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Discrimination Power of Short-Term Heart Rate Variability Measures for CHF Assessment

机译:短期心率变异性测量方法对CHF评估的区分力

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In this study, we investigated the discrimination power of short-term heart rate variability (HRV) for discriminating normal subjects versus chronic heart failure (CHF) patients. We analyzed 1914.40 h of ECG of 83 patients of which 54 are normal and 29 are suffering from CHF with New York Heart Association (NYHA) classification I, II, and III, extracted by public databases. Following guidelines, we performed time and frequency analysis in order to measure HRV features. To assess the discrimination power of HRV features, we designed a classifier based on the classification and regression tree (CART) method, which is a nonparametric statistical technique, strongly effective on nonnormal medical data mining. The best subset of features for subject classification includes square root of the mean of the sum of the squares of differences between adjacent NN intervals (RMSSD), total power, high-frequencies power, and the ratio between low- and high-frequencies power (LF/HF). The classifier we developed achieved sensitivity and specificity values of 79.3$%$ and 100 $%$, respectively. Moreover, we demonstrated that it is possible to achieve sensitivity and specificity of 89.7$%$ and 100 $%$, respectively, by introducing two nonstandard features ΔAVNN and ΔLF/HF, which account, respectively, for variation over the 24 h of the average of consecutive normal intervals (AVNN) and LF/HF. Our results are comparable with other similar studies, but the method we used is particularly valuable because it allows a fully human-understandable description of classification procedures, in terms of intelligible “if … then …” rules.
机译:在这项研究中,我们调查了短期心率变异性(HRV)对正常人与慢性心力衰竭(CHF)患者的区分能力。我们通过公共数据库提取的纽约心脏协会(NYHA)分类I,II和III分析了83例患者的1914.40 h ECG,其中54例正常且29例患有CHF。按照指南,我们进行了时间和频率分析,以测量HRV功能。为了评估HRV特征的辨别力,我们基于分类和回归树(CART)方法设计了一种分类器,该方法是一种非参数统计技术,在非常规医学数据挖掘中非常有效。主题分类的最佳特征子集包括相邻NN间隔(RMSSD),总功率,高频功率以及低频功率与高频功率之间的比率的平方和的平均值的平方根( LF / HF)。我们开发的分类器的灵敏度和特异性值分别为79.3%和100%。此外,我们证明,通过引入两个非标准特征ΔAVNN和ΔLF/ HF可以分别实现89.7 $%$和100 $%$的敏感性和特异性,这两个特征分别说明了24小时内的变化。连续正常间隔(AVNN)和LF / HF的平均值。我们的结果可与其他类似研究相媲美,但是我们使用的方法特别有价值,因为它可以按照可理解的“如果...那么...”规则对分类程序进行完全人为理解的描述。

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