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Heuristics for the Gene-Duplication Problem: A THETA(n) Speed-Up for the Local Search

机译:对基因重复问题的启发式问题:当地搜索的速度(n)加速

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The gene-duplication problem is to infer a species supertree from a collection of gene trees that are confounded by complex histories of gene duplications. This problem is NP-hard and thus requires efficient and effective heuristics. Existing heuristics perform a stepwise search of the tree space, where each step is guided by an exact solution to an instance of a local search problem. We show how this local search problem can be solved efficiently by reusing previously computed information. This improves the running time of the current solution by a factor of n, where n is the number of species in the resulting supertree solution, and makes the gene-duplication problem more tractable for large-scale phylogenetic analyses. We verify the exceptional performance of our solution in a comparison study using sets of large randomly generated gene trees. Furthermore, we demonstrate the utility of our solution by incorporating large genomic data sets from GenBank into a supertree analysis of plants.
机译:基因重复问题是从复杂的基因重复历史上混淆的基因树集中推断物种超级血统。这个问题是NP - 硬,因此需要有效和有效的启发式。现有的启发式逐步搜索树形空间,其中每个步骤由本地搜索问题的实例引导。我们展示了如何通过重用先前计算的信息有效地解决该本地搜索问题。这改善了当前溶液的运行时间,其中N是所得超级溶液中的物种数量,并使基因 - 重复问题更具易于用于大规模的系统发育分析。我们在使用大型随机生成的基因树上验证了我们解决方案的特殊表现。此外,我们通过将来自Genbank的大型基因组数据集纳入植物的超节分析来证明我们的解决方案的效用。

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