Bayesian Inference of Selection in the Wright-Fisher Diffusion Model
Jeffrey J. Gory, Radu Herbei, Laura S. Kubatko

TL;DR
This paper introduces a Bayesian method for estimating the strength of natural selection from allele frequency data using the Wright-Fisher diffusion model, leveraging recent exact sampling techniques for improved accuracy and efficiency.
Contribution
It develops a novel Bayesian inference approach for selection estimation in the Wright-Fisher model, utilizing exact sampling to enhance computational efficiency and accuracy.
Findings
Method performs well on simulated data.
Application to empirical data shows evidence of positive selection.
Bayesian approach offers advantages over likelihood-based methods.
Abstract
The increasing availability of population-level allele frequency data across one or more related populations necessitates the development of methods that can efficiently estimate population genetics parameters, such as the strength of selection acting on the population(s), from such data. Existing methods for this problem in the setting of the Wright-Fisher diffusion model are primarily likelihood-based, and rely on numerical approximation for likelihood computation and on bootstrapping for assessment of variability in the resulting estimates, requiring extensive computation. Recent work (Jenkins and Spano, 2015) has provided a method for obtaining exact samples from general Wright-Fisher diffusion processes, enabling the development of methods for Bayesian estimation in this setting. We develop and implement a Bayesian method for estimating the strength of selection based on the…
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