| Literature DB >> 15849739 |
M João Paulo1, Hilko van der Voet, Michiel J W Jansen, Cajo J F ter Braak, Jacob D van Klaveren.
Abstract
Risk assessment of pesticides can be a statistically difficult problem because pesticides occur only occasionally, but they may occur on multiple components in the diet. A Bayesian statistical model is presented which incorporates multivariate modelling of food consumption and modelling of pesticide measurements which are for a large part below a measurement threshold. It is shown that Bayesian modelling is feasible for a limited number of food components, and that in a data-rich situation the model compares well with an empirical Monte Carlo modelling. 2005 Society of Chemical IndustryMesh:
Substances:
Year: 2005 PMID: 15849739 DOI: 10.1002/ps.1060
Source DB: PubMed Journal: Pest Manag Sci ISSN: 1526-498X Impact factor: 4.845