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Length Distribution of Ancestral Tracks under a General Admixture Model and Its Applications in Population History Inference

机译:一般混合模型下祖传轨道的长度分布及其在人口历史推论中的应用

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The length of ancestral tracks decays with the passing of generations which can be used to infer population admixture histories. Previous studies have shown the power in recovering the histories of admixed populations via the length distributions of ancestral tracks even under simple models. We believe that the deduction of length distributions under a general model will greatly elevate the power. Here we first deduced the length distributions under a general model and proposed general principles in parameter estimation and model selection with the deduced length distributions. Next, we focused on studying the length distributions and its applications under three typical special cases. Extensive simulations showed that the length distributions of ancestral tracks were well predicted by our theoretical framework. We further developed a new method, AdmixInfer , based on the length distributions and good performance was observed when it was applied to infer population histories under the three typical models. Notably, our method was insensitive to demographic history, sample size and threshold to discard short tracks. Finally, good performance was also observed when applied to some real datasets of African Americans, Mexicans and South Asian populations from the HapMap project and the Human Genome Diversity Project.
机译:祖传轨道的长度随着世代的传递衰减,可用于推断种群混合物历史。以前的研究表明,即使在简单的模型下,也可以通过祖传轨道的长度分布恢复混合群体的历史。我们认为,在一般模型下的长度分配推导将大大提升权力。在这里,我们首先在一般模型下推导了长度分布,并在参数估计和模型选择中提出了一般原理,与推导的长度分布。接下来,我们专注于在三种典型特殊情况下研究长度分布及其应用。广泛的模拟表明,我们的理论框架预测了祖传轨道的长度分布。我们进一步开发了一种新的方法,基于长度分布和在三个典型模型下施用人口历史时观察到的长度分布和良好的性能。值得注意的是,我们的方法对人口统计历史,样本大小和阈值不敏感以丢弃短轨道。最后,在从HapMap项目和人类基因多样化项目应用于非洲裔美国人,墨西哥人和南亚人群的一些真实数据集时,还观察到了良好的表现。

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