The backbone network of dynamic functional connectivity
Author(s) -
Nima Asadi,
Ingrid R. Olson,
Zoran Obradović
Publication year - 2021
Publication title -
network neuroscience
Language(s) - English
Resource type - Journals
ISSN - 2472-1751
DOI - 10.1162/netn_a_00209
Subject(s) - computer science , resting state fmri , filter (signal processing) , functional connectivity , identification (biology) , state (computer science) , dynamic functional connectivity , binary number , data mining , theoretical computer science , artificial intelligence , algorithm , mathematics , psychology , neuroscience , botany , arithmetic , computer vision , biology
Temporal networks have become increasingly pervasive in many real-world applications, including the functional connectivity analysis of spatially separated regions of the brain. A major challenge in analysis of such networks is the identification of noise confounds, which introduce temporal ties that are nonessential, or links that are formed by chance due to local properties of the nodes. Several approaches have been suggested in the past for static networks or temporal networks with binary weights for extracting significant ties whose likelihood cannot be reduced to the local properties of the nodes. In this work, we propose a data-driven procedure to reveal the irreducible ties in dynamic functional connectivity of resting-state fMRI data with continuous weights. This framework includes a null model that estimates the latent characteristics of the distributions of temporal links through optimization, followed by a statistical test to filter the links whose formation can be reduced to the activities and local properties of their interacting nodes. We demonstrate the benefits of this approach by applying it to a resting-state fMRI dataset, and provide further discussion on various aspects and advantages of it.
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