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Probabilistic Modeling of Dietary Arsenic Exposure and Dose and Evaluation with 2003–2004 NHANES Data

Authors :
Shi V. Liu
Panos G. Georgopoulos
Sheng Wei Wang
Jianping Xue
Valerie Zartarian
Source :
Environmental Health Perspectives
Publication Year :
2009
Publisher :
National Institute of Environmental Health Sciences, 2009.

Abstract

Background Dietary exposure from food to toxic inorganic arsenic (iAs) in the general U.S. population has not been well studied. Objectives The goal of this research was to quantify dietary As exposure and analyze the major contributors to total As (tAs) and iAs. Another objective was to compare model predictions with observed data. Methods Probabilistic exposure modeling for dietary As was conducted with the Stochastic Human Exposure and Dose Simulation–Dietary (SHEDS-Dietary) model, based on data from the National Health and Nutrition Examination Survey. The dose modeling was conducted by combining the SHEDS-Dietary model with the MENTOR-3P (Modeling ENvironment for TOtal Risk with Physiologically Based Pharmacokinetic Modeling for Populations) system. Model evaluation was conducted via comparing exposure and dose-modeling predictions against duplicate diet data and biomarker measurements, respectively, for the same individuals. Results The mean modeled tAs exposure from food is 0.38 μg/kg/day, which is approximately 14 times higher than the mean As exposures from the drinking water. The mean iAs exposure from food is 0.05 μg/kg/day (1.96 μg/day), which is approximately two times higher than the mean iAs exposures from the drinking water. The modeled exposure and dose estimates matched well with the duplicate diet data and measured As biomarkers. The major food contributors to iAs exposure were the following: vegetables (24%); fruit juices and fruits (18%); rice (17%); beer and wine (12%); and flour, corn, and wheat (11%). Approximately 10% of tAs exposure from foods is the toxic iAs form. Conclusions The general U.S. population may be exposed to tAs and iAs more from eating some foods than from drinking water. In addition, this model evaluation effort provides more confidence in the exposure assessment tools used.

Details

Language :
English
ISSN :
15529924 and 00916765
Volume :
118
Issue :
3
Database :
OpenAIRE
Journal :
Environmental Health Perspectives
Accession number :
edsair.doi.dedup.....fcbce70f373b78aa54743245700aa30d