高斯拟合非平稳HRV信号的谱参数估计

M. Daoud, P. Ravier, M. Jabloun, B. Yagoubi, O. Buttelli
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引用次数: 2

摘要

心率变异性(HRV)频谱参数通常用于研究自主神经系统,因为它们可以评估交感神经和副交感神经对心律的影响之间的平衡。然而,这种评价是基于频带的定义,由于生理因素或实验条件可能导致频率边界发生变化,因此发现频带的定义存在争议。我们建议通过将功率谱动态建模为两个高斯形状的混合物来克服这一困难。与刚性频率切割方法或ITSB算法[1]获得的参数估计相比,该程序似乎能够更准确地跟踪模拟数据的确切参数。本文还介绍并讨论了在经典台架试验中获得的实际数据结果。
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Estimation of spectral parameters of nonstationary HRV signals using Gaussian fitting spectra
The heart rate variability (HRV) spectral parameters are classically used for studying the autonomic nervous system, as they allow the evaluation of the balance between the sympathetic and parasympathetic influences on heart rhythm. However, this evaluation is based on the definition of frequency bands that are found to be controversial because of possible changes in the frequency boundaries due to physiological factors or experimental conditions. We propose to overcome this difficulty by dynamically modelling the power spectrum as a two Gaussian shapes mixture. It appeared that this procedure was able to more accurately follow the exact parameters in the case of simulated data, in comparison with parameters estimation obtained with a rigid frequency cutting approach or with the ITSB algorithm [1]. Real data results obtained on a classical stand-test are also presented and discussed.
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