Hnatkova K, Copie X, Staunton A, Malik M
Department of Cardiological Sciences, St. George's Hospital Medical School, London, England.
J Electrocardiol. 1995;28 Suppl:74-80. doi: 10.1016/s0022-0736(95)80020-4.
The so-called "Lorenz plots" are scatterplots that show the R-R interval as a function of the preceding R-R intervals. Repeatedly, it has been proposed that these plots might be used for visualizing the variability of the heart rate and that the assessment of heart rate variability (HRV) from these plots might be superior to conventional measures of HRV. However, a precise numeric evaluation of the images of Lorenz plots have never been suggested. To classify the images of Lorenz plots, a computer package that measures their density was developed. For each rectangular area of the plot, the relative number of R1/R2 samples in that area is established and a function is created that assigns the maximum relative number of samples (i.e., the maximum density) to each size of an area of the plot. Plots that are very compact result in a sharply falling density function, while plots that are more diffuse lead to a flat density function. The distinction between such types of density function may be expressed as a logarithmic integral of the density function to express the "compactness" of the plot numerically. As the computational demands of this approach are intensive, an approximate method that restricts the measurement of the density to the area around the peak of the plot was also developed. The results of this approximate method correlate strongly with the full results (r = .98), and approximate measurement of one plot requires less than 1 minute of computer time. The approximate method has been applied to a set of 24-hour Holter records obtained from 637 survivors of acute myocardial infarction. For each record, the SDNN and SDANN values were also calculated as conventional measures of HRV. Both the density of the Lorenz plots and the conventional measures of HRV were used to investigate the differences among 48 patients who suffered an arrhythmic event (sudden death or sustained symptomatic ventricular tachycardia) during a 2-year follow-up period and the remaining 589 patients without arrhythmic postinfarction complications. At a sensitivity of 30%, the Lorenz plot density distinguished the patients with events with a positive predictive accuracy of 58%, while the SDNN and SDANN led to a positive predictive accuracy of only 23 and 18%, respectively. Thus, a detailed analysis of Lorenz plots is feasible and more clinically useful than the conventional measures of HRV.
所谓的“洛伦兹图”是一种散点图,它展示了R-R间期相对于前一个R-R间期的函数关系。人们多次提出,这些图可用于直观呈现心率变异性,并且从这些图评估心率变异性(HRV)可能优于传统的HRV测量方法。然而,从未有人提出对洛伦兹图图像进行精确的数值评估。为了对洛伦兹图图像进行分类,开发了一个测量其密度的计算机程序包。对于图中的每个矩形区域,确定该区域内R1/R2样本的相对数量,并创建一个函数,为图中每个区域大小分配最大相对样本数量(即最大密度)。非常紧凑的图会导致密度函数急剧下降,而更分散的图会产生平坦的密度函数。这种密度函数类型之间的差异可以表示为密度函数的对数积分,以便从数值上表达图的“紧凑程度”。由于这种方法的计算需求很大,还开发了一种近似方法,该方法将密度测量限制在图峰值周围的区域。这种近似方法的结果与完整结果高度相关(r = 0.98),并且对一个图进行近似测量所需的计算机时间不到1分钟。该近似方法已应用于从637例急性心肌梗死幸存者获得的一组24小时动态心电图记录。对于每份记录,还计算了SDNN和SDANN值作为HRV的传统测量指标。洛伦兹图的密度和HRV的传统测量指标都用于研究48例在2年随访期间发生心律失常事件(猝死或持续性有症状室性心动过速)的患者与其余589例无梗死后期心律失常并发症患者之间的差异。在灵敏度为30%时,洛伦兹图密度区分有事件的患者时阳性预测准确率为58%,而SDNN和SDANN的阳性预测准确率分别仅为23%和18%。因此,对洛伦兹图进行详细分析是可行的,并且比传统的HRV测量方法在临床上更有用。