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Comparative Probabilistic Assessment of Occupational Pesticide Exposures Based on Regulatory Assessments

机译:基于法规评估的职业农药暴露的比较概率评估

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Implementation of probabilistic analyses in exposure assessment can provide valuable insight into the risks of those at the extremes of population distributions, including more vulnerable or sensitive subgroups. Incorporation of these analyses into current regulatory methods for occupational pesticide exposure is enabled by the exposure data sets and associated data currently used in the risk assessment approach of the Environmental Protection Agency (EPA). Monte Carlo simulations were performed on exposure measurements from the Agricultural Handler Exposure Database and the Pesticide Handler Exposure Database along with data from the Exposure Factors Handbook and other sources to calculate exposure rates for three different neurotoxic compounds (azinphos methyl, acetamiprid, emamectin benzoate) across four pesticide-handling scenarios. Probabilistic estimates of doses were compared with the no observable effect levels used in the EPA occupational risk assessments. Some percentage of workers were predicted to exceed the level of concern for all three compounds: 54% for azinphos methyl, 5% for acetamiprid, and 20% for emamectin benzoate. This finding has implications for pesticide risk assessment and offers an alternative procedure that may be more protective of those at the extremes of exposure than the current approach.
机译:在暴露评估中实施概率分析可以提供有价值的洞察力,以了解那些处于极端人口分布中的人群(包括更脆弱或敏感的亚组)所面临的风险。可以通过环境保护局(EPA)风险评估方法中目前使用的暴露数据集和相关数据,将这些分析纳入当前的职业农药暴露监管方法中。对来自农业操作者暴露数据库和农药操作者暴露数据库的暴露测量值以及来自《暴露因子手册》和其他来源的数据进行了蒙特卡罗模拟,以计算三种不同神经毒性化合物(阿嗪磷甲基,对乙酰氨基吡喃,苯甲酸氨甲环素)的暴露率四种农药处理方案。将剂量的概率估计值与EPA职业风险评估中使用的未观察到的影响水平进行了比较。预计一定比例的工人会超出所有三种化合物的关注水平:谷硫磷54%,乙酰胺和5%,苯甲酸埃莫菌素20%。这一发现对农药风险评估具有影响,并提供了一种替代方法,该方法可能比当前方法更能保护处于极端暴露条件下的农药。

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