Literature DB >> 34554581

Unbiased inference of the fitness landscape ruggedness from imprecise fitness estimates.

Siliang Song1, Jianzhi Zhang1.   

Abstract

Fitness landscapes map genotypes to their corresponding fitness under given environments and allow explaining and predicting evolutionary trajectories. Of particular interest is the landscape ruggedness or the unevenness of the landscape, because it impacts many aspects of evolution such as the likelihood that a population is trapped in a local fitness peak. Although the ruggedness has been inferred from a number of empirically mapped fitness landscapes, it is unclear to what extent this inference is affected by fitness estimation error, which is inevitable in the experimental determination of fitness landscapes. Here, we address this question by simulating fitness landscapes under various theoretical models, with or without fitness estimation error. We find that all eight examined measures of landscape ruggedness are overestimated due to imprecise fitness quantification, but different measures are affected to different degrees. We devise a method to use replicate fitness measures to correct this bias and show that our method performs well under realistic conditions. We conclude that previously reported fitness landscape ruggedness is likely upward biased owing to the negligence of fitness estimation error and advise that future fitness landscape mapping should include at least three biological replicates to permit an unbiased inference of the ruggedness.
© 2021 The Authors. Evolution © 2021 The Society for the Study of Evolution.

Entities:  

Keywords:  Adaptation; NK model; Rough Mount Fuji model; estimation error; evolution; polynomial model

Mesh:

Year:  2021        PMID: 34554581      PMCID: PMC9018209          DOI: 10.1111/evo.14363

Source DB:  PubMed          Journal:  Evolution        ISSN: 0014-3820            Impact factor:   3.694


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