Combined MEG and fMRI Exponential Random Graph Modeling for inferring functional Brain Connectivity
Roseric Azondekon, Zachary James Harper, and Charles Michael Welzig

TL;DR
This study uses combined MEG and fMRI data to model brain connectivity with ERGMs, revealing small-world properties and the potential to distinguish cognitive states, advancing understanding of brain network organization.
Contribution
First application of pooled ERGMs to combined MEG and fMRI data for modeling functional brain networks during a memory task.
Findings
All subjects' connectomes exhibited small-world properties.
No significant differences between 0-back and 2-back conditions across subjects.
ERGMs successfully reproduced key brain network properties like segregation and integration.
Abstract
Estimated connectomes by the means of neuroimaging techniques have enriched our knowledge of the organizational properties of the brain leading to the development of network-based clinical diagnostics. Unfortunately, to date, many of those network-based clinical diagnostics tools, based on the mere description of isolated instances of observed connectomes are noisy estimates of the true connectivity network. Modeling brain connectivity networks is therefore important to better explain the functional organization of the brain and allow inference of specific brain properties. In this report, we present pilot results on the modeling of combined MEG and fMRI neuroimaging data acquired during an n-back memory task experiment. We adopted a pooled Exponential Random Graph Model (ERGM) as a network statistical model to capture the underlying process in functional brain networks of 9 subjects…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Neural dynamics and brain function · EEG and Brain-Computer Interfaces
