Node-reconfiguring multilayer networks of human brain function
Tarmo Nurmi (1), Pietro De Luca (1), Maria Hakonen (2,3), Mikko, Kivel\"a (1), Onerva Korhonen (1,4) ((1) Department of Computer Science,, Aalto University, Helsinki, Finland, (2) Athinoula A. Martinos Center for, Biomedical Imaging, Department of Radiology

TL;DR
This paper introduces a dynamic multilayer network model for brain function analysis, optimizing ROI boundaries for high functional homogeneity, revealing significant reorganization over time, and improving the accuracy of brain network models.
Contribution
The study presents a novel node-reconfiguring multilayer network approach that enhances ROI homogeneity and captures temporal reconfigurations in brain networks, advancing functional brain analysis.
Findings
ROI optimization increases homogeneity tenfold
Reorganization of ROIs occurs at short time scales
Reconfiguration correlates with intralayer hubness
Abstract
Functional brain network properties are heavily influenced by how the the network nodes are defined. A common approach uses Regions of Interest (ROIs), i.e., predetermined collections of functional magnetic resonance imaging (fMRI) measurement voxels, as nodes. Their definition is always a compromise, as static ROIs cannot capture the dynamics and temporal reconfigurations of the brain areas. Consequently, the ROIs do not align with the functionally homogeneous regions, which can explain the low functional homogeneity values observed for the ROIs. This is in violation of the underlying homogeneity assumption in functional brain network analysis pipelines, which can cause serious problems such as spurious network structure. We introduce the node-reconfiguring multilayer network model, where nodes represent ROIs with boundaries optimized for high functional homogeneity in each time…
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Taxonomy
MethodsSparse Evolutionary Training · ALIGN
