Individual assignment using
microsatellite DNA reveals unambiguous breed identification in the domestic dog
Animal Genetics
August
2003, vol. 34, no. 4, pp. 297-301(5)
Koskinen M.T.
Department of Ecology and Systematics, Division of
Population Biology, University of Helsinki, Helsinki, Finland
Abstract:
Modern individual clustering methods utilising
hypervariable nuclear microsatellite DNA polymorphisms are being increasingly
applied in the field of population genetics. This study explores the efficiency
of the clustering methods in identifying the breeds of origin of 250 domestic
dog (Canis
familiaris)
individuals based on 10 microsatellite loci. An allele sharing distance (DAS) matrix and the corresponding neighbour-joining
tree of individuals revealed monophyletic assemblages that corresponded
perfectly with the breeds of origin of the dogs. Individual assignment tests
using a Bayesian statistical approach, an allele frequency based method, and a DCE genetic distance based method were all extremely
powerful. Most strikingly, the Bayesian method provided 100% assignment success
of individuals into their correct breeds of origin and 100% exclusion success
of individuals from all alternate reference populations with a high level of
statistical confidence (P < 0.0001). A Bayesian Markov
Chain Monte Carlo clustering approach revealed clear distinction of individuals
into groups according to their breeds of origin, with a near-zero level of
Ôgenetic admixtureÕ among breeds. The results demonstrate that an FST of 0.18, mean expected gene diversity of 0.6
across 10 loci, and approximately 50 individuals per reference population
suffice to provide maximum individual assignment success in C. familiaris. This refutes the traditional
view that DNA based dog breed identification is not feasible at the individual
level of resolution.