Resolving structural variability in network models and the brain
Florian Klimm, Danielle S. Bassett, Jean M. Carlson, Peter J. Mucha

TL;DR
This study compares empirical brain network data with various synthetic models to identify mechanisms underlying the brain's complex connectivity, revealing that models constrained by anatomical regions best replicate real network properties.
Contribution
The paper introduces a comprehensive comparison of 13 synthetic network models with human brain connectivity data, highlighting the importance of anatomical constraints in modeling brain networks.
Findings
Models constrained by anatomical regions resemble real brain networks.
Single-property models often fail to replicate multiple network features.
Multiple mechanisms likely contribute to brain network development.
Abstract
Large-scale white matter pathways crisscrossing the cortex create a complex pattern of connectivity that underlies human cognitive function. Generative mechanisms for this architecture have been difficult to identify in part because little is known about mechanistic drivers of structured networks. Here we contrast network properties derived from diffusion spectrum imaging data of the human brain with 13 synthetic network models chosen to probe the roles of physical network embedding and temporal network growth. We characterize both the empirical and synthetic networks using familiar diagnostics presented in statistical form, as scatter plots and distributions, to reveal the full range of variability of each measure across scales in the network. We focus on the degree distribution, degree assortativity, hierarchy, topological Rentian scaling, and topological fractal scaling---in addition…
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