Auto-phylo v2 and auto-phylo-pipeliner: building advanced, flexible, and reusable pipelines for phylogenetic inferences, estimation of variability levels and identification of positively selected amino acid sites.

IF 1.5 Q3 MATHEMATICAL & COMPUTATIONAL BIOLOGY Journal of Integrative Bioinformatics Pub Date : 2024-03-27 eCollection Date: 2024-06-01 DOI:10.1515/jib-2023-0046
Hugo López-Fernández, Miguel Pinto, Cristina P Vieira, Pedro Duque, Miguel Reboiro-Jato, Jorge Vieira
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引用次数: 0

Abstract

The vast amount of genome sequence data that is available, and that is predicted to drastically increase in the near future, can only be efficiently dealt with by building automated pipelines. Indeed, the Earth Biogenome Project will produce high-quality reference genome sequences for all 1.8 million named living eukaryote species, providing unprecedented insight into the evolution of genes and gene families, and thus on biological issues. Here, new modules for gene annotation, further BLAST search algorithms, further multiple sequence alignment methods, the adding of reference sequences, further tree rooting methods, the estimation of rates of synonymous and nonsynonymous substitutions, and the identification of positively selected amino acid sites, have been added to auto-phylo (version 2), a recently developed software to address biological problems using phylogenetic inferences. Additionally, we present auto-phylo-pipeliner, a graphical user interface application that further facilitates the creation and running of auto-phylo pipelines. Inferences on S-RNase specificity, are critical for both cross-based breeding and for the establishment of pollination requirements. Therefore, as a test case, we develop an auto-phylo pipeline to identify amino acid sites under positive selection, that are, in principle, those determining S-RNase specificity, starting from both non-annotated Prunus genomes and sequences available in public databases.

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Auto-phylo v2 和 aut-phylo-pipeliner:构建先进、灵活和可重复使用的管道,用于系统发育推断、变异性水平估计和正选氨基酸位点识别。
现有的基因组序列数据量巨大,而且预计在不久的将来还会急剧增加,只有建立自动化管道才能有效处理这些数据。事实上,地球生物基因组计划(Earth Biogenome Project)将为所有 180 万个已命名的真核生物物种提供高质量的参考基因组序列,为基因和基因家族的进化,进而为生物问题提供前所未有的洞察力。auto-phylo(第 2 版)是最近开发的一款利用系统发育推论解决生物学问题的软件,在这里,我们为它添加了新的模块,包括基因注释、进一步的 BLAST 搜索算法、进一步的多序列比对方法、参考序列的添加、进一步的树根方法、同义和非同义替换率的估计以及正选氨基酸位点的鉴定。此外,我们还介绍了auto-phylo-pipeliner,这是一个图形用户界面应用程序,可进一步方便auto-phylo管道的创建和运行。S-RNase特异性推断对于杂交育种和确定授粉要求都至关重要。因此,作为一个测试案例,我们从未注明的梅花基因组和公共数据库中的序列入手,开发了一个自动植物基因组分析管道,以确定正选择的氨基酸位点,这些位点原则上就是决定 S-RNase 特异性的氨基酸位点。
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来源期刊
Journal of Integrative Bioinformatics
Journal of Integrative Bioinformatics Medicine-Medicine (all)
CiteScore
3.10
自引率
5.30%
发文量
27
审稿时长
12 weeks
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