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首页> 外文期刊>Journal of Neuroscience Methods >Adaptive time-varying detrended fluctuation analysis
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Adaptive time-varying detrended fluctuation analysis

机译:自适应时变去趋势波动分析

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Detrended fluctuation analysis (DFA) is a technique commonly used to assess and quantify the presence of long-range temporal correlations (LRTCs) in neurophysiological time series. Convergence of the method is asymptotic only and therefore its application assumes a constant scaling exponent. However, most neurophysiological data are likely to involve either spontaneous or experimentally induced scaling exponent changes. We present a novel extension of the DFA method that permits the characterisation of time-varying scaling exponents. The effectiveness of the methodology in recovering known changes in scaling exponents is demonstrated through its application to synthetic data. The dependence of the method on its free parameters is systematically explored. Finally, application of the methodology to neurophysiological data demonstrates that it provides experimenters with a way to identify previously un-recognised changes in the scaling exponent in the data. We suggest that this methodology will make it possible to go beyond a simple demonstration of the presence of scaling to an appreciation of how it may vary in response to either intrinsic changes or experimental perturbations.
机译:去趋势波动分析(DFA)是一种通常用于评估和量化神经生理学时间序列中远程时间相关性(LRTC)的技术。该方法的收敛性只是渐近的,因此,其应用假定常数缩放指数。但是,大多数神经生理学数据可能涉及自发或实验诱发的缩放指数变化。我们提出了DFA方法的新颖扩展,该方法允许表征随时间变化的缩放指数。通过将其应用于合成数据,可以证明该方法在恢复标度指数的已知变化中的有效性。系统地探讨了该方法对其自由参数的依赖性。最后,该方法在神经生理学数据中的应用表明,它为实验人员提供了一种方法,可以识别数据中缩放比例指数先前未被识别的变化。我们建议,这种方法学将使它有可能超越对缩放的存在的简单演示,而可以了解缩放如何响应于内在变化或实验扰动而变化。

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