Scale-Free and Multifractal Time Dynamics of fMRI Signals during Rest and Task
P. Ciuciu (LNAO), G. Varoquaux, P. Abry, S. Sadaghiani, A., Kleinschmidt

TL;DR
This study investigates the complex, multifractal temporal dynamics of fMRI signals during rest and task conditions, revealing detailed scale-invariance properties across brain networks using advanced wavelet-based analysis.
Contribution
It introduces a multifractal analysis approach with Wavelet Leader formalism and a multivariate spatial analysis to better characterize fMRI temporal dynamics beyond traditional methods.
Findings
Multifractality varies across brain networks and conditions.
Wavelet Leader formalism improves estimation of scale invariance.
Scale-free dynamics are present in both resting and task states.
Abstract
Scaling temporal dynamics in functional MRI (fMRI) signals have been evidenced for a decade as intrinsic characteristics of ongoing brain activity (Zarahn et al., 1997). Recently, scaling properties were shown to fluctuate across brain networks and to be modulated between rest and task (He, 2011): notably, Hurst exponent, quantifying long memory, decreases under task in activating and deactivating brain regions. In most cases, such results were obtained: First, from univariate (voxelwise or regionwise) analysis, hence focusing on specific cognitive systems such as Resting-State Networks (RSNs) and raising the issue of the specificity of this scale-free dynamics modulation in RSNs. Second, using analysis tools designed to measure a single scaling exponent related to the second order statistics of the data, thus relying on models that either implicitly or explicitly assume Gaussianity and…
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