Data from: A method that accounts for differential detectability in mixed samples of long-term infections with applications to the case of Chronic Wasting Disease in cervids ...

1. Surveillance of wildlife diseases is logistically difficult, and imperfect detection is a recurrent challenge for disease estimation. Using citizen science can increase sample sizes, but it is associated with a cost in terms of the anatomical type and quality of the sample. Additionally, biologic...

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Bibliographic Details
Main Authors: Viljugrein, Hildegunn, Hopp, Petter, Benestad, Sylvie L., Nilsen, Erlend B., Våge, Jørn, Tavornpanich, Saraya, Rolandsen, Christer M., Strand, Olav, Mysterud, Atle
Format: Dataset
Language:English
Published: Dryad 2019
Subjects:
Online Access:https://dx.doi.org/10.5061/dryad.q84p862
https://datadryad.org/stash/dataset/doi:10.5061/dryad.q84p862
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Summary:1. Surveillance of wildlife diseases is logistically difficult, and imperfect detection is a recurrent challenge for disease estimation. Using citizen science can increase sample sizes, but it is associated with a cost in terms of the anatomical type and quality of the sample. Additionally, biological tissue samples from remote areas lose quality due to autolysis. These challenges are faced in the case of emerging Chronic Wasting Disease (CWD) in cervids. 2. Here, we develop a stochastic scenario tree model of diagnostic sensitivity, allowing for a mixture of tissue sample types (lymph nodes and brain) and qualities while accounting for different detection probabilities during the CWD infection, lasting 2-3 years. We apply the diagnostic sensitivity in a Bayesian framework, enabling estimation of age-class-specific true prevalence, including the prevalence in latent, recently infected stages. We provide a simulation framework to estimate the sensitivity of the surveillance system (i.e., the probability of ... : datViljugrein_etal2018Data on tested reindeer for Nordfjella and Hardangervidda used in application 1 and/or 2Application2_PrDetectingDiseasescript for Application 2Functions_modelling_dSeFunctions for modelling diagnostic sensitivityModelling_dSeThe modelling of diagnostic sensitivity (dSE)NordfjellaPrevalenceModelApplication 1, Set up the bug-models used in Run_dhyper_CWDprevalence.RRun_dhyper_CWDprevalenceApplication 1, Estimating prevalence ...