Affiliation:
1. McConnell Brain Imaging Centre, Montréal Neurological Institute, McGill University, Montréal, Canada
Abstract
Abstract
Applications of graph theory to the connectome have inspired several models of how neural signaling unfolds atop its structure. Analytic measures derived from these communication models have mainly been used to extract global characteristics of brain networks, obscuring potentially informative inter-regional relationships. Here we develop a simple standardization method to investigate polysynaptic communication pathways between pairs of cortical regions. This procedure allows us to determine which pairs of nodes are topologically closer and which are further than expected on the basis of their degree. We find that communication pathways delineate canonical functional systems. Relating nodal communication capacity to meta-analytic probabilistic patterns of functional specialization, we also show that areas that are most closely integrated within the network are associated with higher order cognitive functions. We find that these regions’ proclivity towards functional integration could naturally arise from the brain’s anatomical configuration through evenly distributed connections among multiple specialized communities. Throughout, we consider two increasingly constrained null models to disentangle the effects of the network’s topology from those passively endowed by spatial embedding. Altogether, the present findings uncover relationships between polysynaptic communication pathways and the brain’s functional organization across multiple topological levels of analysis and demonstrate that network integration facilitates cognitive integration.
Funder
Fonds de recherche du Québec - Nature et technologies
Natural Sciences and Engineering Research Council of Canada
Canadian Institutes of Health Research
Brain Canada Foundation Future Leaders Fund
Canada Research Chairs Program
Michael J. Fox Foundation
Healthy Brains, Healthy Lives Initiative
Subject
Applied Mathematics,Artificial Intelligence,Computer Science Applications,General Neuroscience