Building blocks of self-sustained activity in a simple deterministic model of excitable neural networks

Front Comput Neurosci. 2012 Aug 6:6:50. doi: 10.3389/fncom.2012.00050. eCollection 2012.

Abstract

Understanding the interplay of topology and dynamics of excitable neural networks is one of the major challenges in computational neuroscience. Here we employ a simple deterministic excitable model to explore how network-wide activation patterns are shaped by network architecture. Our observables are co-activation patterns, together with the average activity of the network and the periodicities in the excitation density. Our main results are: (1) the dependence of the correlation between the adjacency matrix and the instantaneous (zero time delay) co-activation matrix on global network features (clustering, modularity, scale-free degree distribution), (2) a correlation between the average activity and the amount of small cycles in the graph, and (3) a microscopic understanding of the contributions by 3-node and 4-node cycles to sustained activity.

Keywords: cellular automaton; cycles; excitable dynamics; self-sustained activity.