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Supertree Bootstrapping Methods for Assessing Phylogenetic Variation among Genes in Genome-Scale Data Sets

机译:用于评估基因组规模数据集中各基因间系统发育差异的Superbootstrapping方法

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Nonparamtric bootstrapping methods may be useful for assessing confidence in a supertree inference. We examined the performance of two supertree bootstrapping methods on four published data sets that each include sequence data from more than 100 genes. In “input tree bootstrapping,” input gene trees are sampled with replacement and then combined in replicate supertree analyses; in “stratified bootstrapping,” trees from each gene's separate (conventional) bootstrap tree set are sampled randomly with replacement and then combined. Generally, support values from both supertree bootstrap methods were similar or slightly lower than corresponding bootstrap values from a total evidence, or supermatrix, analysis. Yet, supertree bootstrap support also exceeded supermatrix bootstrap support for a number of clades. There was little overall difference in support scores between the input tree and stratified bootstrapping methods. Results from supertree bootstrapping methods, when compared to results from corresponding supermatrix bootstrapping, may provide insights into patterns of variation among genes in genome-scale data sets.
机译:非参数自举方法可能对评估超级树推断的置信度很有用。我们在四个公开的数据集上检查了两种超树引导方法的性能,每个公开的数据集均包含来自100多个基因的序列数据。在“输入树自举”中,对输入基因树进行替换采样,然后将其合并到重复的超树分析中。在“分层自举”中,对每个基因的单独(常规)引导树集中的树进行随机采样,然后进行替换,然后合并。通常,两种超级树引导方法的支持值与总证据或超级矩阵分析的相应引导值相似或略低。但是,对于许多分支,超级树引导程序的支持也超过了超级矩阵引导程序的支持。输入树和分层引导方法之间的支持分数几乎没有总体差异。与对应的超级矩阵自举的结果相比,超树自举方法的结果可能提供有关基因组规模数据集中基因间变异模式的见解。

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