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Journal article

Proficiency Testing of Metagenomics-Based Detection of Food-Borne Pathogens Using a Complex Artificial Sequencing Dataset

From

Friedrich-Loeffler-Institute1

National Veterinary Institute2

University College Cork3

Nanyang Technological University4

University of Bologna5

Federal Institute for Risk Assessment6

Robert Koch-Institut7

Laboratoire National de Santé8

University of Amsterdam9

UK Department for Environment, Food and Rural Affairs10

Instituto de Salud Carlos III11

Research Group for Genomic Epidemiology, National Food Institute, Technical University of Denmark12

National Food Institute, Technical University of Denmark13

...and 3 more

Metagenomics-based high-throughput sequencing (HTS) enables comprehensive detection of all species comprised in a sample with a single assay and is becoming a standard method for outbreak investigation. However, unlike real-time PCR or serological assays, HTS datasets generated for pathogen detection do not easily provide yes/no answers.

Rather, results of the taxonomic read assignment need to be assessed by trained personnel to gain information thereof. Proficiency tests are important instruments of validation, harmonization, and standardization. Within the European Union funded project COMPARE [COllaborative Management Platform for detection and Analyses of (Re-) emerging and foodborne outbreaks in Europe], we conducted a proficiency test to scrutinize the ability to assess diagnostic metagenomics data.

An artificial dataset resembling shotgun sequencing of RNA from a sample of contaminated trout was provided to 12 participants with the request to provide a table with per-read taxonomic assignments at species level and a report with a summary and assessment of their findings, considering different categories like pathogen, background, or contaminations.

Analysis of the read assignment tables showed that the software used reliably classified the reads taxonomically overall. However, usage of incomplete reference databases or inappropriate data pre-processing caused difficulties. From the combination of the participants’ reports with their read assignments, we conclude that, although most species were detected, a number of important taxa were not or not correctly categorized.

This implies that knowledge of and awareness for potentially dangerous species and contaminations need to be improved, hence, capacity building for the interpretation of diagnostic metagenomics datasets is necessary.

Language: English
Publisher: Frontiers Media S.A.
Year: 2020
Pages: 575377
ISSN: 1664302x
Types: Journal article
DOI: 10.3389/fmicb.2020.575377
ORCIDs: Petersen, Thomas Nordahl , Hendriksen, Rene S. and Pamp, Sünje Joanna
Other keywords

Microbiology QR1-502

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