Genomic Epidemiology Dataset for the Important Nosocomial Pathogenic Bacterium Acinetobacter baumannii

Data Pub Date : 2024-01-26 DOI:10.3390/data9020022
A. Shelenkov, Yu. D. Mikhaylova, Vasiliy Akimkin
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Abstract

The infections caused by various bacterial pathogens both in clinical and community settings represent a significant threat to public healthcare worldwide. The growing resistance to antimicrobial drugs acquired by bacterial species causing healthcare-associated infections has already become a life-threatening danger noticed by the World Health Organization. Several groups or lineages of bacterial isolates, usually called ‘the clones of high risk’, often drive the spread of resistance within particular species. Thus, it is vitally important to reveal and track the spread of such clones and the mechanisms by which they acquire antibiotic resistance and enhance their survival skills. Currently, the analysis of whole-genome sequences for bacterial isolates of interest is increasingly used for these purposes, including epidemiological surveillance and the development of spread prevention measures. However, the availability and uniformity of the data derived from genomic sequences often represent a bottleneck for such investigations. With this dataset, we present the results of a genomic epidemiology analysis of 17,546 genomes of a dangerous bacterial pathogen, Acinetobacter baumannii. Important typing information, including multilocus sequence typing (MLST)-based sequence types (STs), intrinsic blaOXA-51-like gene variants, capsular (KL) and oligosaccharide (OCL) types, CRISPR-Cas systems, and cgMLST profiles are presented, as well as the assignment of particular isolates to nine known international clones of high risk. The presence of antimicrobial resistance genes within the genomes is also reported. These data will be useful for researchers in the field of A. baumannii genomic epidemiology, resistance analysis, and prevention measure development.
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重要的非社会致病性细菌鲍曼不动杆菌的基因组流行病学数据集
在临床和社区环境中,由各种细菌病原体引起的感染是对全球公共医疗保健的重大威胁。世界卫生组织已经注意到,引起医疗相关感染的细菌对抗菌药物的耐药性不断增强,已经成为威胁生命的危险因素。通常被称为 "高风险克隆 "的几组或几系细菌分离物,往往会在特定物种内部推动耐药性的传播。因此,揭示和追踪这些克隆的传播以及它们获得抗生素耐药性和提高生存技能的机制至关重要。目前,相关细菌分离物的全基因组序列分析正越来越多地用于上述目的,包括流行病学监测和制定传播预防措施。然而,基因组序列数据的可用性和统一性往往成为此类研究的瓶颈。通过这个数据集,我们展示了对危险细菌病原体鲍曼不动杆菌的 17,546 个基因组进行基因组流行病学分析的结果。我们提供了重要的分型信息,包括基于多焦点序列分型(MLST)的序列类型(ST)、固有的 blaOXA-51 样基因变体、胶囊(KL)和寡糖(OCL)类型、CRISPR-Cas 系统和 cgMLST 图谱,并将特定分离株归入九个已知的国际高风险克隆。此外,还报告了基因组中抗菌药耐药性基因的存在情况。这些数据将对鲍曼不动杆菌基因组流行病学、耐药性分析和预防措施开发领域的研究人员有所帮助。
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