A Model of Gene Expression Based on Random Dynamical Systems Reveals Modularity Properties of Gene Regulatory Networks
Fernando Antoneli, Renata C. Ferreira, Marcelo R. S. Briones

TL;DR
This paper introduces a novel modeling approach for gene expression using random dynamical systems, enabling the analysis of modularity and stochastic effects in gene regulatory networks without solving complex equations.
Contribution
It presents a general coupling method for RDS-based gene network modeling, highlighting modularity and stochastic analysis with validation against classical rate equations.
Findings
Reveals modular structure of gene regulatory networks
Provides a mathematical framework for stochastic gene modeling
Shows classical rate equations as a small noise limit
Abstract
Here we propose a new approach to modeling gene expression based on the theory of random dynamical systems (RDS) that provides a general coupling prescription between the nodes of any given regulatory network given the dynamics of each node is modeled by a RDS. The main virtues of this approach are the following: (i) it provides a natural way to obtain arbitrarily large networks by coupling together simple basic pieces, thus revealing the modularity of regulatory networks; (ii) the assumptions about the stochastic processes used in the modeling are fairly general, in the sense that the only requirement is stationarity; (iii) there is a well developed mathematical theory, which is a blend of smooth dynamical systems theory, ergodic theory and stochastic analysis that allows one to extract relevant dynamical and statistical information without solving the system; (iv) one may obtain the…
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