wQFM-DISCO: DISCO-enabled wQFM improves phylogenomic analyses despite the presence of paralogs.

IF 2.4 Q2 MATHEMATICAL & COMPUTATIONAL BIOLOGY Bioinformatics advances Pub Date : 2024-11-27 eCollection Date: 2024-01-01 DOI:10.1093/bioadv/vbae189
Sheikh Azizul Hakim, Md Rownok Zahan Ratul, Md Shamsuzzoha Bayzid
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Abstract

Motivation: Gene trees often differ from the species trees that contain them due to various factors, including incomplete lineage sorting (ILS) and gene duplication and loss (GDL). Several highly accurate species tree estimation methods have been introduced to explicitly address ILS, including ASTRAL, a widely used statistically consistent method, and wQFM, a quartet amalgamation approach experimentally shown to be more accurate than ASTRAL. Two recent advancements, ASTRAL-Pro and DISCO, have emerged in phylogenomics to consider GDL. ASTRAL-Pro introduces a refined quartet similarity measure, accounting for orthology and paralogy. On the other hand, DISCO offers a general strategy to decompose multi-copy gene trees into a collection of single-copy trees, allowing the utilization of methods previously designed for species tree inference in the context of single-copy gene trees.

Results: In this study, we first introduce some variants of DISCO to examine its underlying hypotheses and present analytical results on the statistical guarantees of DISCO. In particular, we introduce DISCO-R, a variant of DISCO with a refined and improved pruning strategy that provides more accurate and robust results. We then demonstrate with extensive evaluation studies on a collection of simulated and real data sets that wQFM paired with DISCO variants consistently matches or outperforms ASTRAL-Pro and other competing methods.

Availability and implementation: DISCO-R and other variants are freely available at https://github.com/skhakim/DISCO-variants.

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wQFM- disco: DISCO-enabled wQFM改进了系统发育分析,尽管存在类似物。
动机:由于各种因素,包括不完整的谱系分类(ILS)和基因复制和丢失(GDL),基因树往往与包含它们的物种树不同。一些高精度的物种树估计方法已经被引入来明确地解决ILS问题,包括ASTRAL,一种广泛使用的统计一致性方法,以及wQFM,一种实验证明比ASTRAL更准确的四重奏合并方法。最近在系统基因组学中出现了考虑GDL的两项进展,ASTRAL-Pro和DISCO。ASTRAL-Pro引入了一个精致的四重奏相似度测量,考虑到正畸和谬误。另一方面,DISCO提供了一种将多拷贝基因树分解为单拷贝树集合的通用策略,允许在单拷贝基因树的背景下使用先前设计的物种树推断方法。结果:在本研究中,我们首先引入了DISCO的一些变体来检验其潜在的假设,并给出了DISCO的统计保证的分析结果。特别地,我们介绍DISCO- r, DISCO的一个变种,具有改进和改进的修剪策略,提供更准确和稳健的结果。然后,我们通过对模拟和真实数据集的广泛评估研究证明,wQFM与DISCO变体配对始终匹配或优于ASTRAL-Pro和其他竞争方法。可用性和实现:DISCO-R和其他变体可以在https://github.com/skhakim/DISCO-variants上免费获得。
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