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首页> 外文期刊>Journal of computational biology: A journal of computational molecular cell biology >iGLASS: An Improvement to the GLASS Method for Estimating Species Trees from Gene Trees
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iGLASS: An Improvement to the GLASS Method for Estimating Species Trees from Gene Trees

机译:iGLASS:从基因树估计物种树的GLASS方法的改进

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摘要

Several methods have been designed to infer species trees from gene trees while taking into account gene tree/species tree discordance. Although some of these methods provide consistent species tree topology estimates under a standard model, most either do not estimate branch lengths or are computationally slow. An exception, the GLASS method of Mossel and Roch, is consistent for the species tree topology, estimates branch lengths, and is computationally fast. However, GLASS systematically overestimates divergence times, leading to biased estimates of species tree branch lengths. By assuming a multispecies coalescent model in which multiple lineages are sampled from each of two taxa at L independent loci, we derive the distribution of the waiting time until the first interspecific coalescence occurs between the two taxa, considering all loci and measuring from the divergence time. We then use the mean of this distribution to derive a correction to the GLASS estimator of pairwise divergence times. We show that our improved estimator, which we call iGLASS, consistently estimates the divergence time between a pair of taxa as the number of loci approaches infinity, and that it is an unbiased estimator of divergence times when one lineage is sampled per taxon. We also show that many commonly used clustering methods can be combined with the iGLASS estimator of pairwise divergence times to produce a consistent estimator of the species tree topology. Through simulations, we show that iGLASS can greatly reduce the bias and mean squared error in obtaining estimates of divergence times in a species tree.
机译:考虑到基因树/物种树的不一致性,已经设计了几种从基因树推断物种树的方法。尽管其中一些方法在标准模型下提供了一致的物种树拓扑估计,但大多数方法都不估计分支长度或计算速度较慢。 Mossel和Roch的GLASS方法是一个例外,它对于树形树拓扑结构是一致的,可以估计分支长度,并且计算速度很快。但是,GLASS系统性地高估了发散时间,从而导致物种树分支长度的估计偏差。通过假设一个多物种合并模型,其中从L个独立基因座的两个分类单元中的每个分类中抽取多个谱系,我们考虑了所有基因座并从发散时间开始,得出了直到两个分类单元之间第一次种间合并发生的等待时间的分布。 。然后,我们使用此分布的均值来导出对成对发散时间的GLASS估计量的校正。我们表明,我们改进的估计器(我们称为iGLASS)会随着位点数目接近无穷大而持续估计一对分类单元之间的发散时间,并且当每个分类单元采样一个谱系时,它是发散时间的无偏估计器。我们还表明,许多常用的聚类方法可以与成对发散时间的iGLASS估计器结合使用,以产生物种树拓扑的一致估计器。通过仿真,我们表明,iGLASS在获得物种树中发散时间的估计值时可以大大减少偏差和均方误差。

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