Kamen P W, Tonkin A M
Department of Cardiology, Austin Hospital, Melbourne, Vic.
Aust N Z J Med. 1995 Feb;25(1):18-26. doi: 10.1111/j.1445-5994.1995.tb00573.x.
Conventional methods of quantifying heart rate variability using summary statistics have shown that decreased variability is associated with increased mortality in heart failure. However, many patients with heart failure have arrhythmias which make the 'raw' heart rate variability data less suitable for the use of summary statistical measures.
To examine the clinical potential of a new measure of heart rate variability data, presented by the Poincaré plot pattern, as an adjunct to the summary statistical measures of R-R interval variability.
We used the Poincaré plot pattern to display beat-to-beat heart rate variability data from a group of 23 patients with heart failure and compared them with data collected from 20 healthy age-matched control subjects. The data, which consists of 2000 consecutive R-R intervals, were gathered over 20-40 minutes while the subjects rested supine in a quiet darkened room.
The morphological classification scheme proposed reflected the functional status of patients in heart failure. There was a significant difference (chi-square = 27.5, p < 0.0001) in the different pattern types between patients with NYHA Class I and II compared to patients with NYHA Class II and IV. All healthy subjects displayed a 'cluster' type of pattern characterised by normally distributed data. Sixteen of the 23 patients in heart failure also produced data which were normally distributed but the remaining seven produced data which required careful filtering to make them suitable for analysis using summary statistics, but which could be analysed by the Poincaré plot.
The Poincaré plot pattern is a semi-quantitative tool which can be applied to the analysis of R-R interval data. It has potential advantages in that it allows assessment of data which are grossly non-Gaussian in distribution, and is a simple and easily implemented method which can be used in a clinical setting to augment the standard electrocardiogram to provide 'real time' visualisation of data.
使用汇总统计量来量化心率变异性的传统方法表明,变异性降低与心力衰竭患者死亡率增加有关。然而,许多心力衰竭患者存在心律失常,这使得“原始”心率变异性数据不太适合使用汇总统计量。
研究由庞加莱图模式呈现的心率变异性数据新指标作为R-R间期变异性汇总统计量辅助手段的临床潜力。
我们使用庞加莱图模式展示了一组23例心力衰竭患者的逐搏心率变异性数据,并将其与从20名年龄匹配的健康对照受试者收集的数据进行比较。数据由2000个连续的R-R间期组成,在受试者安静黑暗的房间中仰卧休息20-40分钟期间收集。
所提出的形态学分类方案反映了心力衰竭患者的功能状态。与纽约心脏协会(NYHA)II级和IV级患者相比,NYHA I级和II级患者的不同模式类型存在显著差异(卡方 = 27.5,p < 0.0001)。所有健康受试者均表现出以正态分布数据为特征的“簇状”模式。23例心力衰竭患者中有16例也产生了正态分布的数据,但其余7例产生的数据需要仔细过滤才能使其适合使用汇总统计量进行分析,但可以通过庞加莱图进行分析。
庞加莱图模式是一种可应用于R-R间期数据分析的半定量工具。它具有潜在优势,即允许评估分布严重非高斯的数据,并且是一种简单且易于实施的方法,可在临床环境中用于增强标准心电图,以提供数据的“实时”可视化。