Methodological features of the analysis of the fractal dimension of the heart rate

M. O. Bykova, V. Balandin
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Abstract

Objectives. The aim of the present work is to determine the fractal dimension parameter calculated for a sequence of R–R intervals in order to identify the boundaries of its change for healthy and sick patients, as well as the possibility of its use as an additional factor in the detection of cardiac pathology.Methods. In order to determine the fractal dimension parameter, the Hurst-, Barrow-, minimum coverage area-, and Higuchi methods are used. For assessing the stationarity of a number of electrocardiography (ECG) intervals, a standard method is used to compare arithmetic averages and variances from samples of the total data array of ECG intervals. To identify differences in fractal dimensions of healthy and sick patients, this parameter was ranked. Using the Kolmogorov–Smirnov two-sample criterion, the difference between the distribution laws in the samples for healthy and sick patients is shown.Results. Among the considered methods for calculating the fractal dimension, the Higuchi method demonstrates the smallest data spread between healthy patients. By ranking the calculated fractional dimension values, it was possible to identify the difference between this parameter for healthy and sick patients. The difference in the distribution of fractal dimension of healthy and sick patients is shown to be statistically significant for the coverage and Higuchi methods. At the same time, when using the traditional Hurst method, there is no reason to reject the null hypothesis that two groups of patients belong to the same general population.Conclusions. Based on the obtained data, the difference between the fractal dimension indicators of the duration of R–R intervals of healthy and sick patients is shown to be statistically significant when using the Higuchi method. The fractal dimensions of healthy and sick patients can be effectively distinguished by ranking samples. The results of the research substantiate prospects for further studies aimed at using fractal characteristics of the heart rhythm to identify abnormalities of the latter, which can serve as an additional factor in determining heart pathologies.
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心率分形维数分析的方法学特点
目标。本工作的目的是确定为R-R区间序列计算的分形维数参数,以确定其对健康和患病患者的变化边界,以及将其用作检测心脏病理的附加因素的可能性。为了确定分形维数参数,采用了Hurst法、Barrow法、最小覆盖面积法和Higuchi法。为了评估一些心电图(ECG)间隔的平稳性,使用一种标准方法来比较心电间隔总数据阵列样本的算术平均值和方差。为了确定健康和患病患者分形维数的差异,对该参数进行了排序。利用Kolmogorov-Smirnov双样本判据,给出了健康患者和患病患者样本中分布规律的差异。在考虑的分形维数计算方法中,Higuchi方法在健康患者之间的数据分布最小。通过对计算的分数维度值进行排序,可以确定健康患者和患病患者该参数之间的差异。健康患者和患病患者的分形维数分布在覆盖率和Higuchi方法上的差异具有统计学意义。同时,在使用传统的Hurst方法时,没有理由拒绝两组患者属于同一一般人群的原假设。根据获得的数据,使用Higuchi方法时,健康患者与患病患者R-R区间持续时间分形维数指标的差异具有统计学意义。通过对样本进行排序,可以有效区分健康患者和患病患者的分形维数。研究结果证实了进一步研究的前景,旨在利用心律的分形特征来识别后者的异常,这可以作为确定心脏病理的另一个因素。
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