An epidemiological framework for improving the accuracy of whole-genome sequence-based antimicrobial resistance surveillance in Salmonella.

IF 1.8 4区 生物学 Q4 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Benjamin Hetman, David L Pearl, Richard Reid-Smith, Jane Parmley, Eduardo Taboada
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引用次数: 0

Abstract

Whole-genome sequence-based surveillance of bacteria for determinants of antimicrobial resistance promises many advantages over traditional, wet-lab approaches. However, adjustments to parameters used to identify genetic determinants from sequencing data can affect results and interpretation of the important determinants in circulation. Using a dataset of whole-genome sequences from 1633 isolates of Salmonella Heidelberg and S. Kentucky collected from surveillance of Canadian poultry production, we queried the genomic data using an in-silico AMR detection tool, StarAMR, applying a range of parameter values required for the detection pipeline to test for differences in detection accuracy. We compared the results from each iteration to phenotypic antimicrobial susceptibility results, and generated estimates of sensitivity and specificity using regression models that controlled for the effects of multiple sampling events and variables, and interactions between covariates. Results from our analyses revealed small, yet significant effects of the input parameters on the sensitivity and specificity of the AMR detection tool, and these effects differed based on the serovar and drug class in question. Findings from this study may have implications for the incorporation of whole-genome sequence-based approaches to the surveillance of antimicrobial resistance determinants in bacteria sampled from food products and animals related to food production.

提高基于全基因组序列的沙门氏菌抗菌药耐药性监测准确性的流行病学框架。
基于全基因组序列的细菌抗菌素耐药性决定因素监测比传统的湿实验室方法有许多优势。然而,调整用于从测序数据中识别遗传决定因素的参数可能会影响结果和对循环中重要决定因素的解释。利用从加拿大家禽生产监测中收集的1633株海德堡沙门氏菌和肯塔基沙门氏菌的全基因组序列数据集,我们使用芯片AMR检测工具StarAMR查询基因组数据,应用检测管道所需的一系列参数值来测试检测准确性的差异。我们将每次迭代的结果与表型抗菌药物敏感性结果进行比较,并使用控制多个采样事件和变量以及协变量之间相互作用的回归模型生成敏感性和特异性估计。我们的分析结果显示,输入参数对AMR检测工具的敏感性和特异性的影响很小,但却很显著,而且这些影响因血清型和所讨论的药物类别而异。这项研究的发现可能对将基于全基因组序列的方法用于监测食品和与食品生产有关的动物样本中细菌的抗微生物药物耐药性决定因素具有启示意义。
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来源期刊
CiteScore
4.80
自引率
0.00%
发文量
71
审稿时长
2.5 months
期刊介绍: Published since 1954, the Canadian Journal of Microbiology is a monthly journal that contains new research in the field of microbiology, including applied microbiology and biotechnology; microbial structure and function; fungi and other eucaryotic protists; infection and immunity; microbial ecology; physiology, metabolism and enzymology; and virology, genetics, and molecular biology. It also publishes review articles and notes on an occasional basis, contributed by recognized scientists worldwide.
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