Lindsey Rebecca L, Pouseele Hannes, Chen Jessica C, Strockbine Nancy A, Carleton Heather A
Enteric Diseases Laboratory Branch, Centers for Disease Control and Prevention Atlanta, GA, USA.
Applied Maths NV Sint-Martens-Latem, Belgium.
Front Microbiol. 2016 May 23;7:766. doi: 10.3389/fmicb.2016.00766. eCollection 2016.
Shiga toxin-producing Escherichia coli (STEC) is an important foodborne pathogen capable of causing severe disease in humans. Rapid and accurate identification and characterization techniques are essential during outbreak investigations. Current methods for characterization of STEC are expensive and time-consuming. With the advent of rapid and cheap whole genome sequencing (WGS) benchtop sequencers, the potential exists to replace traditional workflows with WGS. The aim of this study was to validate tools to do reference identification and characterization from WGS for STEC in a single workflow within an easy to use commercially available software platform. Publically available serotype, virulence, and antimicrobial resistance databases were downloaded from the Center for Genomic Epidemiology (CGE) (www.genomicepidemiology.org) and integrated into a genotyping plug-in with in silico PCR tools to confirm some of the virulence genes detected from WGS data. Additionally, down sampling experiments on the WGS sequence data were performed to determine a threshold for sequence coverage needed to accurately predict serotype and virulence genes using the established workflow. The serotype database was tested on a total of 228 genomes and correctly predicted from WGS for 96.1% of O serogroups and 96.5% of H serogroups identified by conventional testing techniques. A total of 59 genomes were evaluated to determine the threshold of coverage to detect the different WGS targets, 40 were evaluated for serotype and virulence gene detection and 19 for the stx gene subtypes. For serotype, 95% of the O and 100% of the H serogroups were detected at > 40x and ≥ 30x coverage, respectively. For virulence targets and stx gene subtypes, nearly all genes were detected at > 40x, though some targets were 100% detectable from genomes with coverage ≥20x. The resistance detection tool was 97% concordant with phenotypic testing results. With isolates sequenced to > 40x coverage, the different databases accurately predicted serotype, virulence, and resistance from WGS data, providing a fast and cheaper alternative to conventional typing techniques.
产志贺毒素大肠杆菌(STEC)是一种重要的食源性病原体,可导致人类严重疾病。在疫情调查期间,快速准确的鉴定和特征分析技术至关重要。目前用于STEC特征分析的方法昂贵且耗时。随着快速且廉价的全基因组测序(WGS)台式测序仪的出现,存在用WGS取代传统工作流程的潜力。本研究的目的是在一个易于使用的商业软件平台内,验证在单个工作流程中从WGS对STEC进行参考鉴定和特征分析的工具。从基因组流行病学中心(CGE)(www.genomicepidemiology.org)下载公开可用的血清型、毒力和抗菌药物耐药性数据库,并将其整合到一个基因分型插件中,该插件带有电子PCR工具,以确认从WGS数据中检测到的一些毒力基因。此外,对WGS序列数据进行了下采样实验,以确定使用既定工作流程准确预测血清型和毒力基因所需的序列覆盖阈值。血清型数据库在总共228个基因组上进行了测试,通过WGS正确预测了常规检测技术鉴定的O血清群的96.1%和H血清群的96.5%。总共评估了59个基因组以确定检测不同WGS靶点的覆盖阈值,40个用于血清型和毒力基因检测评估,19个用于stx基因亚型评估。对于血清型,分别在覆盖率>40倍和≥30倍时检测到95%的O血清群和100%的H血清群。对于毒力靶点和stx基因亚型,几乎所有基因在覆盖率>40倍时被检测到,尽管一些靶点在覆盖率≥20倍的基因组中100%可检测到。耐药性检测工具与表型检测结果的一致性为97%。对于测序覆盖率>40倍的分离株,不同数据库可从WGS数据中准确预测血清型、毒力和耐药性,为传统分型技术提供了一种快速且廉价的替代方法。