| Literature DB >> 33633576 |
Michele Castelluzzo1, Alessio Perinelli1, Davide Tabarelli2, Leonardo Ricci1,2.
Abstract
Physical connections between nodes in a complex network are constrained by limiting factors, such as the cost of establishing links and maintaining them, which can hinder network capability in terms of signal propagation speed and processing power. Trade-off mechanisms between cost constraints and performance requirements are reflected in the topology of a network and, ultimately, on the dependence of connectivity on geometric distance. This issue, though rarely addressed, is crucial in neuroscience, where physical links between brain regions are associated with a metabolic cost. In this work we investigate brain connectivity-estimated by means of a recently developed method that evaluates time scales of cross-correlation observability-and its dependence on geometric distance by analyzing resting state magnetoencephalographic recordings collected from a large set of healthy subjects. We identify three regimes of distance each showing a specific behavior of connectivity. This identification makes up a new tool to study the mechanisms underlying network formation and sustainment, with possible applications to the investigation of neuroscientific issues, such as aging and neurodegenerative diseases.Entities:
Keywords: brain network; connectivity; cross correlation; magnetoencephalography; network structure; time series
Year: 2021 PMID: 33633576 PMCID: PMC7901889 DOI: 10.3389/fphys.2020.611125
Source DB: PubMed Journal: Front Physiol ISSN: 1664-042X Impact factor: 4.566