Separating Stimulus-Induced and Background Components of Dynamic Functional Connectivity in Naturalistic fMRI
Chee-Ming Ting, Jeremy I. Skipper, Steven L. Small, Hernando Ombao

TL;DR
This paper introduces a novel low-rank plus sparse decomposition method to isolate stimulus-related neural dynamics from background noise in naturalistic fMRI, improving detection of stimulus-driven connectivity changes.
Contribution
The authors develop a fused-PCP algorithm that enhances separation of shared stimulus responses from individual variability in dynamic functional connectivity analysis.
Findings
Accurate recovery of shared FC patterns even with corrupted data
Revealed stimulus-locked FC changes during movie watching
Better mapping to auditory content than traditional ISC
Abstract
We consider the challenges in extracting stimulus-related neural dynamics from other intrinsic processes and noise in naturalistic functional magnetic resonance imaging (fMRI). Most studies rely on inter-subject correlations (ISC) of low-level regional activity and neglect varying responses in individuals. We propose a novel, data-driven approach based on low-rank plus sparse (L+S) decomposition to isolate stimulus-driven dynamic changes in brain functional connectivity (FC) from the background noise, by exploiting shared network structure among subjects receiving the same naturalistic stimuli. The time-resolved multi-subject FC matrices are modeled as a sum of a low-rank component of correlated FC patterns across subjects, and a sparse component of subject-specific, idiosyncratic background activities. To recover the shared low-rank subspace, we introduce a fused version of principal…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced MRI Techniques and Applications · Advanced Neuroimaging Techniques and Applications
