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Next-generation sequencing as a screening tool for foodborne pathogens in fresh produce

Lookup NU author(s): Erin Lewis, Emeritus Professor Jerry Barnes

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Abstract

© 2020Next generation sequencing (NGS) approaches are increasingly applied to tracing microbial contaminants entering the food chain due to NGS’ untargeted nature and ability to investigate non-culturable (and/or difficult to culture) organisms while yielding genomic information about the microbiota. So far, a plethora of microbes has been shown to be associated with fresh produce, but few studies have utilised NGS to identify contamination with human pathogens. This study aims to establish the limit of detection (LoD) for Salmonella and phage MS2 (a Norovirus surrogate) contamination of fresh produce employing NGS approaches on the Illumina MiSeq: 16S amplicon-sequencing, and RNA-seq, using ScriptSeq (Illumina) and NEBNext (New England BioLabs) kits. ScriptSeq proved the most sensitive approach; delivering an LoD of 104 CFU reaction−1 (Colony Forming Units) for Salmonella and 105 PFU reaction−1 (Plaque Forming Units) for phage MS2. Use of the NEBNext kit resulted in detection of Salmonella at 106 CFU reaction−1 and phage MS2 at 107 PFU reaction−1. 16S amplicon-sequencing yielded a similar LoD of 105 CFU reaction−1 for Salmonella but could not detect MS2. The tested NGS methodologies, in combination with bioinformatics approaches applied, proved less sensitive than conventional microbial detection approaches.


Publication metadata

Author(s): Lewis E, Hudson JA, Cook N, Barnes JD, Haynes E

Publication type: Article

Publication status: Published

Journal: Journal of Microbiological Methods

Year: 2020

Volume: 171

Print publication date: 01/04/2020

Online publication date: 13/01/2020

Acceptance date: 10/01/2020

ISSN (print): 0167-7012

ISSN (electronic): 1872-8359

Publisher: Elsevier B.V.

URL: https://doi.org/10.1016/j.mimet.2020.105840

DOI: 10.1016/j.mimet.2020.105840

PubMed id: 31945388


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