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A new process for modeling heartbeat signals during exhaustive run with an adaptive estimator of its fractal parameters

机译:利用分形参数的自适应估计器在疲劳运行期间对心跳信号建模的新过程

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This paper is devoted to a new study of the fractal behavior of heartbeats during a marathon. Such a case is interesting since it allows the examination of heart behavior during a very long exercise in order to reach reliable conclusions on the long-term properties of heartbeats. Three points of this study can be highlighted. First, the whole race heartbeats of each runner are automatically divided into several stages where the signal is nearly stationary and these stages are detected with an adaptive change points detection method. Secondly, a new process called the locally fractional Gaussian noise (LFGN) is proposed to fit such data. Finally, a wavelet-based method using a specific mother wavelet provides an adaptive procedure for estimating low frequency and high frequency fractal parameters as well as the corresponding frequency bandwidths. Such an estimator is theoretically proved to converge in the case of LFGNs, and simulations confirm this consistency. Moreover, an adaptive chi-squared goodness-of-fit test is also built, using this wavelet-based estimator. The application of this method to marathon heartbeat series indicates that the LFGN fits well data at each stage and that the low frequency fractal parameter increases during the race. A detection of a too large low frequency fractal parameter during the race could help prevent the too frequent heart failures occurring during marathons.
机译:本文致力于马拉松期间心跳的分形行为的新研究。这种情况很有趣,因为它允许在很长的锻炼过程中检查心脏行为,以便就心跳的长期特性得出可靠的结论。这项研究的三点值得强调。首先,每个跑步者的整个比赛心跳会自动分为几个阶段,信号几乎处于静止状态,并使用自适应变化点检测方法来检测这些阶段。其次,提出了一种称为局部分数高斯噪声(LFGN)的新方法来拟合此类数据。最后,使用特定母小波的基于小波的方法提供了一种自适应过程,用于估计低频和高频分形参数以及相应的频率带宽。理论上证明了这种估计器在LFGNs情况下收敛,并且仿真证明了这种一致性。此外,使用此基于小波的估计量,还建立了自适应卡方拟合优度检验。该方法在马拉松心跳系列中的应用表明,LFGN在每个阶段都拟合良好,并且在比赛中低频分形参数增加。在比赛中检测到太大的低频分形参数可以帮助防止在马拉松比赛中发生过于频繁的心力衰竭。

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