Department of Education and Sports Science, University of Stavanger, 4036 Stavanger, Norway.
Int J Environ Res Public Health. 2020 Sep 16;17(18):6750. doi: 10.3390/ijerph17186750.
Several explanations regarding the disparity observed in the literature with regard to heart rate variability (HRV) and its association with performance parameters have been proposed: the time of day when the recording was conducted, the condition (i.e., rest, active, post activity) and the mathematical and physiological relationships that could have influenced the results. A notable observation about early studies is that they all followed the frequentist approach to data analyses. Therefore, in an attempt to explain the disparity observed in the literature, the primary purpose of this study was to estimate the association between measures of HRV indices, aerobic performance parameters and blood pressure indices using the Bayesian estimation of correlation on simulated data using Markov Chain Monte Carlo (MCMC) and the equal probability of the 95% high density interval (95% HDI).
The within-subjects with a one-group pretest experimental design was chosen to investigate the relationship between baseline measures of HRV (rest; independent variable), myocardial work (rate-pressure product (RPP)), mean arterial pressure (MAP) and aerobic performance parameters. The study participants were eight local female schoolteachers aged 54.1 ± 6.5 years (mean ± SD), with a body mass of 70.6 ± 11.5 kg and a height of 164.5 ± 6.5 cm. Their HRV data were analyzed in R package, and the Bayesian estimation of correlation was calculated employing the Bayesian hierarchical model that uses MCMC simulation integrated in the JAGS package.
The Bayesian estimation of correlation using MCMC simulation reproduced and supported the findings reported regarding norms and the within-HRV-indices associations. The results of the Bayesian estimation showed a possible association (regardless of the strength) between pNN50% and MAP ( = 0.671; 95% HDI = 0.928-0.004), MeanRR (ms) and RPP ( = -0.68; 95% HDI = -0.064--0.935), SDNN (ms) and RPP ( = 0.672; 95% HDI = 0.918-0.001), LF (ms) and RPP ( = 0.733; 95% HDI = 0.935-0.118) and SD2 and RPP ( = 0.692; 95% HDI = 0.939-0.055).
The Bayesian estimation of correlation with 95% HDI on MCMC simulated data is a new technique for data analysis in sport science and seems to provide a more robust approach to allocating credibility through a meaningful mathematical model. However, the 95% HDI found in this study, accompanied by the theoretical explanations regarding the dynamics between the parasympathetic nervous system and the sympathetic nervous system in relation to different recording conditions (supine, reactivation, rest), recording systems, time of day (morning, evening, sleep etc.) and age of participants, suggests that the association between measures of HRV indices and aerobic performance parameters has yet to be explicated.
对于心率变异性(HRV)及其与表现参数之间的关联,文献中存在差异,对此提出了几种解释:记录时间,状态(即休息、活动、活动后)以及可能影响结果的数学和生理关系。早期研究的一个显著观察结果是,它们都遵循了数据的频率主义分析方法。因此,为了解释文献中观察到的差异,本研究的主要目的是使用贝叶斯相关性估计,通过马尔可夫链蒙特卡罗(MCMC)模拟数据和 95%高密度区间(95%HDI)的等概率,来估计 HRV 指数、有氧表现参数和血压指数之间的关联。
采用单组预测试实验设计,研究 HRV 基线测量(休息;自变量)、心肌做功(心率-血压乘积(RPP))、平均动脉压(MAP)和有氧表现参数之间的关系。研究参与者为 8 名年龄 54.1 ± 6.5 岁(平均值 ± 标准差)、体重 70.6 ± 11.5 公斤、身高 164.5 ± 6.5 厘米的当地女教师。使用 R 包分析 HRV 数据,并使用 JAGS 包中集成的 MCMC 模拟的贝叶斯分层模型计算贝叶斯相关性估计。
使用 MCMC 模拟的贝叶斯相关性估计再现并支持了有关规范和 HRV 指数内关联的报告结果。贝叶斯估计的结果表明,pNN50%和 MAP(=0.671;95%HDI=0.928-0.004)、MeanRR(ms)和 RPP(=-0.68;95%HDI=-0.064--0.935)、SDNN(ms)和 RPP(=0.672;95%HDI=0.918-0.001)、LF(ms)和 RPP(=0.733;95%HDI=0.935-0.118)和 SD2 和 RPP(=0.692;95%HDI=0.939-0.055)之间可能存在关联(无论关联强度如何)。
MCMC 模拟数据的 95%HDI 贝叶斯相关性估计是运动科学中数据分析的一项新技术,似乎为通过有意义的数学模型分配可信度提供了一种更稳健的方法。然而,本研究中发现的 95%HDI,以及关于不同记录条件(仰卧、再激活、休息)、记录系统、一天中的时间(早晨、傍晚、睡眠等)和参与者年龄下副交感神经系统和交感神经系统之间动态关系的理论解释,表明 HRV 指数和有氧表现参数之间的关联仍有待阐明。