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http://dx.doi.org/10.7585/kjps.2013.17.2.117

Probabilistic Exposure Assessment of Pesticide Residues in Agricultural Products in Gyeonggi-do  

Do, Young-Sook (Health Research & Planning Team, Gyeonggi-do Institute of Health & Environment)
Kim, Jung-Boem (Health Research & Planning Team, Gyeonggi-do Institute of Health & Environment)
Kang, Suk-Ho (Health Research & Planning Team, Gyeonggi-do Institute of Health & Environment)
Kim, Nan-Young (Health Research & Planning Team, Gyeonggi-do Institute of Health & Environment)
Eom, Mi-Na (Health Research & Planning Team, Gyeonggi-do Institute of Health & Environment)
Yoon, Mi-Hye (Health Research & Planning Team, Gyeonggi-do Institute of Health & Environment)
Publication Information
The Korean Journal of Pesticide Science / v.17, no.2, 2013 , pp. 117-125 More about this Journal
Abstract
A probabilistic exposure assessment was performed on the monitoring data of pesticides were assessed in agricultural products in Gyeonggi-do from 2006 to 2010. Chlorothalonil, chlorpyrifos, dicofol, endosulfan, EPN, ethoprophos, fenitrothion, methidathion, phenthoate and tebupirimfos were assessed. For this assessment, we used Monte Carlo simulation software and the distribution of concentration and intake were assumed to lognormal distribution by inputting mean and standard deviation. The hazard index (HI, %ADI) of average value and the $95^{th}$ percentile based on a probabilistic method were usually lower than those by a deterministic one. For the whole population, when non-detects data were assigned 0 mg/kg, HI of the average value and the $95^{th}$ percentile showed 0.05~0.70% and 0.11~1.94%, respectively. When nondetects data were assigned 0.005 mg/kg, HI of the average value and the $95^{th}$ percentile were 0.41~4.42% and 0.98~13.81%. For only consumers, when non-detects data were assigned 0 mg/kg, HI of the average value and the $95^{th}$ percentile were 1.24~10.16% and 3.72~33.81%, respectively. When non-detects data were assigned 0.005 mg/kg, HI of the average value and the $95^{th}$ percentile were 3.43~18.26% and 9.45~54.99%, respectively. Methidathion had highest values when both of 0 and 0.005 were assigned to non-detecs data for consumers only. This study showed that agricultural products in Gyeonggi-do were safe because they had less than 100 of HI (%ADI) based on probabilistic exposure assessment.
Keywords
Lognormal distribution; Pesticide residues; Probabilistic exposure assessment;
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