Directional genetic differentiation and relative migration
Journal article, 2016
Understanding the population structure and patterns of gene flow within species
is of fundamental importance to the study of evolution. In the fields of
population and evolutionary genetics, measures of genetic differentiation are
commonly used to gather this information. One potential caveat is that these
measures assume gene flow to be symmetric. However, asymmetric gene flow is
common in nature, especially in systems driven by physical processes such as
wind or water currents. As information about levels of asymmetric gene flow
among populations is essential for the correct interpretation of the distribution
of contemporary genetic diversity within species, this should not be overlooked.
To obtain information on asymmetric migration patterns from genetic data,
complex models based on maximum-likelihood or Bayesian approaches generally
need to be employed, often at great computational cost. Here, a new simpler
and more efficient approach for understanding gene flow patterns is
presented. This approach allows the estimation of directional components of
genetic divergence between pairs of populations at low computational effort,
using any of the classical or modern measures of genetic differentiation. These
directional measures of genetic differentiation can further be used to calculate
directional relative migration and to detect asymmetries in gene flow patterns.
This can be done in a user-friendly web application called divMigrate-online
introduced in this study. Using simulated data sets with known gene flow
regimes, we demonstrate that the method is capable of resolving complex
migration patterns under a range of study designs.
Allele frequency data
directional gene flow
dispersal
asymmetric migration