Bolea Juan, Pueyo Esther, Orini Michele, Bailón Raquel
Centro de Investigación Biomédica en Red Bioingeniería, Biomateriales y NanomedicinaZaragoza, Spain; BSICoS Group, Aragón Institute of Engineering Research (I3A), ISS Aragón, Universidad de ZaragozaZaragoza, Spain.
Institute of Cardiovascular Science, University College London London, UK.
Front Physiol. 2016 Nov 15;7:501. doi: 10.3389/fphys.2016.00501. eCollection 2016.
The purpose of this study is to characterize and attenuate the influence of mean heart rate (HR) on nonlinear heart rate variability (HRV) indices (correlation dimension, sample, and approximate entropy) as a consequence of being the HR the intrinsic sampling rate of HRV signal. This influence can notably alter nonlinear HRV indices and lead to biased information regarding autonomic nervous system (ANS) modulation. First, a simulation study was carried out to characterize the dependence of nonlinear HRV indices on HR assuming similar ANS modulation. Second, two HR-correction approaches were proposed: one based on regression formulas and another one based on interpolating RR time series. Finally, standard and HR-corrected HRV indices were studied in a body position change database. The simulation study showed the HR-dependence of non-linear indices as a sampling rate effect, as well as the ability of the proposed HR-corrections to attenuate mean HR influence. Analysis in a body position changes database shows that correlation dimension was reduced around 21% in median values in standing with respect to supine position ( < 0.05), concomitant with a 28% increase in mean HR ( < 0.05). After HR-correction, correlation dimension decreased around 18% in standing with respect to supine position, being the decrease still significant. Sample and approximate entropy showed similar trends. HR-corrected nonlinear HRV indices could represent an improvement in their applicability as markers of ANS modulation when mean HR changes.
本研究的目的是描述并减弱平均心率(HR)对非线性心率变异性(HRV)指标(关联维数、样本熵和近似熵)的影响,这是由于HR是HRV信号的固有采样率。这种影响会显著改变非线性HRV指标,并导致有关自主神经系统(ANS)调制的信息产生偏差。首先,进行了一项模拟研究,以描述在假设类似ANS调制的情况下非线性HRV指标对HR的依赖性。其次,提出了两种HR校正方法:一种基于回归公式,另一种基于RR时间序列的插值。最后,在一个体位变化数据库中研究了标准的和经HR校正的HRV指标。模拟研究表明,非线性指标对HR的依赖性是一种采样率效应,以及所提出的HR校正减弱平均HR影响的能力。在体位变化数据库中的分析表明,站立位相对于仰卧位时,关联维数的中位数降低了约21%(P<0.05),同时平均HR增加了28%(P<0.05)。经过HR校正后,站立位相对于仰卧位时,关联维数降低了约18%,且这种降低仍然显著。样本熵和近似熵显示出类似的趋势。当平均HR发生变化时,经HR校正的非线性HRV指标在作为ANS调制标志物的适用性方面可能会有所改善。