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Empirical mean-noise fitness landscapes reveal the fitness impact of gene expression noise.


ABSTRACT: The effects of cell-to-cell variation (noise) in gene expression have proven difficult to quantify because of the mechanistic coupling of noise to mean expression. To independently quantify the effects of changes in mean expression and noise we determine the fitness landscapes in mean-noise expression space for 33 genes in yeast. For most genes, short-lived (noise) deviations away from the expression optimum are nearly as detrimental as sustained (mean) deviations. Fitness landscapes can be classified by a combination of each gene's sensitivity to protein shortage or surplus. We use this classification to explore evolutionary scenarios for gene expression and find that certain landscape topologies can break the mechanistic coupling of mean and noise, thus promoting independent optimization of both properties. These results demonstrate that noise is detrimental for many genes and reveal non-trivial consequences of mean-noise-fitness topologies for the evolution of gene expression systems.

SUBMITTER: Schmiedel JM 

PROVIDER: S-EPMC6639414 | biostudies-literature | 2019 Jul

REPOSITORIES: biostudies-literature

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Empirical mean-noise fitness landscapes reveal the fitness impact of gene expression noise.

Schmiedel Jörn M JM   Carey Lucas B LB   Lehner Ben B  

Nature communications 20190718 1


The effects of cell-to-cell variation (noise) in gene expression have proven difficult to quantify because of the mechanistic coupling of noise to mean expression. To independently quantify the effects of changes in mean expression and noise we determine the fitness landscapes in mean-noise expression space for 33 genes in yeast. For most genes, short-lived (noise) deviations away from the expression optimum are nearly as detrimental as sustained (mean) deviations. Fitness landscapes can be clas  ...[more]

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