Arq Bras Cardiol. 2013 Oct;101(4):317-27. doi: 10.5935/abc.20130181. Epub 2013 Sep 6.
Heart rate variability (HRV) is an important indicator of autonomic modulation of cardiovascular function. Diabetes can alter cardiac autonomic modulation by damaging afferent inputs, thereby increasing the risk of cardiovascular disease. We applied nonlinear analytical methods to identify parameters associated with HRV that are indicative of changes in autonomic modulation of heart function in diabetic patients.
We analyzed differences in HRV patterns between diabetic and age-matched healthy control subjects using nonlinear methods.
Lagged Poincaré plot, autocorrelation, and detrended fluctuation analysis were applied to analyze HRV in electrocardiography (ECG) recordings.
Lagged Poincare plot analysis revealed significant changes in some parameters, suggestive of decreased parasympathetic modulation. The detrended fluctuation exponent derived from long-term fitting was higher than the short-term one in the diabetic population, which was also consistent with decreased parasympathetic input. The autocorrelation function of the deviation of inter-beat intervals exhibited a highly correlated pattern in the diabetic group compared with the control group.
The HRV pattern significantly differs between diabetic patients and healthy subjects. All three statistical methods employed in the study may prove useful to detect the onset and extent of autonomic neuropathy in diabetic patients.
心率变异性(HRV)是心血管功能自主调节的一个重要指标。糖尿病可通过损伤传入输入而改变心脏自主调节,从而增加心血管疾病的风险。我们应用非线性分析方法来确定与 HRV 相关的参数,这些参数可提示糖尿病患者心脏功能自主调节的变化。
我们应用非线性方法分析糖尿病患者与年龄匹配的健康对照者之间的 HRV 模式差异。
我们应用滞后 Poincaré 图、自相关和去趋势波动分析来分析心电图(ECG)记录中的 HRV。
滞后 Poincaré 图分析显示,一些参数存在显著变化,提示副交感神经调节减弱。糖尿病组的长期拟合得到的去趋势波动指数大于短期拟合,这也与副交感神经传入减少一致。与对照组相比,糖尿病组的间期偏差自相关函数表现出高度相关的模式。
糖尿病患者与健康受试者之间的 HRV 模式存在显著差异。本研究中应用的所有 3 种统计方法均可能有助于检测糖尿病患者自主神经病变的发生和严重程度。