Hubei Key Laboratory of Agricultural Bioinformatics, College of Informatics, Huazhong Agricultural University, Wuhan, China.
Microbiol Spectr. 2024 Apr 2;12(4):e0234223. doi: 10.1128/spectrum.02342-23. Epub 2024 Feb 23.
Seed metabolites are the combination of essential compounds required by an organism across various potential environmental conditions. The seed metabolites screening framework based on the network topology approach can capture important biological information of species. This study aims to identify comprehensively the relationship between seed metabolites and pathogenic bacteria. A large-scale data set was compiled, describing the seed metabolite sets and metabolite sets of 124,192 pathogenic strains from 34 genera, by constructing genome-scale metabolic models. The enrichment analysis method was used to screen the specific seed metabolites of each species/genus of pathogenic bacteria. The metabolites of pathogenic microorganisms database (MPMdb) (http://qyzhanglab.hzau.edu.cn/MPMdb/) was established for browsing, searching, predicting, or downloading metabolites and seed metabolites of pathogenic microorganisms. Based on the MPMdb, taxonomic and phylogenetic analyses of pathogenic bacteria were performed according to the function of seed metabolites and metabolites. The results showed that the seed metabolites could be used as a feature for microorganism chemotaxonomy, and they could mirror the phylogeny of pathogenic bacteria. In addition, our screened specific seed metabolites of pathogenic bacteria can be used not only for further tapping the nutritional resources and identifying auxotrophies of pathogenic bacteria but also for designing targeted bactericidal compounds by combining with existing antimicrobial agents.IMPORTANCEMetabolites serve as key communication links between pathogenic microorganisms and hosts, with seed metabolites being crucial for microbial growth, reproduction, external communication, and host infection. However, the large-scale screening of metabolites and the identification of seed metabolites have always been the main technical bottleneck due to the low throughput and costly analysis. Genome-scale metabolic models have become a recognized research paradigm to investigate the metabolic characteristics of species. The developed metabolites of pathogenic microorganisms database in this study is committed to systematically predicting and identifying the metabolites and seed metabolites of pathogenic microorganisms, which could provide a powerful resource platform for pathogenic bacteria research.
种子代谢物是生物体在各种潜在环境条件下所需的必需化合物的组合。基于网络拓扑方法的种子代谢物筛选框架可以捕获物种的重要生物学信息。本研究旨在全面识别种子代谢物与致病菌之间的关系。通过构建基因组规模代谢模型,编制了一个大型数据集,描述了来自 34 个属的 124192 种致病菌的种子代谢物集和代谢物集。利用富集分析方法筛选每种致病菌的特定种子代谢物。建立了致病菌代谢物数据库(MPMdb)(http://qyzhanglab.hzau.edu.cn/MPMdb/),用于浏览、搜索、预测或下载致病菌的代谢物和种子代谢物。基于 MPMdb,根据种子代谢物和代谢物的功能对致病菌进行了分类和系统发育分析。结果表明,种子代谢物可用作微生物化学分类的特征,它们可以反映致病菌的系统发育。此外,我们筛选的致病菌特定种子代谢物不仅可用于进一步挖掘致病菌的营养资源和鉴定营养缺陷型,还可结合现有抗菌剂设计靶向杀菌化合物。重要性代谢物是致病菌与宿主之间关键的交流纽带,种子代谢物对于微生物的生长、繁殖、外部交流和宿主感染至关重要。然而,由于通量低和分析成本高,代谢物的大规模筛选和种子代谢物的鉴定一直是主要的技术瓶颈。基因组规模代谢模型已成为研究物种代谢特征的公认研究范例。本研究开发的致病菌代谢物数据库致力于系统地预测和鉴定致病菌的代谢物和种子代谢物,为致病菌研究提供了一个强大的资源平台。