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首页> 外文期刊>Molecular biology and evolution >A Bayesian Implementation of the Multispecies Coalescent Model with Introgression for Phylogenomic Analysis
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A Bayesian Implementation of the Multispecies Coalescent Model with Introgression for Phylogenomic Analysis

机译:多层膨胀模型的贝叶斯实现,具有系统染发分析

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摘要

Recent analyses suggest that cross-species gene flow or introgression is common in nature, especially during species divergences. Genomic sequence data can be used to infer introgression events and to estimate the timing and intensity of introgression, providing an important means to advance our understanding of the role of gene flow in speciation. Here, we implement the multispecies-coalescent-with-introgression model, an extension of the multispecies-coalescent model to incorporate introgression, in our Bayesian Markov chain Monte Carlo program BPP. The multispecies-coalescent-withintrogression model accommodates deep coalescence (or incomplete lineage sorting) and introgression and provides a natural framework for inference using genomic sequence data. Computer simulation confirms the good statistical properties of the method, although hundreds or thousands of loci are typically needed to estimate introgression probabilities reliably. Reanalysis of data sets from the purple cone spruce confirms the hypothesis of homoploid hybrid speciation. We estimated the introgression probability using the genomic sequence data from six mosquito species in the Anopheles gambiae species complex, which varies considerably across the genome, likely driven by differential selection against introgressed alleles.
机译:最近的分析表明,交叉物种基因流动或血液本质上是常见的,特别是在物种分歧期间。基因组序列数据可用于推断出突出事件并估计迟发的时序和强度,提供了推进我们对物种中基因流动作用的理解的重要手段。在这里,我们实施了多级聚赛 - 循环 - 迟发模型,在我们的贝叶斯马尔可科链团蒙特卡罗计划BPP中融入了多层膨胀模型的延伸。多数 - 聚合的带来模型适用于使用基因组序列数据提供的深度聚结(或不完全分类)和突出术,并为推断提供自然框架。计算机仿真确认了该方法的良好统计特性,尽管通常需要数百或数千个基因座来可靠地估计钝化概率。从紫色锥形云杉的数据集重新分析证实了同种卟啉杂化物种的假设。我们估计使用来自甘露甘露物种复合物中的六个蚊虫种类的基因组序列数据估计突出概率,这在整个基因组上各种各样地变化,可能通过差异选择对抗狭窄的等位基因来驱动。

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