Genetic assignment methods for the direct, real-time estimation of migration rate: a simulation-based exploration of accuracy and power


Autoria(s): Paetkau, David; Slade, Robert; Burden, Michael; Estoup, Arnaud
Data(s)

01/01/2004

Resumo

Genetic assignment methods use genotype likelihoods to draw inference about where individuals were or were not born, potentially allowing direct, real-time estimates of dispersal. We used simulated data sets to test the power and accuracy of Monte Carlo resampling methods in generating statistical thresholds for identifying F-0 immigrants in populations with ongoing gene flow, and hence for providing direct, real-time estimates of migration rates. The identification of accurate critical values required that resampling methods preserved the linkage disequilibrium deriving from recent generations of immigrants and reflected the sampling variance present in the data set being analysed. A novel Monte Carlo resampling method taking into account these aspects was proposed and its efficiency was evaluated. Power and error were relatively insensitive to the frequency assumed for missing alleles. Power to identify F-0 immigrants was improved by using large sample size (up to about 50 individuals) and by sampling all populations from which migrants may have originated. A combination of plotting genotype likelihoods and calculating mean genotype likelihood ratios (D-LR) appeared to be an effective way to predict whether F-0 immigrants could be identified for a particular pair of populations using a given set of markers.

Identificador

http://espace.library.uq.edu.au/view/UQ:68716

Idioma(s)

eng

Publicador

Blackwell Publishing Ltd

Palavras-Chave #Biochemistry & Molecular Biology #Ecology #Evolutionary Biology #Admixture Linkage Disequilibrium #Genetic Assignment #Immigrants #Migration Rate #Power #Statistical Significance #Multilocus Genotypes #Population-structure #Brown Bears #Microsatellite #Distance #Individuals #Statistics #Inference #Dispersal #Flow #C1 #270203 Population and Ecological Genetics #780105 Biological sciences
Tipo

Journal Article