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The effects of mutation and recombination rate heterogeneity on the inference of demography and the distribution of fitness effects.

Vivak SoniSusanne P PfeiferJeffrey D Jensen
Published in: Genome biology and evolution (2024)
Disentangling the effects of demography and selection has remained a focal point of population genetic analysis. Knowledge about mutation and recombination is essential in this endeavour; however, despite clear evidence that both mutation and recombination rates vary across genomes, it is common practice to model both rates as fixed. In this study, we quantify how this unaccounted for rate heterogeneity may impact inference using common approaches for inferring selection (DFE-alpha, Grapes, and polyDFE) and/or demography (fastsimcoal2 and δaδi). We demonstrate that, if not properly modelled, this heterogeneity can increase uncertainty in the estimation of demographic and selective parameters and in some scenarios may result in mis-leading inference. These results highlight the importance of quantifying the fundamental evolutionary parameters of mutation and recombination prior to utilizing population genomic data to quantify the effects of genetic drift (i.e., as modulated by demographic history) and selection; or, at the least, that the effects of uncertainty in these parameters can and should be directly modelled in downstream inference.
Keyphrases
  • single cell
  • dna repair
  • dna damage
  • healthcare
  • primary care
  • genome wide
  • physical activity
  • climate change
  • copy number
  • gene expression
  • oxidative stress
  • dna methylation
  • machine learning
  • big data
  • data analysis