Instituto Gulbenkian de Ciência, Rua da Quinta Grande, Oeiras, Portugal.
Heredity (Edinb). 2012 May;108(5):521-30. doi: 10.1038/hdy.2011.116. Epub 2011 Dec 7.
Genetic data have been widely used to reconstruct the demographic history of populations, including the estimation of migration rates, divergence times and relative admixture contribution from different populations. Recently, increasing interest has been given to the ability of genetic data to distinguish alternative models. One of the issues that has plagued this kind of inference is that ancestral shared polymorphism is often difficult to separate from admixture or gene flow. Here, we applied an approximate Bayesian computation (ABC) approach to select the model that best fits microsatellite data among alternative splitting and admixture models. We performed a simulation study and showed that with reasonably large data sets (20 loci) it is possible to identify with a high level of accuracy the model that generated the data. This suggests that it is possible to distinguish genetic patterns due to past admixture events from those due to shared polymorphism (population split without admixture). We then apply this approach to microsatellite data from an endangered and endemic Iberian freshwater fish species, in which a clustering analysis suggested that one of the populations could be admixed. In contrast, our results suggest that the observed genetic patterns are better explained by a population split model without admixture.
遗传数据已被广泛用于重建人口的人口历史,包括估计迁移率、分歧时间和来自不同人口的相对混合贡献。最近,人们越来越关注遗传数据区分替代模型的能力。困扰这种推断的一个问题是,祖先共享多态性往往难以与混合或基因流区分开来。在这里,我们应用了一种近似贝叶斯计算(ABC)方法来选择最适合替代分裂和混合模型的微卫星数据的模型。我们进行了一项模拟研究,结果表明,在具有相当大数据集(20 个位点)的情况下,有可能以较高的准确性识别产生数据的模型。这表明,有可能区分由于过去的混合事件引起的遗传模式和由于共享多态性(没有混合的种群分裂)引起的遗传模式。然后,我们将这种方法应用于一种濒危和特有伊比利亚淡水鱼类的微卫星数据,聚类分析表明其中一个种群可能是混合的。相比之下,我们的结果表明,观察到的遗传模式通过没有混合的种群分裂模型更好地解释。