抗生素耐药性
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推论
抗生素
生物
遗传学
计算生物学
抗性(生态学)
微生物学
计算机科学
人工智能
生态学
作者
Karel Břinda,Alanna Callendrello,C. Kevin,Derek R. MacFadden,Themoula Charalampous,Robyn S Lee,Lauren A. Cowley,Crista B. Wadsworth,Yonatan H. Grad,Grégory Kucherov,Justin O’Grady,Michael Baym,William P. Hanage
出处
期刊:Nature microbiology
日期:2020-02-10
卷期号:5 (3): 455-464
被引量:88
标识
DOI:10.1038/s41564-019-0656-6
摘要
Abstract Surveillance of drug-resistant bacteria is essential for healthcare providers to deliver effective empirical antibiotic therapy. However, traditional molecular epidemiology does not typically occur on a timescale that could affect patient treatment and outcomes. Here, we present a method called ‘genomic neighbour typing’ for inferring the phenotype of a bacterial sample by identifying its closest relatives in a database of genomes with metadata. We show that this technique can infer antibiotic susceptibility and resistance for both Streptococcus pneumoniae and Neisseria gonorrhoeae . We implemented this with rapid k -mer matching, which, when used on Oxford Nanopore MinION data, can run in real time. This resulted in the determination of resistance within 10 min (91% sensitivity and 100% specificity for S. pneumoniae and 81% sensitivity and 100% specificity for N. gonorrhoeae from isolates with a representative database) of starting sequencing, and within 4 h of sample collection (75% sensitivity and 100% specificity for S. pneumoniae ) for clinical metagenomic sputum samples. This flexible approach has wide application for pathogen surveillance and may be used to greatly accelerate appropriate empirical antibiotic treatment.
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