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Coalescent-based species tree inference from gene tree topologies under incomplete lineage sorting by maximum likelihood

机译:根据最大似然从不完整谱系排序中基于基因树拓扑的基于联盟的物种树推断

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摘要

Incomplete lineage sorting can cause incongruence between the phylogenetic history of genes (the gene tree) and that of the species (the species tree), which can complicate the inference of phylogenies. In this article, I present a new coalescent-based algorithm for species tree inference with maximum likelihood. I first describe an improved method for computing the probability of a gene tree topology given a species tree, which is much faster than an existing algorithm by Degnan and Salter (2005). Based on this method, I develop a practical algorithm that takes a set of gene tree topologies and infers species trees with maximum likelihood. This algorithm searches for the best species tree by starting from initial species trees and performing heuristic search to obtain better trees with higher likelihood. This algorithm, called STELLS (which stands for Species Tree InfErence with Likelihood for Lineage Sorting), has been implemented in a program that is downloadable from the author's web page. The simulation results show that the STELLS algorithm is more accurate than an existing maximum likelihood method for many datasets, especially when there is noise in gene trees. I also show that the STELLS algorithm is efficient and can be applied to real biological datasets.
机译:不完整的谱系排序会导致基因(基因树)和物种(物种树)的系统发生历史不一致,这可能会使系统发生的推理复杂化。在本文中,我提出了一种基于合并的新算法,用于最大可能性的物种树推断。首先,我描述了一种在给定物种树的情况下计算基因树拓扑概率的改进方法,该方法比Degnan和Salter(2005)的现有算法要快得多。基于此方法,我开发了一种实用的算法,该算法采用一组基因树拓扑,并以最大可能性推断物种树。该算法通过从初始物种树开始并执行启发式搜索来以更高的可能性获得更好的树来搜索最佳树。这种算法称为STELLS(代表具有树种可能性的种树不育),已在可从作者网页上下载的程序中实现。仿真结果表明,对于许多数据集,STELLS算法比现有的最大似然法更为准确,尤其是在基因树中存在噪声的情况下。我还证明了STELLS算法是有效的,可以应用于真实的生物学数据集。

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