eDNAPlus: A unifying modelling framework for DNA-based biodiversity monitoring
Alex Diana, Eleni Matechou, Jim Griffin, Douglas Yu, Mingjie Luo,, Marie Tosa, Alex Bush, Richard Griffiths

TL;DR
eDNAPlus introduces a comprehensive statistical framework for analyzing DNA-based biodiversity data, accounting for various sources of error, enabling accurate estimation of species biomass changes and environmental effects.
Contribution
It provides a unified model that incorporates all key sources of variation in DNA-based surveys, improving inference accuracy and guiding study design.
Findings
Quantifies effects of elevation and proximity to roads on species.
Identifies high biodiversity areas for conservation.
Validates low error rates in laboratory processing.
Abstract
DNA-based biodiversity surveys involve collecting physical samples from survey sites and assaying the contents in the laboratory to detect species via their diagnostic DNA sequences. DNA-based surveys are increasingly being adopted for biodiversity monitoring. The most commonly employed method is metabarcoding, which combines PCR with high-throughput DNA sequencing to amplify and then read `DNA barcode' sequences. This process generates count data indicating the number of times each DNA barcode was read. However, DNA-based data are noisy and error-prone, with several sources of variation. In this paper, we present a unifying modelling framework for DNA-based data allowing for all key sources of variation and error in the data-generating process. The model can estimate within-species biomass changes across sites and link those changes to environmental covariates, while accounting for…
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Taxonomy
TopicsEnvironmental DNA in Biodiversity Studies · Genomics and Phylogenetic Studies · Cancer Genomics and Diagnostics
