Krstacic Goran, Krstacic Antonija, Smalcelj Anton, Milicic Davor, Jembrek-Gostovic Mirjana
Institute for Cardiovascular Diseases and Rehabilitation, Zagreb, Croatia.
Ann Noninvasive Electrocardiol. 2007 Apr;12(2):130-6. doi: 10.1111/j.1542-474X.2007.00151.x.
Dynamic analysis techniques may quantify abnormalities in heart rate variability (HRV) based on nonlinear and fractal analysis (chaos theory). The article emphasizes clinical and prognostic significance of dynamic changes in short-time series applied on patients with coronary heart disease (CHD) during the exercise electrocardiograph (ECG) test.
The subjects were included in the series after complete cardiovascular diagnostic data. Series of R-R and ST-T intervals were obtained from exercise ECG data after sampling digitally. The range rescaled analysis method determined the fractal dimension of the intervals. To quantify fractal long-range correlation's properties of heart rate variability, the detrended fluctuation analysis technique was used. Approximate entropy (ApEn) was applied to quantify the regularity and complexity of time series, as well as unpredictability of fluctuations in time series.
It was found that the short-term fractal scaling exponent (alpha(1)) is significantly lower in patients with CHD (0.93 +/- 0.07 vs 1.09 +/- 0.04; P < 0.001). The patients with CHD had higher fractal dimension in each exercise test program separately, as well as in exercise program at all. ApEn was significant lower in CHD group in both RR and ST-T ECG intervals (P < 0.001).
The nonlinear dynamic methods could have clinical and prognostic applicability also in short-time ECG series. Dynamic analysis based on chaos theory during the exercise ECG test point out the multifractal time series in CHD patients who loss normal fractal characteristics and regularity in HRV. Nonlinear analysis technique may complement traditional ECG analysis.
动态分析技术可基于非线性和分形分析(混沌理论)对心率变异性(HRV)异常进行量化。本文强调了在运动心电图(ECG)测试期间,对冠心病(CHD)患者应用短时间序列动态变化的临床和预后意义。
在获得完整的心血管诊断数据后,将受试者纳入该系列研究。对运动心电图数据进行数字采样后,获取R-R间期和ST-T间期序列。采用范围重标分析方法确定间期的分形维数。为了量化心率变异性的分形长程相关性,使用去趋势波动分析技术。应用近似熵(ApEn)来量化时间序列的规律性和复杂性,以及时间序列波动的不可预测性。
发现冠心病患者的短期分形标度指数(alpha(1))显著更低(0.93±0.07 vs 1.09±0.04;P<0.001)。冠心病患者在每个单独的运动测试程序中以及总体运动程序中的分形维数均更高。在RR和ST-T心电图间期,冠心病组的ApEn均显著更低(P<0.001)。
非线性动力学方法在短时间心电图序列中也可能具有临床和预后适用性。运动心电图测试期间基于混沌理论的动态分析指出,冠心病患者的多分形时间序列失去了HRV的正常分形特征和规律性。非线性分析技术可补充传统心电图分析。