Transient and Equilibrium Synchronization in Complex Neuronal Networks
Luciano da Fontoura Costa

TL;DR
This paper explores how transient and equilibrium synchronization phenomena occur in complex neuronal networks, using computational models to analyze activation dynamics and their relation to network topology and structure.
Contribution
It introduces a comprehensive analysis of synchronization in neuronal networks, combining integrate-and-fire models with spectral and PCA methods, applied to both theoretical models and extit{C. elegans}.
Findings
Transient synchronization depends on network topology.
Hubs of connectivity are also hubs of activation.
Hierarchical structure influences oscillation patterns.
Abstract
Transient and equilibrium synchronizations in complex neuronal networks as a consequence of dynamics induced by having sources placed at specific neurons are investigated. The basic integrate-and-fire neuron is adopted, and the dynamics is estimated computationally so as to obtain the activation at each node along each instant of time. In the transient case, the dynamics is implemented so as to conserve the total activation entering the system. In our equilibrium investigations, the internally stored activation is limited to the value of the respective threshold. The synchronization of the activation of the network is then quantified in terms of its normalized entropy. The equilibrium investigations involve the application of a number of complementary characterization methods, including spectra and Principal Component Analysis, as well as of an equivalent model capable of reproducing…
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Taxonomy
TopicsNeural dynamics and brain function · Photoreceptor and optogenetics research · stochastic dynamics and bifurcation
