度分别达到81.8%和98.1%。

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