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首页> 外文期刊>Nucleic acids research >Bayesian inference of ancestral dates on bacterial phylogenetic trees
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Bayesian inference of ancestral dates on bacterial phylogenetic trees

机译:细菌系统发育树上祖先日期的贝叶斯推断

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The sequencing and comparative analysis of a collection of bacterial genomes from a single species or lineage of interest can lead to key insights into its evolution, ecology or epidemiology. The tool of choice for such a study is often to build a phylogenetic tree, and more specifically when possible a dated phylogeny, in which the dates of all common ancestors are estimated. Here, we propose a new Bayesian methodology to construct dated phylogenies which is specifically designed for bacterial genomics. Unlike previous Bayesian methods aimed at building dated phylogenies, we consider that the phylogenetic relationships between the genomes have been previously evaluated using a standard phylogenetic method, which makes our methodology much faster and scalable. This two-step approach also allows us to directly exploit existing phylogenetic methods that detect bacterial recombination, and therefore to account for the effect of recombination in the construction of a dated phylogeny. We analysed many simulated datasets in order to benchmark the performance of our approach in a wide range of situations. Furthermore, we present applications to three different real datasets from recent bacterial genomic studies. Our methodology is implemented in a R package called BactDating which is freely available for download at https://github.com/xavierdidelot/BactDating.
机译:对感兴趣的单个物种或谱系的细菌基因组集合进行测序和比较分析可导致对其进化,生态学或流行病学的关键见解。进行此类研究的首选工具通常是构建系统发育树,更具体地讲,如果可能的话,则应建立有日期的系统发育树,在其中估计所有共同祖先的日期。在这里,我们提出了一种新的贝叶斯方法来构建过时的系统发育史,这是专门为细菌基因组学设计的。与以前的旨在建立过时的系统发育史的贝叶斯方法不同,我们认为基因组之间的系统发育关系先前已经使用标准的系统发育方法进行了评估,这使我们的方法更加快速和可扩展。这种两步方法还使我们能够直接利用现有的系统发育方法来检测细菌重组,从而在过时的系统发育过程中考虑重组的影响。我们分析了许多模拟数据集,以便在各种情况下对我们的方法的性能进行基准测试。此外,我们将应用程序应用于最近细菌基因组研究的三个不同的真实数据集。我们的方法在名为BactDating的R包中实现,可以从https://github.com/xavierdidelot/BactDating免费下载。

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