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首页> 外文期刊>Digital Signal Processing >Performance analysis of Hurst exponent estimators using surrogate-data and fractional lognormal noise models: Application to breathing signals from preterm infants
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Performance analysis of Hurst exponent estimators using surrogate-data and fractional lognormal noise models: Application to breathing signals from preterm infants

机译:使用替代数据和对数对数正态噪声模型的赫斯特指数估计量的性能分析:在早产儿呼吸信号中的应用

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摘要

The use of the Hurst exponent (H) to quantify the fractal characteristics of biological signals and its potential to detect abnormalities has aroused, recently, the interest of many researchers. Numerous techniques to estimate H are described in the literature, yet the choice of the most performing one is not straightforward. In this paper, we proposed some tests using artificial signals from experimental data and stochastic models to evaluate the robustness of three estimation techniques. Different surrogate-data tests, including a novel method to parametrize the degree of correlation in experimental signals with H (Hurst-adjusted surrogates), were first carried out. Then, simulated signals with prescribed H were obtained from fractional Gaussian noise modified properly to follow the lognormal laws observed in empirical data. The tests were applied to examine detrended fluctuation analysis (DFA), discrete wavelet transform and least squares based on standard deviation (LSSD) methods in the particular case of inter-breath interval signals from preterm infants. Simulations showed that none of the estimators were robust for every breathing pattern (regular, erratic and periodic) and should not be applied blindly without performing the preliminary tests proposed here. The LSSD technique was the most precise in general, but DFA was more robust with highly spiked patterns.
机译:最近,使用赫斯特指数(H)量化生物信号的分形特征及其检测异常的潜力引起了许多研究人员的兴趣。文献中描述了许多估算H的技术,但是,选择性能最高的方法并非易事。在本文中,我们提出了一些使用来自实验数据和随机模型的人工信号进行的测试,以评估三种估算技术的鲁棒性。首先进行了不同的替代数据测试,其中包括一种新颖的方法,用于对实验信号中与H(Hurst调整后的替代物)的相关程度进行参数化。然后,从分数高斯噪声中适当地修改以遵循经验数据中观察到的对数正态定律,获得具有规定H的模拟信号。在早产儿呼吸间隔信号的特殊情况下,该测试被用于检查去趋势波动分析(DFA),离散小波变换和基于标准差(LSSD)方法的最小二乘。模拟表明,没有一种估计器对每种呼吸模式(正常,不稳定和周期性)都具有鲁棒性,因此,如果不执行此处建议的初步测试,则不应盲目应用。 LSSD技术通常是最精确的,但是DFA在高度尖峰的模式下更加健壮。

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