SpARCD: A Spectral Graph Framework for Revealing Differential Functional Connectivity in fMRI Data
Shira Yoffe, Ziv Ben-Zion, Guy Gurevitch, Talma Hendler, Malka Gorfine, and Ariel Jaffe

TL;DR
SpARCD is a new spectral graph framework that detects complex differences in brain connectivity from fMRI data, outperforming traditional methods in power and interpretability.
Contribution
It introduces a spectral filtering approach using distance correlation to identify distributed and nonlinear connectivity changes in fMRI data.
Findings
SpARCD shows superior statistical power in simulations.
Application reveals distinct networks in PTSD patients.
Framework is computationally efficient and broadly applicable.
Abstract
Identifying brain regions that exhibit altered functional connectivity across cognitive or emotional states is a key problem in neuroscience. Existing methods, such as edge-wise testing, seed-based psychophysiological interaction (PPI) analysis, or correlation network comparison, typically suffer from low statistical power, arbitrary thresholding, and limited ability to capture distributed or nonlinear dependence patterns. We propose SpARCD (Spectral Analysis of Revealing Connectivity Differences), a novel statistical framework for detecting differences in brain connectivity between two experimental conditions. SpARCD leverages distance correlation, a dependence measure sensitive to both linear and nonlinear associations, to construct a weighted graph for each condition. It then constructs a differential operator via spectral filtering and uncovers connectivity changes by computing its…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Mental Health Research Topics · Face Recognition and Perception
