Node-reconfiguring multilayer networks of human brain function
Journal:
arXiv
Published Date:
Oct 8, 2024
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 window. In
this representation, network layers correspond to time windows, intralayer
links depict functional connectivity between ROIs, and interlayer links
quantify the overlap between ROIs on different layers. The ROI optimization
approach increases functional homogeneity notably, yielding an over 10-fold
increase in the fraction of ROIs with high homogeneity compared to static ROIs
from the Brainnetome atlas. The optimized ROIs reorganize non-trivially at
short time scales of consecutive time windows and across several windows. The
amount of reorganization across time windows is connected to intralayer
hubness: ROIs with intermediate levels of reorganization have stronger
intralayer links than extremely stable or unstable ROIs. Our results
demonstrate that reconfiguring parcellations yield more accurate network models
of brain function. This supports the ongoing paradigm shift towards the
chronnectome that sees the brain as a set of sources with continuously
reconfiguring spatial and connectivity profiles.