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Fine-tuning biodiversity assessments: A framework to pair eDNA metabarcoding and morphological approaches

Authors :
Fundação para a Ciência e a Tecnologia (Portugal)
European Commission
CSIC - Unidad de Recursos de Información Científica para la Investigación (URICI)
Lúcio Pereira, Cátia
Gilbert, M. Thomas P.
Araújo, Miguel B.
Graça Matias, Miguel
Fundação para a Ciência e a Tecnologia (Portugal)
European Commission
CSIC - Unidad de Recursos de Información Científica para la Investigación (URICI)
Lúcio Pereira, Cátia
Gilbert, M. Thomas P.
Araújo, Miguel B.
Graça Matias, Miguel
Publication Year :
2021

Abstract

1. Accurate quantification of biodiversity can be demanding and expensive. Although environmental DNA (eDNA) metabarcoding can facilitate biodiversity assessments through non-invasive, cost-efficient, and rapid surveys, the approach struggles to outperform traditional morphological approaches in providing reliable quantitative estimates for surveyed species (e.g., abundance and biomass).<br />2. We present an integrated methodology for improving biodiversity surveys that pairs eDNA metabarcoding with morphological data, following a series of taxonomic and geographic filters. We demonstrate its power by applying it to a new spatiotemporal dataset generated on an Iberian-wide distributed aquatic mesocosm infrastructure that spans a wide biogeographic gradient.<br />3. By building upon the strengths that these two approaches offer, our framework improved taxonomic resolution for 30% of the taxa and enabled species’ traits (e.g., body-size) and abundance to be assigned to 85% of the taxa in hybrid datasets.<br />4. These results indicate that eDNA-based assessments can complement, but not always replace, conventional approaches. Integrating conventional and modern eDNA metabarcoding approaches, already available in the ecologist’s toolbox, will greatly enhance biodiversity assessments.

Details

Database :
OAIster
Notes :
English
Publication Type :
Electronic Resource
Accession number :
edsoai.on1286583182
Document Type :
Electronic Resource