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Data from: Mutations in yeast are deleterious on average regardless of the degree of adaptation to the testing environment

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posted on 2025-12-23, 23:23 authored by Kevin Bao
<p>The role of spontaneous mutations in evolution depends on the distribution of their effects on fitness. Despite a general consensus that new mutations are deleterious on average, a handful of mutation accumulation experiments in diverse organisms instead suggest that of beneficial and deleterious mutations can have comparable fitness impacts, i.e., the product of their respective rates and effects can be roughly equal. We currently lack a general framework for predicting when such a pattern will occur. One idea is that beneficial mutations will be more evident in genotypes that are not well adapted to the testing environment. We tested this prediction experimentally in the laboratory yeast <em>Saccharomyces cerevisiae</em> by allowing nine replicate populations to adapt to novel environments with complex sets of stressors. After >1000 asexual generations interspersed with 41 rounds of sexual reproduction, we assessed the mean effect of induced mutations on yeast growth in both the environment to which they had been adapting and the alternative novel environment. The mutations were deleterious on average, with the severity depending on the testing environment. However, we find no evidence that the adaptive match between genotype and environment is predictive of mutational fitness effects.</p>

Funding

USDA-NIFA

National Institutes of Health

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Data contact name

Bao, Kevin

Data contact email

kevinbao1444@gmail.com

Publisher

Dryad

Theme

  • Not specified

ISO Topic Category

  • biota

National Agricultural Library Thesaurus terms

prediction; sexual reproduction; genotype; yeasts; mutation accumulation; evolution

Pending citation

  • Yes

Public Access Level

  • Public

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