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    Semi‐quantitative characterisation of mixed pollen samples using MinION sequencing and Reverse Metagenomics (RevMet)

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    Authors
    Peel, Ned
    Dicks, Lynn V
    Clark, Matthew D
    Heavens, Darren
    Percival‐Alwyn, Lawrence
    Cooper, Chris
    Davies, Richard G
    Leggett, Richard M
    Yu, Douglas W
    Editors
    Freckleton, Robert
    Issue date
    2019-07-08
    Submitted date
    2019-02-18
    
    Metadata
    Show full item record
    Abstract
    The ability to identify and quantify the constituent plant species that make up a mixed‐species sample of pollen has important applications in ecology, conservation, and agriculture. Recently, metabarcoding protocols have been developed for pollen that can identify constituent plant species, but there are strong reasons to doubt that metabarcoding can accurately quantify their relative abundances. A PCR‐free, shotgun metagenomics approach has greater potential for accurately quantifying species relative abundances, but applying metagenomics to eukaryotes is challenging due to low numbers of reference genomes. We have developed a pipeline, RevMet (Reverse Metagenomics) that allows reliable and semi‐quantitative characterization of the species composition of mixed‐species eukaryote samples, such as bee‐collected pollen, without requiring reference genomes. Instead, reference species are represented only by ‘genome skims’: low‐cost, low‐coverage, short‐read sequence datasets. The skims are mapped to individual long reads sequenced from mixed‐species samples using the MinION, a portable nanopore sequencing device, and each long read is uniquely assigned to a plant species. We genome‐skimmed 49 wild UK plant species, validated our pipeline with mock DNA mixtures of known composition, and then applied RevMet to pollen loads collected from wild bees. We demonstrate that RevMet can identify plant species present in mixed‐species samples at proportions of DNA ≥ 1%, with few false positives and false negatives, and reliably differentiate species represented by high versus low amounts of DNA in a sample. RevMet could readily be adapted to generate semi‐quantitative datasets for a wide range of mixed eukaryote samples. Our per‐sample costs were £90 per genome skim and £60 per pollen sample, and new versions of sequencers available now will further reduce these costs.
    Citation
    Peel N, Dicks LV, Clark MD, et al. Semi-quantitative characterisation of mixed pollen samples using MinION sequencing and Reverse Metagenomics (RevMet). Methods Ecol Evol. 2019; 10: 1690–1701. https://doi.org/10.1111/2041-210X.13265
    Publisher
    Wiley
    Journal
    Methods in Ecology and Evolution
    URI
    http://hdl.handle.net/10141/623288
    DOI
    10.1111/2041-210x.13265
    Type
    Journal Article
    Item Description
    Copyright © 2019 The Authors. Methods in Ecology and Evolution © 2019 British Ecological Society. The linked file is the published version of the article.
    NHM Repository
    ISSN
    2041-210X
    EISSN
    2041-210X
    ae974a485f413a2113503eed53cd6c53
    10.1111/2041-210x.13265
    Scopus Count
    Collections
    Life sciences

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