| Literature DB >> 35658036 |
Stuart Oldham1,2, Ben D Fulcher3, Kevin Aquino1,3, Aurina Arnatkevičiūtė1, Casey Paquola4, Rosita Shishegar1,5, Alex Fornito1.
Abstract
The complex connectivity of nervous systems is thought to have been shaped by competitive selection pressures to minimize wiring costs and support adaptive function. Accordingly, recent modeling work indicates that stochastic processes, shaped by putative trade-offs between the cost and value of each connection, can successfully reproduce many topological properties of macroscale human connectomes measured with diffusion magnetic resonance imaging. Here, we derive a new formalism that more accurately captures the competing pressures of wiring cost minimization and topological complexity. We further show that model performance can be improved by accounting for developmental changes in brain geometry and associated wiring costs, and by using interregional transcriptional or microstructural similarity rather than topological wiring rules. However, all models struggled to capture topographical (i.e., spatial) network properties. Our findings highlight an important role for genetics in shaping macroscale brain connectivity and indicate that stochastic models offer an incomplete account of connectome organization.Entities:
Year: 2022 PMID: 35658036 PMCID: PMC9166341 DOI: 10.1126/sciadv.abm6127
Source DB: PubMed Journal: Sci Adv ISSN: 2375-2548 Impact factor: 14.957