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首页> 外文期刊>Journal of exposure science & environmental epidemiology >Evaluation and recommendation of sensitivity analysis methods for application to Stochastic Human Exposure and Dose Simulation models.
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Evaluation and recommendation of sensitivity analysis methods for application to Stochastic Human Exposure and Dose Simulation models.

机译:敏感性分析方法的评估和推荐,可用于随机人体暴露和剂量模拟模型。

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Sensitivity analyses of exposure or risk models can help identify the most significant factors to aid in risk management or to prioritize additional research to reduce uncertainty in the estimates. However, sensitivity analysis is challenged by non-linearity, interactions between inputs, and multiple days or time scales. Selected sensitivity analysis methods are evaluated with respect to their applicability to human exposure models with such features using a testbed. The testbed is a simplified version of a US Environmental Protection Agency's Stochastic Human Exposure and Dose Simulation (SHEDS) model. The methods evaluated include the Pearson and Spearman correlation, sample and rank regression, analysis of variance, Fourier amplitude sensitivity test (FAST), and Sobol's method. The first five methods are known as "sampling-based" techniques, wheras the latter two methods are known as "variance-based" techniques. The main objective of the test cases was to identify the main and total contributions ofindividual inputs to the output variance. Sobol's method and FAST directly quantified these measures of sensitivity. Results show that sensitivity of an input typically changed when evaluated under different time scales (e.g., daily versus monthly). All methods provided similar insights regarding less important inputs; however, Sobol's method and FAST provided more robust insights with respect to sensitivity of important inputs compared to the sampling-based techniques. Thus, the sampling-based methods can be used in a screening step to identify unimportant inputs, followed by application of more computationally intensive refined methods to a smaller set of inputs. The implications of time variation in sensitivity results for risk management are briefly discussed.
机译:暴露或风险模型的敏感性分析可以帮助确定最重要的因素,以帮助进行风险管理或对其他研究进行优先排序以减少估计中的不确定性。但是,灵敏度分析受到非线性,输入之间的相互作用以及多天或多天的时间尺度的挑战。使用测试台,针对其具有此类功能的人体暴露模型的适用性,评估了选定的敏感性分析方法。该试验台是美国环境保护局的随机人体暴露和剂量模拟(SHEDS)模型的简化版本。评估的方法包括Pearson和Spearman相关性,样本和秩回归,方差分析,傅立叶振幅灵敏度测试(FAST)和Sobol方法。前五种方法被称为“基于采样”的技术,后两种方法被称为“基于变异的”技术。测试用例的主要目的是确定单个输入对输出方差的主要贡献和总贡献。 Sobol的方法和FAST直接量化了这些敏感性度量。结果表明,在不同的时间范围内(例如每天与每月)进行评估时,输入的灵敏度通常会发生变化。对于不太重要的输入,所有方法都提供了相似的见解;但是,与基于采样的技术相比,Sobol的方法和FAST在重要输入的敏感性方面提供了更可靠的见解。因此,可以在筛选步骤中使用基于采样的方法来识别不重要的输入,然后将计算量更大的精炼方法应用于较小的一组输入。简要讨论了敏感性结果中时间变化对风险管理的影响。

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