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铜绿假单胞菌抗菌耐药性的转录组分析

Transcriptome Profiling of Antimicrobial Resistance in Pseudomonas aeruginosa.

作者信息

Khaledi Ariane, Schniederjans Monika, Pohl Sarah, Rainer Roman, Bodenhofer Ulrich, Xia Boyang, Klawonn Frank, Bruchmann Sebastian, Preusse Matthias, Eckweiler Denitsa, Dötsch Andreas, Häussler Susanne

机构信息

Department of Molecular Bacteriology, Helmholtz Centre for Infection Research, Braunschweig, Germany Institute for Molecular Bacteriology, TWINCORE GmbH, Centre for Clinical and Experimental Infection Research, Hanover, Germany.

Institute of Bioinformatics, Johannes Kepler University, Linz, Austria.

出版信息

Antimicrob Agents Chemother. 2016 Jul 22;60(8):4722-33. doi: 10.1128/AAC.00075-16. Print 2016 Aug.

Abstract

Emerging resistance to antimicrobials and the lack of new antibiotic drug candidates underscore the need for optimization of current diagnostics and therapies to diminish the evolution and spread of multidrug resistance. As the antibiotic resistance status of a bacterial pathogen is defined by its genome, resistance profiling by applying next-generation sequencing (NGS) technologies may in the future accomplish pathogen identification, prompt initiation of targeted individualized treatment, and the implementation of optimized infection control measures. In this study, qualitative RNA sequencing was used to identify key genetic determinants of antibiotic resistance in 135 clinical Pseudomonas aeruginosa isolates from diverse geographic and infection site origins. By applying transcriptome-wide association studies, adaptive variations associated with resistance to the antibiotic classes fluoroquinolones, aminoglycosides, and β-lactams were identified. Besides potential novel biomarkers with a direct correlation to resistance, global patterns of phenotype-associated gene expression and sequence variations were identified by predictive machine learning approaches. Our research serves to establish genotype-based molecular diagnostic tools for the identification of the current resistance profiles of bacterial pathogens and paves the way for faster diagnostics for more efficient, targeted treatment strategies to also mitigate the future potential for resistance evolution.

摘要

抗菌药物耐药性的不断出现以及新型抗生素候选药物的匮乏凸显了优化当前诊断和治疗方法以减少多重耐药性演变和传播的必要性。由于细菌病原体的抗生素耐药性状况由其基因组决定,应用下一代测序(NGS)技术进行耐药性分析未来可能实现病原体鉴定、及时启动针对性的个体化治疗以及实施优化的感染控制措施。在本研究中,采用定性RNA测序来鉴定来自不同地理和感染部位来源的135株临床铜绿假单胞菌分离株中抗生素耐药性的关键遗传决定因素。通过应用全转录组关联研究,鉴定出了与对氟喹诺酮类、氨基糖苷类和β-内酰胺类抗生素耐药相关的适应性变异。除了与耐药性直接相关的潜在新型生物标志物外,还通过预测性机器学习方法确定了表型相关基因表达和序列变异的全局模式。我们的研究旨在建立基于基因型的分子诊断工具,用于鉴定细菌病原体当前的耐药谱,并为更快的诊断铺平道路,以制定更有效、针对性更强的治疗策略,从而降低未来耐药性演变的可能性。

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