Affiliation: | a Department of Animal Health, Danish Institute of Agricultural and Welfare Sciences, Research Center for the Management of Animal Production and Health, Research Center Foulum, P.O. Box 50, DK 8830, Tjele, Denmark b Danish Institute of Agricultural Sciences, Biometry Unit, Research Center Foulum, P.O. Box 50, 8830, Tjele, Denmark c Department of Population Medicine and Diagnostic Sciences, Cornell University, Ithaca, New York, NY 14853, USA |
Abstract: | In veterinary practice the clinician often evaluates and predicts herd health status over time according to clinical criteria. In this paper, we modeled three different clinical signs among pigs based on longitudinal clinical observations in 15 pig herds. We compared and discussed the outputs from two different approaches for making clinical forecasts in a herd: a naive approach using a simple time series model with previous disease observations as predictors and a Bayesian state space models approach, in which the time lag variable entered into the random component of the model. We used the Markov chain Monte Carlo technique to calculate posterior distributions of the forecasts. For the herd specific forecasts the results showed that there were only minor differences between the forecasts from the simple time series model and the median forecasts from the Bayesian model. However, the credibility intervals from the Bayesian model were wider than the forecasts from the simple model and, therefore the Bayesian model encompassed the variability in the forecasts better. Compared to the statistical model, the simple time series would be easier to implement in a practical setting. However, the latter lacks the inherent “generality” from the statistical model that allows the user to make statements about the distribution of the herds and to predict disease status based on the “average” correlation among the herds. The applicability of the Bayesian approach within a clinical decision-making framework was discussed, with special emphasis on the use of prior information and clinical forecasting. |