Integrating eDNA and acoustic-trawl data to provide small pelagic biomass estimates for fisheries assessment

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This paper presents a Bayesian joint modeling approach that integrates environmental DNA (eDNA) measurements with acoustic-trawl transect data to estimate fish biomass for fisheries assessment. Using 209 eDNA water samples and 196 acoustic transects, the authors apply the model to European anchovy in the Bay of Biscay, finding biomass and distribution estimates consistent with known spatial patterns, while the eDNA component indicates a broader distribution and potentially higher abundance. The main caveat emphasized is that practical methods for integrating eDNA into fisheries assessment have been limited, so the work focuses on demonstrating a specific integrative modeling framework rather than evaluating performance across many species or settings. The paper does not explicitly discuss endometriosis or adenomyosis; it was included in the corpus via a keyword match in the upstream search index.

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Abstract

Accurate abundance estimates of fisheries resources are essential for sustainable fisheries management. In response to the growing need for developing more accurate and cost-effective biomass estimation methods, the analysis of environmental DNA (eDNA) has recently emerged as an alternative for fish abundance quantification. However, practical approaches for integrating eDNA data into fisheries assessment remain limited. Here, we introduce a Bayesian joint model that combines acoustic-trawl and eDNA data to estimate fish biomass. Utilizing 209 water eDNA samples and 196 acoustic transects, the model was applied to estimate the distribution and abundance of the European anchovy (Engraulis encrasicolus) in the Bay of Biscay. The joint model produced estimates consistent with known spatial patterns of anchovy, with eDNA data suggesting a broader distribution and potentially higher abundance. This research demonstrates the value of incorporating eDNA data as a complement to acoustic-trawl for stock assessment and illustrates the versatility of joint Bayesian models and their potential application to various species and datasets. Ultimately, our work opens new avenues for more holistic fisheries assessment, underscoring the growing role of eDNA in that context
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Abstract Accurate abundance estimates of fisheries resources are essential for sustainable fisheries management. In response to the growing need for developing more accurate and cost-effective biomass estimation methods, the analysis of environmental DNA (eDNA) has recently emerged as an alternative for fish abundance quantification. However, practical approaches for integrating eDNA data into fisheries assessment remain limited. Here, we introduce a Bayesian joint model that combines acoustic-trawl and eDNA data to estimate fish biomass. Utilizing 209 water eDNA samples and 196 acoustic transects, the model was applied to estimate the distribution and abundance of the European anchovy (Engraulis encrasicolus) in the Bay of Biscay. The joint model produced estimates consistent with known spatial patterns of anchovy, with eDNA data suggesting a broader distribution and potentially higher abundance. This research demonstrates the value of incorporating eDNA data as a complement to acoustic-trawl for stock assessment and illustrates the versatility of joint Bayesian models and their potential application to various species and datasets. Ultimately, our work opens new avenues for more holistic fisheries assessment, underscoring the growing role of eDNA in that context. Competing Interest Statement The authors have declared no competing interest.

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last seen: 2026-05-20T01:45:00.602351+00:00