Rec-I-DCM3:用于重建大型系统发育树的快速算法技术。

Usman W Roshan, Bernard M Moret, Tandy Warnow, Tiffani L Williams
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引用次数: 87

摘要

系统发育树通常是基于最大简约性(MP)和最大似然性(ML)等硬优化问题来重建的。用于生成系统发育树的传统MP启发式方法在合理的时间内对小数据集(最多几千个序列)产生良好的解决方案,而ML启发式方法仅限于较小的数据集(最多几百个序列)。然而,由于MP(可能还有ML)是np困难的,因此当应用于大型数据集时,这种方法无法扩展。本文提出了递归-迭代- dcm3 (Rec-I-DCM3)新技术,它属于我们的磁盘覆盖方法(dcm)家族。我们在10个大型生物数据集上测试了这种新技术,范围从1,322到13,921个序列,与现有方法相比,获得了显着的加速和准确性的显着提高(优于99.99%)。因此,对于比以前可能的数据集至少大十倍的数据集,可以获得高质量的重建。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rec-I-DCM3: a fast algorithmic technique for reconstructing large phylogenetic trees.

Phylogenetic trees are commonly reconstructed based on hard optimization problems such as maximum parsimony (MP) and maximum likelihood (ML). Conventional MP heuristics for producing phylogenetic trees produce good solutions within reasonable time on small datasets (up to a few thousand sequences), while ML heuristics are limited to smaller datasets (up to a few hundred sequences). However, since MP (and presumably ML) is NP-hard, such approaches do not scale when applied to large datasets. In this paper, we present a new technique called Recursive-Iterative-DCM3 (Rec-I-DCM3), which belongs to our family of Disk-Covering Methods (DCMs). We tested this new technique on ten large biological datasets ranging from 1,322 to 13,921 sequences and obtained dramatic speedups as well as significant improvements in accuracy (better than 99.99%) in comparison to existing approaches. Thus, high-quality reconstructions can be obtained for datasets at least ten times larger than was previously possible.

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