A statistical model for brain networks inferred from large-scale electrophysiological signals
Catalina Obando, Fabrizio De Vico Fallani

TL;DR
This study introduces a statistical ERGM-based model to replicate and analyze brain networks derived from EEG signals, revealing insights into brain connectivity patterns during different resting states.
Contribution
The paper presents a novel application of exponential random graphs to model EEG-derived brain networks, capturing key topological features and differences between resting conditions.
Findings
Clustering and centrality metrics better explain EEG connectomes than other graph measures.
EO condition shows higher segregation in alpha band compared to EC.
Clustering connections are more prominent from EC to EO in alpha and beta bands.
Abstract
Network science has been extensively developed to characterize structural properties of complex systems, including brain networks inferred from neuroimaging data. As a result of the inference process, networks estimated from experimentally obtained biological data, represent one instance of a larger number of realizations with similar intrinsic topology. A modeling approach is therefore needed to support statistical inference on the bottom-up local connectivity mechanisms influencing the formation of the estimated brain networks. We adopted a statistical model based on exponential random graphs (ERGM) to reproduce brain networks, or connectomes, estimated by spectral coherence between high-density electroencephalographic (EEG) signals. We validated this approach in a dataset of 108 healthy subjects during eyes-open (EO) and eyes-closed (EC) resting-state conditions. Results showed that…
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