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Towards reproducible metabarcoding data: Lessons from an international cross-laboratory experiment

Authors :
Ulla von Ammon
Susanna A. Wood
Kristen M. Westfall
Xavier Pochon
Anastasija Zaiko
Michael Stat
Mehrdad Hajibabaei
Vibha Thakur
Michael T. G. Wright
Judy E. Sutherland
Jonathan B. Geller
Tiffany Simpson
Aurelija Samuiloviene
Guang Zhang
Alba Ardura Gutierrez
Eddy J. Dowle
Shane Lavery
Melania E. Cristescu
Sarah Stephenson
Cathryn L. Abbott
Jaret P. Bilewitch
Michael Bunce
Graeme J. Inglis
Paul Greenfield
Anthony A. Chariton
Emmet Haggard
Source :
Scopus, RUO. Repositorio Institucional de la Universidad de Oviedo, instname
Publication Year :
2021

Abstract

Advances in high-throughput sequencing (HTS) are revolutionizing monitoring in marine environments by enabling rapid, accurate and holistic detection of species within complex biological samples. Research institutions worldwide increasingly employ HTS methods for biodiversity assessments. However, variance in laboratory procedures, analytical workflows and bioinformatic pipelines impede the transferability and comparability of results across research groups. An international experiment was conducted to assess the consistency of metabarcoding results derived from identical samples and primer sets using varying laboratory procedures. Homogenized biofouling samples collected from four coastal locations (Australia, Canada, New Zealand and the USA) were distributed to 12 independent laboratories. Participants were asked to follow one of two HTS library preparation workflows. While DNA extraction, primers and bioinformatic analyses were purposefully standardized to allow comparison, many other technical variables were allowed to vary among laboratories (e.g., amplification protocols, type of instrument used, etc.). Despite substantial variation observed in raw results, the primary signal in the data was consistent, with the samples grouping strongly by geographic origin for all datasets. Simple post-hoc data clean-up by removing low quality samples gave the best improvement in sample classification for nuclear 18S rRNA gene data, with an overall 92.81% correct group attribution. For mitochondrial COI gene data, the best classification result (95.58%) was achieved after correction for contamination errors. The identified critical methodological factors that introduced the greatest variability (preservation buffer, sample defrosting, template concentration, DNA polymerase, PCR enhancer) should be of great assistance in standardizing future comparative biodiversity studies using metabarcoding.

Details

ISSN :
17550998
Volume :
22
Issue :
2
Database :
OpenAIRE
Journal :
Molecular ecology resourcesREFERENCES
Accession number :
edsair.doi.dedup.....badaaf50a42e0255b2550997340b11e1