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- Title
A Comparison of Rarefaction and Bayesian Methods for Predicting the Allelic Richness of Future Samples on the Basis of Currently Available Samples.
- Authors
Belkhir, Khaud; Dawson, Kevin J.; Bonhomme, François
- Abstract
Rarefaction methods have been introduced into population genetics (from ecology) for predicting and comparing the allelic richness of future samples (or sometimes populations) on the basis of currently available samples, possibly of different sizes. Here, we focus our attention on one such problem: Predicting which population is most likely to yield the future sample having the highest allelic richness. (This problem can arise when we want to construct a core collection from a larger germplasm collection.) We use extensive simulations to compare the performance of the Monte Carlo rarefaction (repeated random subsampling) method with a simple Bayesian approach we have developed--which is based on the Ewens sampling distribution. We found that neither this Bayesian method nor the (Monte Carlo) rarefaction method performed uniformly better than the other. We also examine briefly some of the other motivations offered for these methods and try to make sense of them from a Bayesian point of view.
- Subjects
PLANT population genetics; ALLELES; MONTE Carlo method; BAYESIAN analysis; PLANT germplasm; PLANT genetics
- Publication
Journal of Heredity, 2006, Vol 97, Issue 5, p483
- ISSN
0022-1503
- Publication type
Academic Journal
- DOI
10.1093/jhered/esl030