Moon Jucheol, Eulenstein Oliver
1 Department of Computer Science, Iowa State University Ames, Iowa 50010, USA.
J Bioinform Comput Biol. 2017 Jun;15(3):1740002. doi: 10.1142/S0219720017400029. Epub 2017 Apr 20.
Supertree problems are a standard tool for synthesizing large-scale species trees from a given collection of gene trees under some problem-specific objective. Unfortunately, these problems are typically NP-hard, and often remain so when their instances are restricted to rooted gene trees sampled from the same species. While a class of restricted supertree problems has been effectively addressed by the parameterized strict consensus approach, in practice, most gene trees are unrooted and sampled from different species. Here, we overcome this stringent limitation by describing efficient algorithms that are adopting the strict consensus approach to also handle unrestricted supertree problems. Finally, we demonstrate the performance of our algorithms in a comparative study with classic supertree heuristics using simulated and empirical data sets.
超树问题是一种标准工具,用于在某些特定问题目标下,从给定的基因树集合中合成大规模物种树。不幸的是,这些问题通常是NP难问题,并且当它们的实例仅限于从同一物种中采样的有根基因树时,往往仍然如此。虽然一类受限的超树问题已通过参数化严格共识方法得到有效解决,但在实际中,大多数基因树是无根的且来自不同物种。在此,我们通过描述采用严格共识方法来处理无限制超树问题的高效算法,克服了这一严格限制。最后,我们在使用模拟和实证数据集与经典超树启发式方法的比较研究中,展示了我们算法的性能。