论文标题
全基因组网络揭示了沙门氏菌流行病的出现
Genome-wide networks reveal emergence of epidemic strains of Salmonella Enteritidis
论文作者
论文摘要
目标:为了增强对高负重的食源性病原体的监测,有机会将Pangenome数据与网络分析相结合。 方法:Enterica enterica enterica血清肠肠分离株分离株新南威尔士州(NSW)肠肠肠分离株在2015年8月至2019年12月之间(总共1033个分离株),其中包括确认的疫情。所有分离株均接受了整个基因组测序。基因组之间的距离是通过计算机MLVA和核心SNP进行量化的,该核心网络的构建知之甚少。流行式中心空间是从无向网络生成的。与系统发育的表征同时考虑了无向SNP网络上的组件。 结果:爆发分离株可识别为MLVA和SNP网络上的不同组件。基于MLVA的基于MLVA网络的中心性/流行空间并未描绘出爆发,而在基于SNP网络的中心/患病率领域中,爆发清楚地被描述了。基于系统发育分析,无向SNP网络上的组件与SNP簇显示了很高的一致性。 结论:基于网络分析中的细菌全基因组数据可以改善人口分析的分辨率。网络组件和SNP群集的高一致性对于对食源沙门氏菌的快速分析有希望。由于网络分析的开销低。
Objectives: To enhance monitoring of high-burden foodborne pathogens, there is opportunity to combine pangenome data with network analysis. Methods: Salmonella enterica subspecies Enterica serovar Enteritidis isolates were referred to the New South Wales (NSW) Enteric Reference Laboratory between August 2015 and December 2019 (1033 isolates in total), inclusive of a confirmed outbreak. All isolates underwent whole genome sequencing. Distances between genomes were quantified by in silico MLVA as well as core SNPs, which informed construction of undirected networks. Prevalence-centrality spaces were generated from the undirected networks. Components on the undirected SNP network were considered alongside a phylogenetic tree representation. Results: Outbreak isolates were identifiable as distinct components on the MLVA and SNP networks. The MLVA network based centrality/prevalence space did not delineate the outbreak, whereas the outbreak was clearly delineated in the SNP network based centrality/prevalence space. Components on the undirected SNP network showed a high concordance to the SNP clusters based on phylogenetic analysis. Conclusions: Bacterial whole genome data in network based analysis can improve the resolution of population analysis. High concordance of network components and SNP clusters is promising for rapid population analyses of foodborne Salmonella spp. due to the low overhead of network analysis.