| Literature DB >> 35355506 |
Junhao Liang1, Sheng-Jun Wang2, Changsong Zhou1.
Abstract
The brain network is notably cost-efficient, while the fundamental physical and dynamic mechanisms underlying its economical optimization in network structure and activity have not been determined. In this study, we investigate the intricate cost-efficient interplay between structure and dynamics in biologically plausible spatial modular neuronal network models. We observe that critical avalanche states from excitation-inhibition balance under modular network topology with less wiring cost can also achieve lower costs in firing but with strongly enhanced response sensitivity to stimuli. We derive mean-field equations that govern the macroscopic network dynamics through a novel approximate theory. The mechanism of low firing cost and stronger response in the form of critical avalanches is explained as a proximity to a Hopf bifurcation of the modules when increasing their connection density. Our work reveals the generic mechanism underlying the cost-efficient modular organization and critical dynamics widely observed in neural systems, providing insights into brain-inspired efficient computational designs.Entities:
Keywords: cost efficiency; critical avalanche; mean-field theory; modular network; neural network
Year: 2021 PMID: 35355506 PMCID: PMC8962757 DOI: 10.1093/nsr/nwab102
Source DB: PubMed Journal: Natl Sci Rev ISSN: 2053-714X Impact factor: 17.275