MLMNQMFeb 28, 2016

Stability and Structural Properties of Gene Regulation Networks with Coregulation Rules

arXiv:1602.08753v2
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This work addresses stability analysis in gene regulation networks for systems biology, presenting incremental advances by extending Random Boolean Networks with coregulation models.

The authors tackled the problem of modeling gene regulation networks with coregulation rules, showing that autoregulated multi-input modules and hierarchical gene-complex models achieve greater stability than networks without coregulation, with specific gains demonstrated through mean-field analysis and simulations.

Coregulation of the expression of groups of genes has been extensively demonstrated empirically in bacterial and eukaryotic systems. Such coregulation can arise through the use of shared regulatory motifs, which allow the coordinated expression of modules (and module groups) of functionally related genes across the genome. Coregulation can also arise through the physical association of multi-gene complexes through chromosomal looping, which are then transcribed together. We present a general formalism for modeling coregulation rules in the framework of Random Boolean Networks (RBN), and develop specific models for transcription factor networks with modular structure (including module groups, and multi-input modules (MIM) with autoregulation) and multi-gene complexes (including hierarchical differentiation between multi-gene complex members). We develop a mean-field approach to analyse the stability of large networks incorporating coregulation, and show that autoregulated MIM and hierarchical gene-complex models can achieve greater stability than networks without coregulation whose rules have matching activation frequency. We provide further analysis of the stability of small networks of both kinds through simulations. We also characterize several general properties of the transients and attractors in the hierarchical coregulation model, and show using simulations that the steady-state distribution factorizes hierarchically as a Bayesian network in a Markov Jump Process analogue of the RBN model.

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