4.5 Article

Enhancing genomics- based outbreak detection of endemic Salmonella enterica serovar Typhimurium using dynamic thresholds

Journal

MICROBIAL GENOMICS
Volume 7, Issue 6, Pages -

Publisher

MICROBIOLOGY SOC
DOI: 10.1099/mgen.0.000310

Keywords

genomic epidemiology; outbreak detection; Salmonella Typhimurium; bacterial population genomics; genetic clustering

Funding

  1. National Health and Medical Research Council project grant [1129713]
  2. National Health and Medical Research Council of Australia [1129713] Funding Source: NHMRC

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The study highlights the importance of whole-genome sequencing in investigating salmonellosis outbreaks and proposes a new two-step approach for outbreak detection, particularly effective for outbreaks caused by strains with low genetic diversity.
Salmonella enterica serovar Typhimurium is the leading cause of salmonellosis in Australia, and the ability to identify outbreaks and their sources is vital to public health. Here, we examined the utility of whole- genome sequencing (WGS), including complete genome sequencing with Oxford Nanopore technologies, in examining 105 isolates from an endemic multi- locus variable number tandem repeat analysis (MLVA) type over 5 years. The MLVA type was very homogeneous, with 90 % of the isolates falling into groups with a five SNP cut- off. We developed a new two- step approach for outbreak detection using WGS. The first clustering at a zero single nucleotide polymorphism (SNP) cut- off was used to detect outbreak clusters that each occurred within a 4 week window and then a second clustering with dynamically increased SNP cut- offs were used to generate outbreak investigation clusters capable of identifying all outbreak cases. This approach offered optimal specificity and sensitivity for outbreak detection and investigation, in particular of those caused by endemic MLVA types or clones with low genetic diversity. We further showed that inclusion of complete genome sequences detected no additional mutational events for genomic outbreak surveillance. Phylogenetic analysis found that the MLVA type was likely to have been derived recently from a single source that persisted over 5 years, and seeded numerous sporadic infections and outbreaks. Our findings suggest that SNP cut- offs for outbreak cluster detection and public- health surveillance should be based on the local diversity of the relevant strains over time. These findings have general applicability to outbreak detection of bacterial pathogens.

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