Patil Sumeet R, Frey H Christopher
Department of Civil Construction and Environmental Engineering, North Carolina State University, Raleigh, NC 27695-7908, USA.
Risk Anal. 2004 Jun;24(3):573-85. doi: 10.1111/j.0272-4332.2004.00460.x.
Sensitivity analysis (SA) methods are a valuable tool for identifying critical control points (CCPs), which is one of the important steps in the hazard analysis and CCP approach that is used to ensure safe food. There are many SA methods used across various disciplines. Furthermore, food safety process risk models pose challenges because they often are highly nonlinear, contain thresholds, and have discrete inputs. Therefore, it is useful to compare and evaluate SA methods based upon applications to an example food safety risk model. Ten SA methods were applied to a draft Vibrio parahaemolyticus (Vp) risk assessment model developed by the Food and Drug Administration. The model was modified so that all inputs were independent. Rankings of key inputs from different methods were compared. Inputs such as water temperature, number of oysters per meal, and the distributional assumption for the unrefrigerated time were the most important inputs, whereas time on water, fraction of pathogenic Vp, and the distributional assumption for the weight of oysters were the least important inputs. Most of the methods gave a similar ranking of key inputs even though the methods differed in terms of being graphical, mathematical, or statistical, accounting for individual effects or joint effect of inputs, and being model dependent or model independent. A key recommendation is that methods be further compared by application on different and more complex food safety models. Model independent methods, such as ANOVA, mutual information index, and scatter plots, are expected to be more robust than others evaluated.
敏感性分析(SA)方法是识别关键控制点(CCP)的一种宝贵工具,而关键控制点是危害分析与关键控制点方法(用于确保食品安全的重要步骤之一)中的重要环节。不同学科使用多种SA方法。此外,食品安全过程风险模型带来了挑战,因为它们通常高度非线性,包含阈值且具有离散输入。因此,基于应用于示例食品安全风险模型来比较和评估SA方法是有用的。将十种SA方法应用于美国食品药品监督管理局开发的副溶血性弧菌(Vp)风险评估模型草案。对该模型进行了修改,以便所有输入都是独立的。比较了不同方法对关键输入的排名。诸如水温、每餐牡蛎数量以及未冷藏时间的分布假设等输入是最重要的输入,而在水中的时间、致病性Vp的比例以及牡蛎重量的分布假设则是最不重要的输入。即使这些方法在图形、数学或统计方面、考虑输入的个体效应或联合效应以及依赖模型或独立于模型方面存在差异,但大多数方法对关键输入的排名相似。一个关键建议是,通过应用于不同且更复杂的食品安全模型来进一步比较这些方法。预计诸如方差分析、互信息指数和散点图等独立于模型的方法比所评估的其他方法更稳健。