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A mechanistic link between cellular trade-offs, gene expression and growth

Andrea Y. Weiβe, Diego A. Oyarzún, Vincent Danos, Peter S. Swain
doi: https://doi.org/10.1101/014787
Andrea Y. Weiβe
1SynthSys – Synthetic & Systems Biology, University of Edinburgh, UK
2School of Informatics, University of Edinburgh,, UK
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Diego A. Oyarzún
3Department of Mathematics, Imperial College London, UK
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Vincent Danos
1SynthSys – Synthetic & Systems Biology, University of Edinburgh, UK
2School of Informatics, University of Edinburgh,, UK
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Peter S. Swain
1SynthSys – Synthetic & Systems Biology, University of Edinburgh, UK
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  • For correspondence: peter.swain@ed.ac.uk
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Abstract

Intracellular processes rarely work in isolation but continually, interact with the rest of the cell. In microbes, for example, we now know that gene expression across the whole genome typically changes with growth rate. The mechanisms driving such global regulation, however, are not well understood. Here we consider three trade-offs that because of limitations in levels of cellular energy, free ribosomes, and proteins are faced by all living cells and construct a mechanistic model that comprises these trade-offs. Our model couples gene expression with growth rate and growth rate with a growing population of cells. We show that the model recovers Monod's law for the growth of microbes and two other empirical relationships connecting growth rate to the mass fraction of ribosomes. Further, we can explain growth related effects in dosage compensation by paralogs and predict host-circuit interactions in synthetic biology. Simulating competitions between strains, we find that the regulation of metabolic pathways may have evolved not to match expression of enzymes to levels of extracellular substrates in changing environments but rather to balance a trade-off between exploiting one type of nutrient over another. Although coarse-grained, the trade-offs that the model embodies are fundamental, and, as such, our modelling framework has potentially wide application, including in both biotechnology and medicine.

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The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted February 03, 2015.
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A mechanistic link between cellular trade-offs, gene expression and growth
Andrea Y. Weiβe, Diego A. Oyarzún, Vincent Danos, Peter S. Swain
bioRxiv 014787; doi: https://doi.org/10.1101/014787
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A mechanistic link between cellular trade-offs, gene expression and growth
Andrea Y. Weiβe, Diego A. Oyarzún, Vincent Danos, Peter S. Swain
bioRxiv 014787; doi: https://doi.org/10.1101/014787

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