Dataset complexity impacts both MOTU delimitation and biodiversity estimates in eukaryotic 18S rRNA metabarcoding studies

Abstract How does the evolution of bioinformatics tools impact the biological interpretation of high‐throughput sequencing datasets? For eukaryotic metabarcoding studies, in particular, researchers often rely on tools originally developed for the analysis of 16S ribosomal RNA (rRNA) datasets. Such t...

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Bibliographic Details
Published in:Environmental DNA
Main Authors: De Santiago, Alejandro, Pereira, Tiago José, Mincks, Sarah L., Bik, Holly M.
Other Authors: North Pacific Research Board, Gulf of Mexico Research Initiative
Format: Article in Journal/Newspaper
Language:English
Published: Wiley 2021
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Online Access:http://dx.doi.org/10.1002/edn3.255
https://onlinelibrary.wiley.com/doi/pdf/10.1002/edn3.255
https://onlinelibrary.wiley.com/doi/full-xml/10.1002/edn3.255
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Summary:Abstract How does the evolution of bioinformatics tools impact the biological interpretation of high‐throughput sequencing datasets? For eukaryotic metabarcoding studies, in particular, researchers often rely on tools originally developed for the analysis of 16S ribosomal RNA (rRNA) datasets. Such tools do not adequately account for the complexity of eukaryotic genomes, the ubiquity of intragenomic variation in eukaryotic metabarcoding loci, or the differential evolutionary rates observed across eukaryotic genes and taxa. Recently, metabarcoding workflows have shifted away from the use of operational taxonomic units (OTUs) toward delimitation of amplicon sequence variants (ASVs). We assessed how the choice of bioinformatics algorithm impacts the downstream biological conclusions that are drawn from eukaryotic 18S rRNA metabarcoding studies. We focused on four workflows including UCLUST and VSearch algorithms for OTU clustering, and DADA2 and Deblur algorithms for ASV delimitation. We used two 18S rRNA datasets to further evaluate whether dataset complexity had a major impact on the statistical trends and ecological metrics: a “high complexity” (HC) environmental dataset generated from community DNA in Arctic marine sediments, and a “low complexity” (LC) dataset representing individually barcoded nematodes. Our results indicate that ASV algorithms produce more biologically realistic metabarcoding outputs, with DADA2 being the most consistent and accurate pipeline regardless of dataset complexity. In contrast, OTU clustering algorithms inflate the metabarcoding‐derived estimates of biodiversity, consistently returning a high proportion of “rare” molecular operational taxonomic units (MOTUs) that appear to represent computational artifacts and sequencing errors. However, species‐specific MOTUs with high relative abundance are often recovered regardless of the bioinformatics approach. We also found high concordance across pipelines for downstream ecological analysis based on beta‐diversity and alpha‐diversity ...