| Literature DB >> 30679262 |
Jingxian Liu1,2, Jackson Champer3,2, Anna Maria Langmüller1,4,5, Chen Liu1,2, Joan Chung1,2, Riona Reeves1,2, Anisha Luthra1,2, Yoo Lim Lee1,2, Andrew H Vaughn1, Andrew G Clark1,2, Philipp W Messer3.
Abstract
Estimating fitness differences between allelic variants is a central goal of experimental evolution. Current methods for inferring such differences from allele frequency time series typically assume that the effects of selection can be described by a fixed selection coefficient. However, fitness is an aggregate of several components including mating success, fecundity, and viability. Distinguishing between these components could be critical in many scenarios. Here, we develop a flexible maximum likelihood framework that can disentangle different components of fitness from genotype frequency data, and estimate them individually in males and females. As a proof-of-principle, we apply our method to experimentally evolved cage populations of Drosophila melanogaster, in which we tracked the relative frequencies of a loss-of-function and wild-type allele of yellow This X-linked gene produces a recessive yellow phenotype when disrupted and is involved in male courtship ability. We find that the fitness costs of the yellow phenotype take the form of substantially reduced mating preference of wild-type females for yellow males, together with a modest reduction in the viability of yellow males and females. Our framework should be generally applicable to situations where it is important to quantify fitness components of specific genetic variants, including quantitative characterization of the population dynamics of CRISPR gene drives.Entities:
Keywords: experimental evolution; fitness; maximum likelihood; natural selection; time series data
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Year: 2019 PMID: 30679262 PMCID: PMC6404243 DOI: 10.1534/genetics.118.301893
Source DB: PubMed Journal: Genetics ISSN: 0016-6731 Impact factor: 4.562