首页> 外文期刊>Journal of food protection >Application of classification and regression trees for sensitivity analysis of the Escherichia coli O157:H7 food safety process risk model.
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Application of classification and regression trees for sensitivity analysis of the Escherichia coli O157:H7 food safety process risk model.

机译:分类树和回归树在大肠杆菌O157:H7食品安全过程风险模型敏感性分析中的应用。

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Microbial food safety process risk models are simplifications of the real world that help risk managers in their efforts to mitigate food safety risks. An important tool in these risk assessment endeavors is sensitivity analysis, a systematic method used to quantify the effect of changes in input variables on model outputs. In this study, a novel sensitivity analysis method called classification and regression trees was applied to safety risk assessment with the use of portions of the Slaughter Module and Preparation Module of the E. coli O157:H7 microbial food safety process risk as an example. Specifically, the classification and regression trees sensitivity analysis method was evaluated on the basis of its ability to address typical characteristics of microbial food safety process risk models such as nonlinearities, interaction, thresholds, and categorical inputs. Moreover, this method was evaluated with respect to identification of high exposure scenarios and corresponding key inputs and critical limits. The results from the classification and regression trees analysis applied to the Slaughter Module confirmed that the process of chilling carcasses is a critical control point. The method identified a cutoff value of a 2.2-log increase in the number of organisms during chilling as a critical value above which high levels of contamination would be expected. When classification and regression trees analysis was applied to the cooking effects part of the Preparation Module, cooking temperature was found to be the most sensitive input, with precooking treatment (i.e., raw product storage conditions) ranked second in importance. This case study demonstrates the capabilities of classification and regression trees analysis as an alternative to other statistically based sensitivity analysis methods, and one that can readily address specific characteristics that are common in microbial food safety process risk models.
机译:微生物食品安全过程风险模型是对现实世界的简化,可帮助风险管理人员减轻食品安全风险。这些风险评估工作中的重要工具是敏感性分析,这是一种用于量化输入变量变化对模型输出的影响的系统方法。在这项研究中,以大肠杆菌O157:H7微生物食品安全过程风险的屠宰模块和制备模块的一部分为例,将一种称为分类树和回归树的新型敏感性分析方法应用于安全风险评估。具体来说,基于分类树和回归树敏感性分析方法能够解决微生物食品安全过程风险模型的典型特征(如非线性,相互作用,阈值和分类输入)的能力,对其进行了评估。此外,还针对识别高暴露场景以及相应的关键输入和关键限制对这种方法进行了评估。应用于屠宰模块的分类树和回归树分析的结果证实,冷藏car体是关键的控制点。该方法将冷藏期间生物数量增加的临界值提高了2.2个对数,将其作为临界值,超过该临界值,预计会出现高水平的污染。将分类树和回归树分析应用于制备模块的烹饪效果部分时,发现烹饪温度是最敏感的输入,预烹饪处理(即原始产品的存储条件)的重要性排名第二。此案例研究证明了分类树和回归树分析的功能,可以替代其他基于统计的敏感性分析方法,并且可以轻松解决微生物食品安全过程风险模型中常见的特定特征。

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