Centre for Complex Systems, Faculty of Engineering and IT, University of Sydney, Sydney, NSW, 2006, Australia.
Centre for Infectious Diseases and Microbiology-Public Health, Institute of Clinical Pathology and Medical Research, NSW Health Pathology, Westmead Hospital, Sydney, NSW, 2145, Australia.
Sci Rep. 2019 Apr 16;9(1):6159. doi: 10.1038/s41598-019-42582-3.
We examine non-typhoidal Salmonella (S. Typhimurium or STM) epidemics as complex systems, driven by evolution and interactions of diverse microbial strains, and focus on emergence of successful strains. Our findings challenge the established view that seasonal epidemics are associated with random sets of co-circulating STM genotypes. We use high-resolution molecular genotyping data comprising 17,107 STM isolates representing nine consecutive seasonal epidemics in Australia, genotyped by multiple-locus variable-number tandem-repeats analysis (MLVA). From these data, we infer weighted undirected networks based on distances between the MLVA profiles, depicting epidemics as networks of individual bacterial strains. The network analysis demonstrated dichotomy in STM populations which split into two distinct genetic branches, with markedly different prevalences. This distinction revealed the emergence of dominant STM strains defined by their local network topological properties, such as centrality, while correlating the development of new epidemics with global network features, such as small-world propensity.
我们将非伤寒沙门氏菌(S. Typhimurium 或 STM)流行视为复杂系统,受进化和多种微生物菌株相互作用的驱动,并关注成功菌株的出现。我们的研究结果挑战了季节性流行与随机组合的共同循环 STM 基因型相关的既定观点。我们使用高分辨率分子基因分型数据,包括代表澳大利亚连续九季流行的 17,107 个 STM 分离株,通过多位点可变数串联重复分析(MLVA)进行基因分型。从这些数据中,我们基于 MLVA 图谱之间的距离推断加权无向网络,将流行描绘为个体细菌菌株的网络。网络分析表明,STM 群体存在二分法,分为两个不同的遗传分支,其流行率明显不同。这种区别揭示了以其本地网络拓扑特性(如中心性)定义的主导 STM 菌株的出现,同时将新流行的发展与全球网络特征(如小世界倾向)相关联。