Strain-level metagenomic analysis of the fermented dairy beverage nunu highlights potential food safety risks

  • Aaron M. Walsh
  • , Fiona Crispie
  • , Kareem Daari
  • , Orla O'Sullivan
  • , Jennifer C. Martin
  • , Cornelius T. Arthur
  • , Marcus J. Claesson
  • , Karen P. Scott
  • , Paul D. Cotter

Research output: Contribution to journalArticlepeer-review

Abstract

The rapid detection of pathogenic strains in food products is essential for the prevention of disease outbreaks. It has already been demonstrated that whole-metagenome shotgun sequencing can be used to detect pathogens in food but, until recently, strain-level detection of pathogens has relied on wholemetagenome assembly, which is a computationally demanding process. Here we demonstrated that three short-read-alignment-based methods, i.e., MetaMLST, PanPhlAn, and StrainPhlAn, could accurately and rapidly identify pathogenic strains in spinach metagenomes that had been intentionally spiked with Shiga toxin-producing Escherichia coli in a previous study. Subsequently, we employed the methods, in combination with other metagenomics approaches, to assess the safety of nunu, a traditional Ghanaian fermented milk product that is produced by the spontaneous fermentation of raw cow milk. We showed that nunu samples were frequently contaminated with bacteria associated with the bovine gut and, worryingly, we detected putatively pathogenic E. coli and Klebsiella pneumoniae strains in a subset of nunu samples. Ultimately, our work establishes that short-read-alignmentbased bioinformatics approaches are suitable food safety tools, and we describe a real-life example of their utilization.

Original languageEnglish
Article numbere01144-17
JournalApplied and Environmental Microbiology
Volume83
Issue number16
DOIs
Publication statusPublished - 1 Aug 2017

Keywords

  • Fermentation
  • Food-borne pathogens
  • Metagenomics

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