Identification of pesticide mixtures and connection between combined exposure and diet

•Non-Negative Matrix Factorization is implemented to provide consumption systems and pesticide mixtures.•Six pesticides mixtures to which the French population is exposed are identified.•Dietary habits related to the exposure to the mixtures are provided.•Individuals with similar dietary habits and...

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Veröffentlicht in:Food and chemical toxicology 2013-09, Vol.59, p.191-198
Hauptverfasser: Béchaux, Camille, Zetlaoui, Mélanie, Tressou, Jessica, Leblanc, Jean-Charles, Héraud, Fanny, Crépet, Amélie
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Sprache:eng
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Zusammenfassung:•Non-Negative Matrix Factorization is implemented to provide consumption systems and pesticide mixtures.•Six pesticides mixtures to which the French population is exposed are identified.•Dietary habits related to the exposure to the mixtures are provided.•Individuals with similar dietary habits and exposure to the mixtures are defined. The identification of the major associations of pesticides to which the population is exposed is the first step for the risk assessment of mixtures. Moreover, the interpretation of the mixtures through the individuals’ diet and the characterization of potentially high-risk populations constitute a useful tool for risk management. This paper proposes a method based on Non-Negative Matrix Factorization which allows the identification of the major mixtures to which the French population is exposed and the connection between this exposure and the diet. Exposure data of the French population are provided by the Second French Total Diet Study. The NMF is implemented on consumption data to extract consumption systems which are combined with the residue levels to link dietary behavior with exposure to mixtures of pesticides. A clustering of the individuals is achieved in order to highlight clusters of individuals with similar exposure to pesticides/consumption habits. The model provides 6 main consumption systems, 6 associated mixtures of pesticides and the description of the population which is most exposed to each mixture. Two different ways to estimate the matrix providing the mixtures of pesticides to which the population is exposed are suggested. Their advantages in different contexts of risk assessment are discussed.
ISSN:0278-6915
1873-6351
DOI:10.1016/j.fct.2013.06.006