Establishment of non-parametric probabilistic model for evaluation of Chinese dietary exposure.
- Author:
Jin-fang SUN
1
;
Pei LIU
;
Bing-wei CHEN
;
Qi-guang CHEN
;
Xiao-jin YU
;
Can-nan WANG
;
Jing-xin LI
Author Information
- Publication Type:Journal Article
- MeSH: China; Consumer Product Safety; Diet Surveys; Humans; Models, Statistical; Risk Assessment; Statistics, Nonparametric
- From: Chinese Journal of Preventive Medicine 2010;44(3):195-199
- CountryChina
- Language:Chinese
-
Abstract:
OBJECTIVETo establish a non-parametric probabilistic model for evaluation of Chinese dietary exposure and to improve the assessment accuracy while integrating into the global risk assessment on food safety.
METHODSContamination data was from the national food contamination monitoring program during 2000 - 2006, including heavy metals, pesticides and mycotoxins, amounting to 135 contaminants with 499 commodities and 487 819 samples. Food consumption data was obtained from the national diet and nutrition survey conducted in 2002 with three consecutive days by 24-hour recall method, and 66 172 consumers were included. Monte Carlo simulation was applied to derive the intake distribution, and the uncertainty of each percentile was estimated using the Bootstrap sampling.
RESULTSDifferent non-parametric probabilistic models for dietary exposure evaluation on heavy metals, pesticides and some of the toxins were established for Chinese people, and intake distributions with 95% confidence intervals of these contaminants were estimated. Taking acephate as an example, the results of its model shows that, for the 7 - 10 year-old children, the median dietary exposure in urban and rural areas were 1.77 microg x kg(-1) x d(-1) and 2.48 microg x kg(-1) x d(-1) respectively, with a 95% confidence interval of (1.59 - 2.06) microg x kg(-1) x d(-1) and (2.33 - 2.80) microg x kg(-1) x d(-1) respectively.
CONCLUSIONThe non-parametric probabilistic model can quantify the variability and uncertainty of exposure assessment and improve the assessment accuracy.