Comparative evaluation of a new effective population size estimator based on approximate Bayesian computation

被引:104
|
作者
Tallmon, DA
Luikart, G
Beaumont, MA
机构
[1] Univ Grenoble 1, CNRS, LECA, UMR 5553,Lab Ecol Alpine, F-38041 Grenoble 09, France
[2] Univ Reading, Sch Anim & Microbial Sci, Reading RG6 6AJ, Berks, England
关键词
D O I
10.1534/genetics.103.026146
中图分类号
Q3 [遗传学];
学科分类号
071007 ; 090102 ;
摘要
We describe and evaluate a new estimator of the effective population size (N-e), a critical parameter in evolutionary and conservation biology. This new "SummStat" N-e. estimator is based upon the use of summary statistics in an approximate Bayesian computation framework to infer N-e. Simulations of a Wright-Fisher population with known N-e show that the SummStat estimator is useful across a realistic range of individuals and loci sampled, generations between samples, and N-e values. We also address the paucity of information about the relative performance of N-e estimators by comparing the SUMMStat estimator to two recently developed likelihood-based estimators and a traditional moment-based estimator. The SummStat estimator is the least biased of the four estimators compared. In 32 of 36 parameter combinations investigated rising initial allele frequencies drawn from a Dirichlet distribution, it has the lowest bias. The relative mean square error (RMSE) of the SummStat estimator was generally intermediate to the others. All of the estimators had RMSE > 1 when small samples (n = 20, five loci) were collected a generation apart. In contrast, when samples were separated by three or more generations and Ne less than or equal to 50, the SummStat and likelihood-based estimators all had greatly reduced RMSE. Under the conditions simulated, SummStat confidence intervals were more conservative than the likelihood-based estimators and more likely to include true N-e. The greatest strength of the SummStat estimator is its flexible structure. This flexibility allows it to incorporate any, potentially informative summary statistic from Population genetic data.
引用
收藏
页码:977 / 988
页数:12
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