microGWAS:一个执行大规模细菌全基因组关联研究的计算管道。

IF 4 2区 生物学 Q1 GENETICS & HEREDITY
Judit Burgaya, Bamu F Damaris, Jenny Fiebig, Marco Galardini
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引用次数: 0

摘要

鉴定与细菌表型相关的遗传变异,如毒力、宿主偏好和抗菌素耐药性,对于更好地理解这些性状的机制具有很大的潜力。大量细菌基因组的可用性使得全基因组关联研究(GWAS)成为实现这一目的的常用方法。需要使用多种软件工具进行数据预处理和后处理,这限制了经验丰富的生物信息学家对这些方法的应用。为了解决这个问题,我们开发了一个管道,以多种表型为目标,从一组组装和注释中执行细菌GWAS。这些关联使用五组遗传变异来运行:单位,基因存在/缺失,罕见变异(即基因负担测试),基因簇特异性k-mers和所有单位联合。所有通过关联阈值的变异都被进一步注释,以确定过度代表的生物过程和途径。通过生成系统发育树并预测抗菌素耐药性和毒力相关基因的存在,可以进一步增强结果。我们在先前报道的大肠杆菌毒力数据集上测试了microGWAS管道,成功地识别了因果变异,并进一步解释了相关结果。microGWAS管道集成了最先进的工具来执行细菌GWAS到一个单一的,用户友好的和可重复的管道,允许这些分析的民主化。该管道及其文档可以在https://github.com/microbial-pangenomes-lab/microGWAS上访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
microGWAS: a computational pipeline to perform large-scale bacterial genome-wide association studies.

Identifying genetic variants associated with bacterial phenotypes, such as virulence, host preference and antimicrobial resistance, has great potential for a better understanding of the mechanisms involved in these traits. The availability of large collections of bacterial genomes has made genome-wide association studies (GWAS) a common approach for this purpose. The need to employ multiple software tools for data pre- and postprocessing limits the application of these methods by experienced bioinformaticians. To address this issue, we have developed a pipeline to perform bacterial GWAS from a set of assemblies and annotations, with multiple phenotypes as targets. The associations are run using five sets of genetic variants: unitigs, gene presence/absence, rare variants (i.e. gene burden test), gene-cluster-specific k-mers and all unitigs jointly. All variants passing the association threshold are further annotated to identify overrepresented biological processes and pathways. The results can be further augmented by generating a phylogenetic tree and predicting the presence of antimicrobial resistance and virulence-associated genes. We tested the microGWAS pipeline on a previously reported dataset on Escherichia coli virulence, successfully identifying the causal variants and providing further interpretation of the association results. The microGWAS pipeline integrates state-of-the-art tools to perform bacterial GWAS into a single, user-friendly and reproducible pipeline, allowing for the democratization of these analyses. The pipeline, together with its documentation, can be accessed at https://github.com/microbial-pangenomes-lab/microGWAS.

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来源期刊
Microbial Genomics
Microbial Genomics Medicine-Epidemiology
CiteScore
6.60
自引率
2.60%
发文量
153
审稿时长
12 weeks
期刊介绍: Microbial Genomics (MGen) is a fully open access, mandatory open data and peer-reviewed journal publishing high-profile original research on archaea, bacteria, microbial eukaryotes and viruses.
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