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A Predictive Network Model of Cerebral Cortical Connectivity Based on a Distance Rule

Authors :
David C. Van Essen
Kenneth Knoblauch
Camille Lamy
Mária Ercsey-Ravasz
Zoltán Toroczkai
Nikola T. Markov
Henry Kennedy
Source :
Neuron. 80:184-197
Publication Year :
2013
Publisher :
Elsevier BV, 2013.

Abstract

SummaryRecent advances in neuroscience have engendered interest in large-scale brain networks. Using a consistent database of cortico-cortical connectivity, generated from hemisphere-wide, retrograde tracing experiments in the macaque, we analyzed interareal weights and distances to reveal an important organizational principle of brain connectivity. Using appropriate graph theoretical measures, we show that although very dense (66%), the interareal network has strong structural specificity. Connection weights exhibit a heavy-tailed lognormal distribution spanning five orders of magnitude and conform to a distance rule reflecting exponential decay with interareal separation. A single-parameter random graph model based on this rule predicts numerous features of the cortical network: (1) the existence of a network core and the distribution of cliques, (2) global and local binary properties, (3) global and local weight-based communication efficiencies modeled as network conductance, and (4) overall wire-length minimization. These findings underscore the importance of distance and weight-based heterogeneity in cortical architecture and processing.

Details

ISSN :
08966273
Volume :
80
Database :
OpenAIRE
Journal :
Neuron
Accession number :
edsair.doi.dedup.....60200bf4a6609f2149cec3b008281e15