Mäkikallio T H, Seppänen T, Niemelä M, Airaksinen K E, Tulppo M, Huikuri H V
Department of Medicine, Oulu University, Finland.
J Am Coll Cardiol. 1996 Oct;28(4):1005-11. doi: 10.1016/s0735-1097(96)00243-4.
The purpose of this research was to study possible abnormalities in the beat to beat complexity of heart rate dynamics in patients with a previous myocardial infarction.
Analysis of approximate entropy of time series data provides information on the complexity of both deterministic and random processes. It has been proposed that regularity or loss of complexity of RR interval dynamics may be related to pathologic states, but this hypothesis has not been well tested in cardiovascular disorders.
Approximate entropy and conventional time and frequency domain measures of RR interval variability were compared between 40 healthy subjects with no evidence of heart disease and 40 patients with coronary artery disease and a previous Q wave myocardial infarction. The groups were matched with respect to age, and cardiac medication was discontinued in the patients with coronary artery disease before the 24-h electrocardiographic recordings.
Approximate entropy was significantly higher in the postinfarction patients (1.21 +/- 0.18 [mean +/- SD]) than in the healthy subjects (1.05 +/- 0.11, p < 0.001), whereas the standard deviation of RR intervals (63 +/- 19 vs. 86 +/- 23 ms, p < 0.001) and the very low, low and high frequency spectral components were lower (p < 0.01, p < 0.001, p < 0.05, respectively). Approximate entropy was not related to the time domain or the spectral components of heart rate variability and was more commonly abnormal in postinfarction patients (62.5%) than any linear measure (from 20% to 42.5%) when the 90% percentile of the values obtained for healthy subjects was defined as the normal range for each measure.
Despite reduced linear measures of heart rate variability, the unpredictability or randomness of beat to beat heart rate dynamics is increased in patients with a previous myocardial infarction. Complexity analysis of RR interval dynamics may provide useful information on abnormalities in heart rate behavior that are not easily detected by the commonly used moment statistics.
本研究旨在探讨既往有心肌梗死患者心率动态逐搏复杂性的可能异常情况。
时间序列数据的近似熵分析可提供关于确定性和随机过程复杂性的信息。有人提出RR间期动态的规律性或复杂性丧失可能与病理状态有关,但这一假设在心血管疾病中尚未得到充分验证。
比较了40名无心脏病证据的健康受试者与40名患有冠状动脉疾病且既往有Q波心肌梗死患者的RR间期变异性的近似熵以及传统的时域和频域测量指标。两组在年龄上相匹配,冠状动脉疾病患者在进行24小时心电图记录前停用心脏药物。
心肌梗死后患者的近似熵(1.21±0.18[均值±标准差])显著高于健康受试者(1.05±0.11,p<0.001),而RR间期的标准差(63±19 vs.86±23 ms,p<0.001)以及极低频、低频和高频频谱成分较低(分别为p<0.01、p<0.001、p<0.05)。近似熵与心率变异性的时域或频谱成分无关,当将健康受试者获得值的第90百分位数定义为每项测量的正常范围时,心肌梗死后患者中近似熵异常更为常见(62.5%),高于任何线性测量指标(20%至42.5%)。
尽管心率变异性的线性测量指标降低,但既往有心肌梗死的患者心率动态逐搏的不可预测性或随机性增加。RR间期动态的复杂性分析可能为心率行为异常提供有用信息,而这些异常用常用的矩统计方法不易检测到。