Demographic inference using genetic data from a single individual: separating population size variation from population structure
Olivier Mazet, Willy Rodr\'iguez, Loun\`es Chikhi

TL;DR
This study develops methods to distinguish between population size changes and structure using genetic data from a single individual, improving demographic inference accuracy.
Contribution
It introduces a maximum likelihood approach and model choice procedure to differentiate population size variation from structure with single-individual data.
Findings
Parameter estimation is feasible under multiple models.
Model choice can be effectively performed using Kolmogorov-Smirnov tests.
Methods are validated across diverse demographic scenarios.
Abstract
The rapid development of sequencing technologies represents new opportunities for population genetics research. It is expected that genomic data will increase our ability to reconstruct the history of populations. While this increase in genetic information will likely help biologists and anthropologists to reconstruct the demographic history of populations, it also represents new challenges. Recent work has shown that structured populations generate signals of population size change. As a consequence it is often difficult to determine whether demographic events such as expansions or contractions (bottlenecks) inferred from genetic data are real or due to the fact that populations are structured in nature. Given that few inferential methods allow us to account for that structure, and that genomic data will necessarily increase the precision of parameter estimates, it is important to…
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Taxonomy
TopicsGenetic diversity and population structure · Genetic and phenotypic traits in livestock · Evolution and Genetic Dynamics
