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Graphical models and Bayesian domains in risk modelling: Application in microbiological risk assessment

机译:风险建模中的图形模型和贝叶斯域:在微生物风险评估中的应用

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Quantitative microbiological risk assessment (QMRA) models are used to reflect knowledge about complex real-world scenarios for the propagation of microbiological hazards along the feed and food chain. The aim is to provide insight into interdependencies among model parameters, typically with an interest to characterise the effect of risk mitigation measures. A particular requirement is to achieve clarity about the reliability of conclusions from the model in the presence of uncertainty. To this end, Monte Carlo (MC) simulation modelling has become a standard in so-called probabilistic risk assessment. In this paper, we elaborate on the application of Bayesian computational statistics in the context of QMRA. It is useful to explore the analogy between MC modelling and Bayesian inference (BI). This pertains in particular to the procedures for deriving prior distributions for model parameters. We illustrate using a simple example that the inability to cope with feedback among model parameters is a major limitation of MC modelling. However, BI models can be easily integrated into MC modelling to overcome this limitation. We refer a BI submodel integrated into a MC model to as a "Bayes domain". We also demonstrate that an entire QMRA model can be formulated as Bayesian graphical model (BGM) and discuss the advantages of this approach. Finally, we show example graphs of MC, BI and BGM models, highlighting the similarities among the three approaches
机译:定量微生物风险评估(QMRA)模型用于反映有关复杂现实情况中有关饲料和食物链中微生物危害的传播的知识。目的是提供对模型参数之间的相互依赖性的见解,通常具有表征风险缓解措施效果的兴趣。一个特殊的要求是在存在不确定性的情况下,使模型结论的可靠性更加清晰。为此,蒙特卡洛(MC)模拟建模已成为所谓的概率风险评估的标准。在本文中,我们详细介绍了贝叶斯计算统计在QMRA中的应用。探索MC建模和贝叶斯推断(BI)之间的类比很有用。这尤其涉及用于推导模型参数的先验分布的过程。我们用一个简单的例子说明,无法应付模型参数之间的反馈是MC建模的主要限制。但是,BI模型可以轻松集成到MC建模中以克服此限制。我们将集成到MC模型中的BI子模型称为“贝叶斯域”。我们还演示了可以将整个QMRA模型公式化为贝叶斯图形模型(BGM),并讨论了这种方法的优点。最后,我们展示了MC,BI和BGM模型的示例图,突出了这三种方法之间的相似性

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