4.7 Article

Approximate Bayesian Computation applied to time series of population genetic data disentangles rapid genetic changes and demographic variations in a pathogen population

Journal

MOLECULAR ECOLOGY
Volume -, Issue -, Pages -

Publisher

WILEY
DOI: 10.1111/mec.16965

Keywords

ABC inference; demogenetics; population genetics; rapid adaptation; time series

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Adaptation in natural populations can lead to rapid changes in phenotype and genotype frequencies over a few generations. A new ABC framework is proposed to understand the genetic and demographic changes during rapid adaptation. The framework demonstrates high accuracy in both model and parameter estimations and is applied to empirical data of a pathogen population. The inferred values are consistent with empirical knowledge, suggesting the potential of this framework in studying rapid adaptation.
Adaptation can occur at remarkably short timescales in natural populations, leading to drastic changes in phenotypes and genotype frequencies over a few generations only. The inference of demographic parameters can allow understanding how evolutionary forces interact and shape the genetic trajectories of populations during rapid adaptation. Here we propose a new Approximate Bayesian Computation (ABC) framework that couples a forward and individual-based model with temporal genetic data to disentangle genetic changes and demographic variations in a case of rapid adaptation. We test the accuracy of our inferential framework and evaluate the benefit of considering a dense versus sparse sampling. Theoretical investigations demonstrate high accuracy in both model and parameter estimations, even if a strong thinning is applied to time series data. Then, we apply our ABC inferential framework to empirical data describing the population genetic changes of the poplar rust pathogen following a major event of resistance overcoming. We successfully estimate key demographic and genetic parameters, including the proportion of resistant hosts deployed in the landscape and the level of standing genetic variation from which selection occurred. Inferred values are in accordance with our empirical knowledge of this biological system. This new inferential framework, which contrasts with coalescent-based ABC analyses, is promising for a better understanding of evolutionary trajectories of populations subjected to rapid adaptation.

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