A new $F_{\text{ST}}$-based method to uncover local adaptation using environmental variables
Pierre de Villemereuil, Oscar E. Gaggiotti

TL;DR
This paper introduces BayeScEnv, a new Fst-based genome-scan method that integrates environmental data to improve detection of local adaptation, reducing false positives compared to existing methods.
Contribution
The paper presents BayeScEnv, a novel method that incorporates environmental differentiation into Fst-based genome scans, enhancing detection accuracy of local adaptation signals.
Findings
Lower false positive rate than BayeScan in simulations
Effective application to human and salmon datasets
Balances power and false positive rate better than existing methods
Abstract
- Genome-scan methods are used for screening genome-wide patterns of DNA polymorphism to detect signatures of positive selection. There are two main types of methods: (i) 'outlier' detection methods based on Fst that detect loci with high differentiation compared to the rest of the genomes, and (ii) environmental association methods that test the association between allele frequencies and environmental variables. - We present a new Fst-based genome-scan method, BayeScEnv, which incorporates environmental information in the form of 'environmental differentiation'. It is based on the F-model, but, as opposed to existing approaches, it considers two locus-specific effects; one due to divergent selection, and another one due to various other processes different from local adaptation (e.g. range expansions, differences in mutation rates across loci or background selection). The method was…
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Taxonomy
TopicsGenetic diversity and population structure · Genetic and phenotypic traits in livestock · Evolution and Genetic Dynamics
