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首页> 外文期刊>Molecular ecology >Distinguishing between population bottleneck and population subdivision by a Bayesian model choice procedure
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Distinguishing between population bottleneck and population subdivision by a Bayesian model choice procedure

机译:用贝叶斯模型选择程序区分人口瓶颈与人口细分。

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摘要

Although most natural populations are genetically subdivided, they are often analysed as if they were panmictic units. In particular, signals of past demographic size changes are often inferred from genetic data by assuming that the analysed sample is drawn from a population without any internal subdivision. However, it has been shown that a bottleneck signal can result from the presence of some recent immigrants in a population. It thus appears important to contrast these two alternative scenarios in a model choice procedure to prevent wrong conclusions to be made. We use here an Approximate Bayesian Computation (ABC) approach to infer whether observed patterns of genetic diversity in a given sample are more compatible with it being drawn from a panmictic population having gone through some size change, or from one or several demes belonging to a recent finite island model. Simulations show that we can correctly identify samples drawn from a subdivided population in up to 95% of the cases for a wide range of parameters. We apply our model choice procedure to the case of the chimpanzee (Pan troglodytes) and find conclusive evidence that Western and Eastern chimpanzee samples are drawn from a spatially subdivided population.
机译:尽管大多数自​​然种群在基因上已细分,但经常将它们视为恐慌单元进行分析。特别是,通常通过假设被分析的样本是从没有任何内部细分的种群中提取的,从遗传数据中推断出过去人口统计学特征变化的信号。但是,已经显示出瓶颈信号可能是由于人口中一些新移民的存在而引起的。因此,在模型选择过程中将这两种替代方案进行对比显得很重要,以防止做出错误的结论。在这里,我们使用近似贝叶斯计算(ABC)方法来推断给定样本中观察到的遗传多样性模式是否与从经历了某种大小变化的恐慌种群或一个或多个属于一个种群的品系中获得的遗传模式更​​兼容。最近的有限岛模型。仿真表明,在多达95%的情况下,对于各种参数,我们都可以正确识别从细分人群中抽取的样本。我们将模型选择程序应用于黑猩猩(Pan troglodytes)的情况,并找到确凿的证据表明西方和东部黑猩猩的样本均来自于按空间细分的种群。

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