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Inference with selection, varying population size, and evolving population structure: application of ABC to a forward-backward coalescent process with interactions.

Clotilde LepersSylvain BilliardMatthieu PorteSylvie MéléardViet Chi Tran
Published in: Heredity (2020)
Genetic data are often used to infer demographic history and changes or detect genes under selection. Inferential methods are commonly based on models making various strong assumptions: demography and population structures are supposed a priori known, the evolution of the genetic composition of a population does not affect demography nor population structure, and there is no selection nor interaction between and within genetic strains. In this paper, we present a stochastic birth-death model with competitive interactions and asexual reproduction. We develop an inferential procedure for ecological, demographic, and genetic parameters. We first show how genetic diversity and genealogies are related to birth and death rates, and to how individuals compete within and between strains. This leads us to propose an original model of phylogenies, with trait structure and interactions, that allows multiple merging. Second, we develop an Approximate Bayesian Computation framework to use our model for analyzing genetic data. We apply our procedure to simulated data from a toy model, and to real data by analyzing the genetic diversity of microsatellites on Y-chromosomes sampled from Central Asia human populations in order to test whether different social organizations show significantly different fertilities.
Keyphrases
  • pregnant women
  • genetic diversity
  • genome wide
  • electronic health record
  • copy number
  • big data
  • escherichia coli
  • healthcare
  • dna methylation
  • endothelial cells
  • minimally invasive
  • high resolution
  • transcription factor