Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports

Aim Invasive species represent one of the greatest threats to biodiversity. The ability to detect non-indigenous species (NIS), particularly those present at low abundance, is limited by difficulties in performing exhaustive sampling and in identifying species. Here we sample zooplankton from 16 maj...

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Published in:Diversity and Distributions
Main Authors: Brown, Emily A., Chain, Frederic J. J., Zhan, Aibin, MacIsaac, Hugh J., Cristescu, Melania E.
Format: Report
Language:unknown
Published: 2016
Subjects:
18s
Online Access:http://ir.rcees.ac.cn/handle/311016/36116
https://doi.org/10.1111/ddi.12465
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spelling ftchacadscircees:oai:/ir.rcees.ac.cn:311016/36116 2023-06-11T04:09:51+02:00 Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports Brown, Emily A. Chain, Frederic J. J. Zhan, Aibin MacIsaac, Hugh J. Cristescu, Melania E. 2016-10 http://ir.rcees.ac.cn/handle/311016/36116 https://doi.org/10.1111/ddi.12465 unknown DIVERSITY AND DISTRIBUTIONS http://ir.rcees.ac.cn/handle/311016/36116 doi:10.1111/ddi.12465 cn.org.cspace.api.content.CopyrightPolicy@737a1c 18s Biodiversity Biomonitoring High-throughput Sequencing Invasive Species Metabarcoding Operational Taxonomic Unit 期刊论文 2016 ftchacadscircees https://doi.org/10.1111/ddi.12465 2023-05-28T12:11:25Z Aim Invasive species represent one of the greatest threats to biodiversity. The ability to detect non-indigenous species (NIS), particularly those present at low abundance, is limited by difficulties in performing exhaustive sampling and in identifying species. Here we sample zooplankton from 16 major Canadian ports and apply a metabarcoding approach to detect NIS. Location Marine and freshwater ports along Canadian coastlines (Pacific, Arctic, Atlantic) and the Great Lakes. Methods We amplified the V4 region of the small subunit ribosomal DNA (18S) and used two distinct analytic protocols to identify species present at low abundance. Taxonomic assignment was conducted using BLAST searches against a local 18S sequence database of either (i) individual reads (totalling 7,733,541 reads) or (ii) operational taxonomic units (OTUs) generated by sequence clustering. Phylogenetic analyses were performed to confirm the identity of reads with ambiguous taxonomic assignment. Results Taxonomic assignment of individual reads identified 379 zooplankton species at a minimum sequence identity of 97%. Of these, 24 species were identified as NIS, 11 of which were detected in previously unreported locations. When reads were clustered into OTUs prior to taxonomic assignment, six NIS were no longer detected and an additional NIS was falsely identified. Phylogenetic analyses revealed that sequences belonging to closely related species clustered together into shared OTUs as a result of low interspecific variation. NIS can thus be misidentified when their sequences join the OTUs of more abundant native species. Main conclusions Our results reveal the power of the metabarcoding approach, whilst also highlighting the need to account for potentially low levels of genetic diversity when processing data, to use barcode markers that allow differentiation of closely related species and to continue building comprehensive sequence databases that allow reliable and fine-scale taxonomic designation. Report Arctic Pacific Arctic Zooplankton Research Center for Eco-Environmental Sciences: RCEES OpenIR (Chinese Academy of Sciences) Arctic Pacific Diversity and Distributions 22 10 1045 1059
institution Open Polar
collection Research Center for Eco-Environmental Sciences: RCEES OpenIR (Chinese Academy of Sciences)
op_collection_id ftchacadscircees
language unknown
topic 18s
Biodiversity
Biomonitoring
High-throughput Sequencing
Invasive Species
Metabarcoding
Operational Taxonomic Unit
spellingShingle 18s
Biodiversity
Biomonitoring
High-throughput Sequencing
Invasive Species
Metabarcoding
Operational Taxonomic Unit
Brown, Emily A.
Chain, Frederic J. J.
Zhan, Aibin
MacIsaac, Hugh J.
Cristescu, Melania E.
Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports
topic_facet 18s
Biodiversity
Biomonitoring
High-throughput Sequencing
Invasive Species
Metabarcoding
Operational Taxonomic Unit
description Aim Invasive species represent one of the greatest threats to biodiversity. The ability to detect non-indigenous species (NIS), particularly those present at low abundance, is limited by difficulties in performing exhaustive sampling and in identifying species. Here we sample zooplankton from 16 major Canadian ports and apply a metabarcoding approach to detect NIS. Location Marine and freshwater ports along Canadian coastlines (Pacific, Arctic, Atlantic) and the Great Lakes. Methods We amplified the V4 region of the small subunit ribosomal DNA (18S) and used two distinct analytic protocols to identify species present at low abundance. Taxonomic assignment was conducted using BLAST searches against a local 18S sequence database of either (i) individual reads (totalling 7,733,541 reads) or (ii) operational taxonomic units (OTUs) generated by sequence clustering. Phylogenetic analyses were performed to confirm the identity of reads with ambiguous taxonomic assignment. Results Taxonomic assignment of individual reads identified 379 zooplankton species at a minimum sequence identity of 97%. Of these, 24 species were identified as NIS, 11 of which were detected in previously unreported locations. When reads were clustered into OTUs prior to taxonomic assignment, six NIS were no longer detected and an additional NIS was falsely identified. Phylogenetic analyses revealed that sequences belonging to closely related species clustered together into shared OTUs as a result of low interspecific variation. NIS can thus be misidentified when their sequences join the OTUs of more abundant native species. Main conclusions Our results reveal the power of the metabarcoding approach, whilst also highlighting the need to account for potentially low levels of genetic diversity when processing data, to use barcode markers that allow differentiation of closely related species and to continue building comprehensive sequence databases that allow reliable and fine-scale taxonomic designation.
format Report
author Brown, Emily A.
Chain, Frederic J. J.
Zhan, Aibin
MacIsaac, Hugh J.
Cristescu, Melania E.
author_facet Brown, Emily A.
Chain, Frederic J. J.
Zhan, Aibin
MacIsaac, Hugh J.
Cristescu, Melania E.
author_sort Brown, Emily A.
title Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports
title_short Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports
title_full Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports
title_fullStr Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports
title_full_unstemmed Early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in Canadian ports
title_sort early detection of aquatic invaders using metabarcoding reveals a high number of non-indigenous species in canadian ports
publishDate 2016
url http://ir.rcees.ac.cn/handle/311016/36116
https://doi.org/10.1111/ddi.12465
geographic Arctic
Pacific
geographic_facet Arctic
Pacific
genre Arctic
Pacific Arctic
Zooplankton
genre_facet Arctic
Pacific Arctic
Zooplankton
op_relation DIVERSITY AND DISTRIBUTIONS
http://ir.rcees.ac.cn/handle/311016/36116
doi:10.1111/ddi.12465
op_rights cn.org.cspace.api.content.CopyrightPolicy@737a1c
op_doi https://doi.org/10.1111/ddi.12465
container_title Diversity and Distributions
container_volume 22
container_issue 10
container_start_page 1045
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