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统计分析农药数据程序食品残留观测技术。

Statistical Techniques to Analyze Pesticide Data Program Food Residue Observations.

机构信息

Operator and Consumer Safety , Syngenta Crop Protection, LLC , Greensboro , North Carolina 27419 , United States.

出版信息

J Agric Food Chem. 2018 Jul 11;66(27):7165-7171. doi: 10.1021/acs.jafc.8b00863. Epub 2018 Jun 26.

Abstract

The U.S. EPA conducts dietary-risk assessments to ensure that levels of pesticides on food in the U.S. food supply are safe. Often these assessments utilize conservative residue estimates, maximum residue levels (MRLs), and a high-end estimate derived from registrant-generated field-trial data sets. A more realistic estimate of consumers' pesticide exposure from food may be obtained by utilizing residues from food-monitoring programs, such as the Pesticide Data Program (PDP) of the U.S. Department of Agriculture. A substantial portion of food-residue concentrations in PDP monitoring programs are below the limits of detection (left-censored), which makes the comparison of regulatory-field-trial and PDP residue levels difficult. In this paper, we present a novel adaption of established statistical techniques, the Kaplan-Meier estimator (K-M), the robust regression on ordered statistic (ROS), and the maximum-likelihood estimator (MLE), to quantify the pesticide-residue concentrations in the presence of heavily censored data sets. The examined statistical approaches include the most commonly used parametric and nonparametric methods for handling left-censored data that have been used in the fields of medical and environmental sciences. This work presents a case study in which data of thiamethoxam residue on bell pepper generated from registrant field trials were compared with PDP-monitoring residue values. The results from the statistical techniques were evaluated and compared with commonly used simple substitution methods for the determination of summary statistics. It was found that the maximum-likelihood estimator (MLE) is the most appropriate statistical method to analyze this residue data set. Using the MLE technique, the data analyses showed that the median and mean PDP bell pepper residue levels were approximately 19 and 7 times lower, respectively, than the corresponding statistics of the field-trial residues.

摘要

美国环保署(EPA)进行饮食风险评估,以确保美国食品供应中食品上的农药残留水平安全。通常,这些评估利用保守的残留估计值、最大残留限量(MRL)以及从注册机构生成的田间试验数据集得出的高端估计值。通过利用如美国农业部的农药数据计划(PDP)等食品监测计划中的残留数据,可以更准确地估计消费者从食物中摄入的农药。PDP 监测计划中的大量食品残留浓度低于检测限(左删失),这使得监管田间试验和 PDP 残留水平的比较变得困难。在本文中,我们提出了一种新颖的方法,即采用已建立的统计技术,如 Kaplan-Meier 估计器(K-M)、有序统计的稳健回归(ROS)和最大似然估计器(MLE),来量化存在大量删失数据的农药残留浓度。所检查的统计方法包括在医学和环境科学领域中常用的处理左删失数据的参数和非参数方法。这项工作提出了一个案例研究,比较了噻虫嗪在甜椒上的残留数据来自注册机构田间试验和 PDP 监测残留值。评估了统计技术的结果,并与常用的简单替代方法进行了比较,以确定摘要统计数据。结果表明,最大似然估计器(MLE)是分析该残留数据集的最合适的统计方法。使用 MLE 技术,数据分析表明,PDP 甜椒残留的中位数和平均值分别比田间试验残留的相应统计值低约 19 倍和 7 倍。

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