请注意差距:用于快速、准确地重建祖先序列和多序列比对的 Indel-Aware Parsimony,包括长 Indels。

IF 11 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular biology and evolution Pub Date : 2024-07-03 DOI:10.1093/molbev/msae109
Clara Iglhaut, Jūlija Pečerska, Manuel Gil, Maria Anisimova
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引用次数: 0

摘要

尽管插入和缺失(indel)事件具有重要的生物学意义,但在系统发育推断过程中却经常被忽视或处理不当。在多序列比对中,嵌合体被表示为间隙,在估算时没有考虑插入和缺失的不同进化历史。因此,在随后的推断步骤(如祖先序列重建和系统发生树搜索)中,通常会排除吲哚。在这里,我们介绍了一种新的方法--indel-aware parsimony(indelMaP),通过将插入和缺失视为单独的进化事件并考虑长indels,在解析标准下处理间隙。通过确定进化事件在树上的精确位置,我们可以分离重叠的吲哚事件,并使用仿射间隙惩罚进行长吲哚建模。我们的吲哚感知方法利用了吲哚的系统发育信号,将其纳入所有推断阶段。在模拟数据上进行的验证和与最先进推断工具的比较表明,indelMaP 最适用于具有近缘和中缘序列的密集采样数据集,其比对质量可与概率方法媲美,并能准确推断祖先序列,包括吲哚模式。由于速度惊人,我们的方法非常适合流行病学数据集,无需进行下采样,并能利用密集分类采样提供的额外信息。此外,indelMaP 还能让我们对具有重要生物学意义的序列的吲哚模式有新的认识,并通过将间隙视为关键的进化信号而不仅仅是人工制品,来推进我们对遗传变异性的理解。
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Please Mind the Gap: Indel-Aware Parsimony for Fast and Accurate Ancestral Sequence Reconstruction and Multiple Sequence Alignment Including Long Indels.

Despite having important biological implications, insertion, and deletion (indel) events are often disregarded or mishandled during phylogenetic inference. In multiple sequence alignment, indels are represented as gaps and are estimated without considering the distinct evolutionary history of insertions and deletions. Consequently, indels are usually excluded from subsequent inference steps, such as ancestral sequence reconstruction and phylogenetic tree search. Here, we introduce indel-aware parsimony (indelMaP), a novel way to treat gaps under the parsimony criterion by considering insertions and deletions as separate evolutionary events and accounting for long indels. By identifying the precise location of an evolutionary event on the tree, we can separate overlapping indel events and use affine gap penalties for long indel modeling. Our indel-aware approach harnesses the phylogenetic signal from indels, including them into all inference stages. Validation and comparison to state-of-the-art inference tools on simulated data show that indelMaP is most suitable for densely sampled datasets with closely to moderately related sequences, where it can reach alignment quality comparable to probabilistic methods and accurately infer ancestral sequences, including indel patterns. Due to its remarkable speed, our method is well suited for epidemiological datasets, eliminating the need for downsampling and enabling the exploitation of the additional information provided by dense taxonomic sampling. Moreover, indelMaP offers new insights into the indel patterns of biologically significant sequences and advances our understanding of genetic variability by considering gaps as crucial evolutionary signals rather than mere artefacts.

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来源期刊
Molecular biology and evolution
Molecular biology and evolution 生物-进化生物学
CiteScore
19.70
自引率
3.70%
发文量
257
审稿时长
1 months
期刊介绍: Molecular Biology and Evolution Journal Overview: Publishes research at the interface of molecular (including genomics) and evolutionary biology Considers manuscripts containing patterns, processes, and predictions at all levels of organization: population, taxonomic, functional, and phenotypic Interested in fundamental discoveries, new and improved methods, resources, technologies, and theories advancing evolutionary research Publishes balanced reviews of recent developments in genome evolution and forward-looking perspectives suggesting future directions in molecular evolution applications.
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