# A stage-structured Bayesian hierarchical model for salmon lice   populations at individual salmon farms - Estimated from multiple farm data   sets

**Authors:** Magne Aldrin, Ragnar Bang Huseby, Audun Stien, Randi Nygaard, Gr{\o}ntvedt, Hildegunn Viljugrein, Peder Andreas Jansen

arXiv: 1701.08043 · 2018-08-22

## TL;DR

This paper introduces a Bayesian hierarchical model for salmon louse populations at individual salmon farms, integrating complex biological and environmental factors to improve understanding and control strategies in aquaculture.

## Contribution

It presents a novel, fully mechanistic stage-structured population model estimated from multi-farm data using Bayesian methods, capturing key dynamics of salmon lice in large-scale farming.

## Key findings

- Model fits observed infection levels well
- Predictions align with data not used in fitting
- Highlights factors influencing lice transmission and control

## Abstract

Salmon farming has become a prosperous international industry over the last decades. Along with growth in the production farmed salmon, however, an increasing threat by pathogens has emerged. Of special concern is the propagation and spread of the salmon louse, Lepeophtheirus salmonis. In order to gain insight into this parasites population dynamics in large scale salmon farming system, we present a fully mechanistic stage-structured population model for the salmon louse, also allowing for complexities involved in the hierarchical structure of full scale salmon farming. The model estimates parameters controlling a wide range of processes, including temperature dependent demographic rates, fish size and abundance effects on louse transmission rates, effects sizes of various salmon louse control measures, and distance based between farm transmission rates. Model parameters were estimated from data including 32 salmon farms, except the last production months for five farms which were used to evaluate model predictions. We used a Bayesian estimation approach, combining the prior distributions and the data likelihood into a joint posterior distribution for all model parameters. The model generated expected values that fitted the observed infection levels of the chalimus, adult female and other mobile stages of salmon lice, reasonably well. Predictions for the time periods not used for fitting the model were also consistent with the observational data. We argue that the present model for the population dynamics of the salmon louse in aquaculture farm systems may contribute to resolve the complexity of processes that drive that drive this host-parasite relationship, and hence may improve strategies to control the parasite in this production system.

## Full text

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## Figures

8 figures with captions in the complete paper: https://tomesphere.com/paper/1701.08043/full.md

## References

40 references — full list in the complete paper: https://tomesphere.com/paper/1701.08043/full.md

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Source: https://tomesphere.com/paper/1701.08043