Predicting trawl catches using environmental DNA
Permanent lenke
https://hdl.handle.net/10037/35768Dato
2024-08-07Type
Journal articleTidsskriftartikkel
Peer reviewed
Forfatter
Guri, Gledis; Shelton, Andrew Olaf; Kelly, Ryan P; Yoccoz, Nigel Gilles; Johansen, Torild; Præbel, Kim; Hanebrekke, Tanja Lexau; Ray, Jessica Louise; Fall, Johanna Jennifer Elisabeth; Westgaard, Jon-IvarSammendrag
Quantifying the biomass, or number of individuals, diversity, and distribution of marine species is a critical aspect of understanding
and managing marine ecosystems. In recent years, there has been growing interest in using environmental DNA (eDNA) for marine
ecosystem management and biodiversity assessment. However, the main challenge hindering eDNA applicability has been the inability
to infer absolute species abundances from multispecies analysis (eDNA metabarcoding). In this study, we demonstrate a way forward
by estimating the abundance of commercially important fish species in a Norwegian fjord using a joint Bayesian statistical model of
traditional trawl-catch data and molecular data derived from eDNA. Using this model, we accurately predict out-of-sample trawl catches
using eDNA alone. Moreover, our model provides empirical estimates for key processes linking marine eDNA concentration to the fish
population abundance estimated from trawl observations, including trawl catchability, DNA shedding, degradation, dilution, transport,
recovery rate, and isolation efficiency. These processes, including amplification efficiencies correcting for Polymerase Chain Reaction
(PCR) bias, are species-specific and enable the translation of eDNA metabarcoding data into abundances. These findings have broad
implications for the use of eDNA in marine ecosystem management and conservation efforts.
Forlag
Oxford University PressSitering
Guri, Shelton, Kelly, Yoccoz, Johansen, Præbel, Hanebrekke, Ray, Fall, Westgaard. Predicting trawl catches using environmental DNA. ICES Journal of Marine Science. 2024;81(8):1536-1548Metadata
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