Peer-reviewed veterinary case report
Sample size calculations for Bayesian prediction of bovine viral-diarrhoea-virus infection in beef herds.
- Journal:
- Preventive veterinary medicine
- Year:
- 2004
- Authors:
- Huzurbazar, S et al.
- Affiliation:
- Department of Statistics · United States
Abstract
We used a Bayesian classification approach to predict the bovine viral-diarrhoea-virus infection status of a herd when the prevalence of persistently infected animals in such herds is very small (e.g. <1%). An example of the approach is presented using data on beef herds in Wyoming, USA. The approach uses past covariate information (serum-neutralization titres collected on animals in 16 herds) within a predictive model for classification of a future observable herd. Simulations to estimate misclassification probabilities for different misclassification costs and prevalences of infected herds can be used as a guide to the sample size needed for classification of a future herd.
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Search related cases →Original publication: https://pubmed.ncbi.nlm.nih.gov/15068888/