Data from: Predictions of single-nucleotide polymorphism differentiation between two populations in terms of mutual information
Cite this dataset
Dewar, Roderick C et al. (2011). Data from: Predictions of single-nucleotide polymorphism differentiation between two populations in terms of mutual information [Dataset]. Dryad. https://doi.org/10.5061/dryad.5002s
Abstract
Mutual information (I) provides a robust measure of genetic differentiation for the purposes of estimating dispersal between populations. At present, however, there is little predictive theory for I. The growing importance in population biology of analyses of single-nucleotide and other single feature polymorphisms (SFPs) is a potent reason for developing an analytic theory for I with respect to a single locus. This study represents a first step towards such a theory. We present theoretical predictions of I between two populations with respect to a single haploid biallelic locus. Dynamical and steady-state forecasts of I are derived from a Wright-Fisher model with symmetric mutation between alleles and symmetric dispersal between populations. Analytical predictions of a simple Taylor approximation to I are in good agreement with numerical simulations of I and with data on I from SFP analyses of dispersal experiments on Drosophila fly populations. The theory presented here also provides a basis for the future inclusion of selection effects and extension to multi-allelic loci.