The Population Genetic Signature of Polygenic Local Adaptation
Jeremy J. Berg, Graham Coop

TL;DR
This paper introduces a new population genetic framework combining GWAS data with models of genetic drift to detect subtle signals of local adaptation in polygenic traits across multiple populations.
Contribution
It develops novel methods for identifying polygenic local adaptation by analyzing genetic value covariance and overdispersion, outperforming existing single-locus approaches.
Findings
Detected signals of local adaptation in height, skin pigmentation, and disease traits.
Methods outperform traditional single-locus tests in power and accuracy.
Identified specific populations contributing to adaptive signals.
Abstract
Adaptation in response to selection on polygenic phenotypes may occur via subtle allele frequencies shifts at many loci. Current population genomic techniques are not well posed to identify such signals. In the past decade, detailed knowledge about the specific loci underlying polygenic traits has begun to emerge from genome-wide association studies (GWAS). Here we combine this knowledge from GWAS with robust population genetic modeling to identify traits that may have been influenced by local adaptation. We exploit the fact that GWAS provide an estimate of the additive effect size of many loci to estimate the mean additive genetic value for a given phenotype across many populations as simple weighted sums of allele frequencies. We first describe a general model of neutral genetic value drift for an arbitrary number of populations with an arbitrary relatedness structure. Based on this…
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