A Genome-Scan Method to Identify Selected Loci Appropriate for Both Dominant and Codominant Markers: A Bayesian Perspective

Identifying loci under natural selection from genomic surveys is of great interest in different research areas. Commonly used methods to separate neutral effects from adaptive effects are based on locus-specific population differentiation coefficients to identify outliers. Here we extend such an app...

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Bibliographic Details
Published inGenetics (Austin) Vol. 180; no. 2; pp. 977 - 993
Main Authors Foll, Matthieu, Gaggiotti, Oscar
Format Journal Article
LanguageEnglish
Published United States Genetics Soc America 01.10.2008
Genetics Society of America
Oxford University Press
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Summary:Identifying loci under natural selection from genomic surveys is of great interest in different research areas. Commonly used methods to separate neutral effects from adaptive effects are based on locus-specific population differentiation coefficients to identify outliers. Here we extend such an approach to estimate directly the probability that each locus is subject to selection using a Bayesian method. We also extend it to allow the use of dominant markers like AFLPs. It has been shown that this model is robust to complex demographic scenarios for neutral genetic differentiation. Here we show that the inclusion of isolated populations that underwent a strong bottleneck can lead to a high rate of false positives. Nevertheless, we demonstrate that it is possible to avoid them by carefully choosing the populations that should be included in the analysis. We analyze two previously published data sets: a human data set of codominant markers and a Littorina saxatilis data set of dominant markers. We also perform a detailed sensitivity study to compare the power of the method using amplified fragment length polymorphism (AFLP), SNP, and microsatellite markers. The method has been implemented in a new software available at our website (http://www-leca.ujf-grenoble.fr/logiciels.htm).
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PMCID: PMC2567396
Communicating editor: R. Nielsen
Corresponding author: Computational and Molecular Population Genetics Lab, Zoology Institute, Baltzerstrasse 6, 3012 Bern, Switzerland. E-mail: matthieu.foll@zoo.unibe.ch
ISSN:0016-6731
1943-2631
1943-2631
DOI:10.1534/genetics.108.092221