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The relation between crosstalk and gene regulation form revisited

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  • Rok Grah
  • Tamar Friedlander

Abstract

Genes differ in the frequency at which they are expressed and in the form of regulation used to control their activity. In particular, positive or negative regulation can lead to activation of a gene in response to an external signal. Previous works proposed that the form of regulation of a gene correlates with its frequency of usage: positive regulation when the gene is frequently expressed and negative regulation when infrequently expressed. Such network design means that, in the absence of their regulators, the genes are found in their least required activity state, hence regulatory intervention is often necessary. Due to the multitude of genes and regulators, spurious binding and unbinding events, called “crosstalk”, could occur. To determine how the form of regulation affects the global crosstalk in the network, we used a mathematical model that includes multiple regulators and multiple target genes. We found that crosstalk depends non-monotonically on the availability of regulators. Our analysis showed that excess use of regulation entailed by the formerly suggested network design caused high crosstalk levels in a large part of the parameter space. We therefore considered the opposite ‘idle’ design, where the default unregulated state of genes is their frequently required activity state. We found, that ‘idle’ design minimized the use of regulation and thus minimized crosstalk. In addition, we estimated global crosstalk of S. cerevisiae using transcription factors binding data. We demonstrated that even partial network data could suffice to estimate its global crosstalk, suggesting its applicability to additional organisms. We found that S. cerevisiae estimated crosstalk is lower than that of a random network, suggesting that natural selection reduces crosstalk. In summary, our study highlights a new type of protein production cost which is typically overlooked: that of regulatory interference caused by the presence of excess regulators in the cell. It demonstrates the importance of whole-network descriptions, which could show effects missed by single-gene models.Author summary: Genes differ in the frequency at which they are expressed and in the form of regulation used to control their activity. The basic level of regulation is mediated by different types of DNA-binding proteins, where each type regulates particular gene(s). We distinguish between two basic forms of regulation: positive—if a gene is activated by the binding of its regulatory protein, and negative—if it is active unless bound by its regulatory protein. Due to the multitude of genes and regulators, spurious binding and unbinding events, called “crosstalk”, could occur. How does the form of regulation, positive or negative, affect the extent of regulatory crosstalk? To address this question, we used a mathematical model integrating many genes and many regulators. As intuition suggests, we found that in most of the parameter space, crosstalk increased with the availability of regulators. We propose, that crosstalk is usually reduced when networks are designed such that minimal regulation is needed, which we call the ‘idle’ design. In other words: a frequently needed gene will use negative regulation and conversely, a scarcely needed gene will employ positive regulation. In both cases, the requirement for the regulators is minimized. In addition, we demonstrate how crosstalk can be calculated from available datasets and discuss the technical challenges in such calculation, specifically data incompleteness.

Suggested Citation

  • Rok Grah & Tamar Friedlander, 2020. "The relation between crosstalk and gene regulation form revisited," PLOS Computational Biology, Public Library of Science, vol. 16(2), pages 1-24, February.
  • Handle: RePEc:plo:pcbi00:1007642
    DOI: 10.1371/journal.pcbi.1007642
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    References listed on IDEAS

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    1. Sina Ghaemmaghami & Won-Ki Huh & Kiowa Bower & Russell W. Howson & Archana Belle & Noah Dephoure & Erin K. O'Shea & Jonathan S. Weissman, 2003. "Global analysis of protein expression in yeast," Nature, Nature, vol. 425(6959), pages 737-741, October.
    2. Avihu H. Yona & Eric J. Alm & Jeff Gore, 2018. "Random sequences rapidly evolve into de novo promoters," Nature Communications, Nature, vol. 9(1), pages 1-10, December.
    3. Erez Dekel & Uri Alon, 2005. "Optimality and evolutionary tuning of the expression level of a protein," Nature, Nature, vol. 436(7050), pages 588-592, July.
    4. Michael A. Rowland & Joseph M. Greenbaum & Eric J. Deeds, 2017. "Crosstalk and the evolvability of intracellular communication," Nature Communications, Nature, vol. 8(1), pages 1-8, December.
    5. Tamar Friedlander & Roshan Prizak & Călin C. Guet & Nicholas H. Barton & Gašper Tkačik, 2016. "Intrinsic limits to gene regulation by global crosstalk," Nature Communications, Nature, vol. 7(1), pages 1-12, November.
    6. Tamar Friedlander & Roshan Prizak & Nicholas H. Barton & Gašper Tkačik, 2017. "Evolution of new regulatory functions on biophysically realistic fitness landscapes," Nature Communications, Nature, vol. 8(1), pages 1-11, December.
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