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The community structure of functional brain networks exhibits scale-specific patterns of inter- and intra-subject variability

Authors :
Danielle S. Bassett
Evan M. Gordon
Maxwell A. Bertolero
Caterina Gratton
Richard F. Betzel
Nico U.F. Dosenbach
Source :
Neuroimage
Publication Year :
2019
Publisher :
Elsevier BV, 2019.

Abstract

The network organization of the human brain varies across individuals, changes with development and aging, and differs in disease. Discovering the major dimensions along which this variability is displayed remains a central goal of both neuroscience and clinical medicine. Such efforts can be usefully framed within the context of the brain's modular network organization, which can be assessed quantitatively using powerful computational techniques and extended for the purposes of multi-scale analysis, dimensionality reduction, and biomarker generation. Though the concept of modularity and its utility in describing brain network organization is clear, principled methods for comparing multi-scale communities across individuals and time are surprisingly lacking. Here, we present a method that uses multi-layer networks to simultaneously discover the modular structure of many subjects at once. This method builds upon the well-known multi-layer modularity maximization technique, and provides a viable and principled tool for studying differences in network communities across individuals and within individuals across time. We test this method on two datasets and identify consistent patterns of inter-subject community variability, demonstrating that this variability – which would be undetectable using past approaches – is associated with measures of cognitive performance. In general, the multi-layer, multi-subject framework proposed here represents an advancement over current approaches by straighforwardly mapping community assignments across subjects and holds promise for future investigations of inter-subject community variation in clinical populations or as a result of task constraints.

Details

ISSN :
10538119
Volume :
202
Database :
OpenAIRE
Journal :
NeuroImage
Accession number :
edsair.doi.dedup.....db5c8596a5d9eccf9df136f6381b67af
Full Text :
https://doi.org/10.1016/j.neuroimage.2019.07.003