A publish-subscribe model of genetic networks
Date
2008-09-19
Authors
Calcott, Brett
Balcan, Duygu
Hohenlohe, Paul
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Public Library of Science
Abstract
We present a simple model of genetic regulatory networks in which regulatory connections among genes are mediated by a limited number of signaling molecules. Each gene in our model produces (publishes) a single gene product, which regulates the expression of other genes by binding to regulatory regions that correspond (subscribe) to that product. We explore the consequences of this publish-subscribe model of regulation for the properties of single networks and for the evolution of populations of networks. Degree distributions of randomly constructed networks, particularly multimodal in-degree distributions, which depend on the length of the regulatory sequences and the number of possible gene products, differed from simpler Boolean NK models. In simulated evolution of populations of networks, single mutations in regulatory or coding regions resulted in multiple changes in regulatory connections among genes, or alternatively in neutral change that had no effect on phenotype. This resulted in remarkable evolvability in both number and length of attractors, leading to evolved networks far beyond the expectation of these measures based on random distributions. Surprisingly, this rapid evolution was not accompanied by changes in degree distribution; degree distribution in the evolved networks was not substantially different from that of randomly generated networks. The publish-subscribe model also allows exogenous gene products to create an environment, which may be noisy or stable, in which dynamic behavior occurs. In simulations, networks were able to evolve moderate levels of both mutational and environmental robustness.
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Keywords
Keywords: gene product; article; controlled study; gene expression regulation; gene mutation; gene regulatory network; genetic code; mathematical model; phenotype; regulatory sequence; simulation; algorithm; biological model; computer simulation; environment; gene;
Citation
PLoS ONE 3.9 (2008): e3245
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PLOS ONE (Public Library of Science)
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Journal article
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