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Zoonotic Source Attribution of Salmonella enterica Serotype Typhimurium Using Genomic Surveillance Data, United States

机译:美国基因组监测数据对肠炎沙门氏菌鼠伤寒沙门氏菌的人畜共患病源归因

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摘要

Increasingly, routine surveillance and monitoring of foodborne pathogens using whole-genome sequencing is creating opportunities to study foodborne illness epidemiology beyond routine outbreak investigations and case–control studies. Using a global phylogeny of Salmonella enterica serotype Typhimurium, we found that major livestock sources of the pathogen in the United States can be predicted through whole-genome sequencing data. Relatively steady rates of sequence divergence in livestock lineages enabled the inference of their recent origins. Elevated accumulation of lineage-specific pseudogenes after divergence from generalist populations and possible metabolic acclimation in a representative swine isolate indicates possible emergence of host adaptation. We developed and retrospectively applied a machine learning Random Forest classifier for genomic source prediction of Salmonella Typhimurium that correctly attributed 7 of 8 major zoonotic outbreaks in the United States during 1998–2013. We further identified 50 key genetic features that were sufficient for robust livestock source prediction.
机译:使用全基因组测序进行食源性病原体的常规监测和监测越来越多地为研究食源性疾病流行病学提供了超越常规暴发调查和病例对照研究的机会。利用全球性肠炎沙门氏菌鼠伤寒沙门氏菌的系统发育,我们发现可以通过全基因组测序数据预测美国病原体的主要家畜来源。牲畜谱系中序列差异的相对稳定速率可以推断其最近的起源。从多面手种群分离后,沿袭特异性假基因的积累增加,并且在代表性的猪分离株中可能发生代谢适应,表明宿主适应性可能出现。我们开发并回顾性地将机器学习随机森林分类器用于鼠伤寒沙门氏菌的基因组来源预测,该分类器正确地归因于1998-2013年间美国8次主要人畜共患病暴发中的7次。我们进一步确定了50个关键遗传特征,这些特征足以进行可靠的家畜来源预测。

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