Effective Connectivity and Bias Entropy Improve Prediction of Dynamical Regime in Automata Networks

Author:

Costa Felipe Xavier123ORCID,Rozum Jordan C.1ORCID,Marcus Austin M.1ORCID,Rocha Luis M.12ORCID

Affiliation:

1. Systems Science and Industrial Engineering Department, Binghamton University (State University of New York), Binghamton, NY 13902, USA

2. Instituto Gulbenkian de Ciência, 2780-156 Oeiras, Portugal

3. Department of Physics, State University of New York at Albany, Albany, NY 12222, USA

Abstract

Biomolecular network dynamics are thought to operate near the critical boundary between ordered and disordered regimes, where large perturbations to a small set of elements neither die out nor spread on average. A biomolecular automaton (e.g., gene, protein) typically has high regulatory redundancy, where small subsets of regulators determine activation via collective canalization. Previous work has shown that effective connectivity, a measure of collective canalization, leads to improved dynamical regime prediction for homogeneous automata networks. We expand this by (i) studying random Boolean networks (RBNs) with heterogeneous in-degree distributions, (ii) considering additional experimentally validated automata network models of biomolecular processes, and (iii) considering new measures of heterogeneity in automata network logic. We found that effective connectivity improves dynamical regime prediction in the models considered; in RBNs, combining effective connectivity with bias entropy further improves the prediction. Our work yields a new understanding of criticality in biomolecular networks that accounts for collective canalization, redundancy, and heterogeneity in the connectivity and logic of their automata models. The strong link we demonstrate between criticality and regulatory redundancy provides a means to modulate the dynamical regime of biochemical networks.

Funder

National Institutes of Health

Fundação para a Ciência e Tecnologia

Publisher

MDPI AG

Subject

General Physics and Astronomy

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