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首页> 外文期刊>Journal of Theoretical Biology >Hypothesis tests for phylogenetic quartets, with applications to coalescent-based species tree inference
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Hypothesis tests for phylogenetic quartets, with applications to coalescent-based species tree inference

机译:系统发育四重态的假设检验及其在基于聚结的物种树推断中的应用

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摘要

Numerous statistical methods have been developed to estimate evolutionary relationships among a collection of present-day species, typically represented by a phylogenetic tree, using the information contained in the DNA sequences sampled from representatives of each species. In the current era of high throughput genome sequencing, the models underlying such methods have become increasingly sophisticated, and the resulting computations are often prohibitive. Here we consider the problem of rigorously testing the phylogenetic relationships among collections of four species under the multi species coalescent model that accommodates both multi-locus datasets and SNP data. Our test employs a new statistic - the summed absolute differences between certain columns in flattened phylogenetic matrices - as well as a previously used statistic that measures the distance of a flattened matrix from the space of rank-10 matrices. We derive distributional results for both statistics and study the performance of the corresponding hypothesis tests using both simulated and empirical data. We discuss how these tests may be used to improve inference of phylogenetic relationships for larger samples of species under the multispecies coalescent model, a problem that has until recently been computationally intractable. (C) 2016 Elsevier Ltd. All rights reserved.
机译:已经开发出许多统计方法来估计现代物种的集合之间的进化关系,这些物种通常使用系统发育树来表示,利用从每种物种的代表采样的DNA序列中包含的信息。在当前高通量基因组测序的时代,此类方法所基于的模型变得越来越复杂,并且由此产生的计算通常令人望而却步。在这里,我们考虑在容纳多基因座数据集和SNP数据的多物种合并模型下严格测试四个物种的集合之间的系统发生关系的问题。我们的测试采用了新的统计量-展平的系统发育矩阵中某些列之间的绝对差之和-以及以前使用的统计量,用于测量展平的矩阵与等级10矩阵空间的距离。我们得出统计的分布结果,并使用模拟和经验数据研究相应的假设检验的性能。我们讨论了如何在多物种合并模型下使用这些测试来改善较大物种的系统发育关系的推断,这一问题直到最近才在计算上难以解决。 (C)2016 Elsevier Ltd.保留所有权利。

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