A new fast heuristic for computing the breakpoint phylogeny and experimental phylogenetic analyses of real and synthetic data.

M E Cosner, R K Jansen, B M Moret, L A Raubeson, L S Wang, T Warnow, S Wyman
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Abstract

The breakpoint phylogeny is an optimization problem proposed by Blanchette et al. for reconstructing evolutionary trees from gene order data. These same authors also developed and implemented BPAnalysis [3], a heuristic method (based upon solving many instances of the travelling salesman problem) for estimating the breakpoint phylogeny. We present a new heuristic for this purpose; although not polynomial-time, our heuristic is much faster in practice than BPAnalysis. We present and discuss the results of experimentation on synthetic datasets and on the flowering plant family Campanulaceae with three methods: our new method, BPAnalysis, and the neighbor-joining method [25] using several distance estimation techniques. Our preliminary results indicate that, on datasets with slow evolutionary rates and large numbers of genes in comparison with the number of taxa (genomes), all methods recover quite accurate reconstructions of the true evolutionary history (although BPAnalysis is too slow to be practical), but that on datasets where the rate of evolution is high relative to the number of genes, the accuracy of all three methods is poor.

一个新的快速启发式计算断点系统发育和实验系统发育分析的真实和合成数据。
断点系统发育是Blanchette等人提出的从基因序列数据重构进化树的优化问题。这些作者还开发并实现了BPAnalysis[3],这是一种用于估计断点系统发育的启发式方法(基于解决旅行推销员问题的许多实例)。为此,我们提出了一种新的启发式;虽然不是多项式时间,但我们的启发式在实践中比bp分析法快得多。我们介绍并讨论了三种方法在合成数据集和开花植物家族Campanulaceae上的实验结果:我们的新方法BPAnalysis和使用几种距离估计技术的邻居连接方法[25]。我们的初步结果表明,与分类群(基因组)数量相比,在进化速度较慢且基因数量较多的数据集上,所有方法都能相当准确地重建真实的进化史(尽管bp分析法速度太慢而不实用),但在进化速度相对于基因数量较高的数据集上,所有三种方法的准确性都很差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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