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Predictive Modeling and Categorizing Likelihoods of Quarantine Pest Introduction of Imported Propagative Commodities from Different Countries

机译:有害生物的预测建模和分类可能性从不同国家进口的进口商品的引进

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摘要

The present study investigates U.S. Department of Agriculture inspection records in the Agricultural Quarantine Activity System database to estimate the probability of quarantine pests on propagative plant materials imported from various countries of origin and to develop a methodology ranking the risk of country-commodity combinations based on quarantine pest interceptions. Data collected from October 2014 to January 2016 were used for developing predictive models and validation study. A generalized linear model with Bayesian inference and a generalized linear mixed effects model were used to compare the interception rates of quarantine pests on different country-commodity combinations. Prediction ability of generalized linear mixed effects models was greater than that of generalized linear models. The estimated pest interception probability and confidence interval for each country-commodity combination was categorized into one of four compliance levels: "High," "Medium," "Low," and "Poor/Unacceptable," Using K-means clustering analysis. This study presents risk-based categorization for each country-commodity combination based on the probability of quarantine pest interceptions and the uncertainty in that assessment.
机译:本研究调查了美国农业部农业检疫活动系统数据库中的检查记录,以估计从原产国进口的繁殖植物材料上检疫性有害生物的可能性,并开发一种基于检疫对国家/商品组合风险进行分级的方法害虫拦截。 2014年10月至2016年1月收集的数据用于开发预测模型和验证研究。利用贝叶斯推断的广义线性模型和广义线性混合效应模型比较了不同国家/地区商品组合中检疫性有害生物的截获率。广义线性混合效应模型的预测能力要强于广义线性模型。每个国家/商品组合的估计有害生物拦截概率和置信区间被归类为四个遵从级别之一:“高”,“中”,“低”和“差/不可接受”使用K均值聚类分析。这项研究根据检疫性有害生物拦截的可能性和评估中的不确定性,对每种国家/商品组合提出了基于风险的分类。

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