Bayesian model for tracing Salmonella contamination in the pig feed chain

Food Microbiol. 2018 May:71:82-92. doi: 10.1016/j.fm.2017.04.017. Epub 2017 May 31.

Abstract

Salmonella infections in pigs are in most cases asymptomatic, posing a risk of salmonellosis for pork consumers. Salmonella can transmit to pigs from various sources, including contaminated feed. We present an approach for quantifying the risk to pigs from contaminations in the feed chain, based on a Bayesian model. The model relies on Salmonella surveillance data and other information from surveys, reports, registries, statistics, legislation and literature regarding feed production and pig farming. Uncertainties were probabilistically quantified by synthesizing evidence from the available information over a categorically structured flow chain of ingredients mixed for feeds served to pigs. Model based probability for infection from feeds together with Salmonella subtyping data, were used to estimate the proportion of Salmonella infections in pigs attributable to feed. The results can be further used in assessments considering the human health risk linked to animal feed via livestock. The presented methods can be used to predict the effect of changes in the feed chain, and they are generally applicable to other animals and pathogens.

MeSH terms

  • Animal Feed / analysis
  • Animal Feed / microbiology*
  • Animals
  • Bayes Theorem
  • Food Contamination / analysis*
  • Salmonella Infections, Animal / microbiology*
  • Salmonella Infections, Animal / transmission
  • Swine
  • Swine Diseases / microbiology*
  • Swine Diseases / transmission