Simulation models of epidemiological, biological, ecological, and environmental processes are increasingly being calibrated using Bayesian statistics. The Bayesian approach provides simple rules to synthesise multiple data sources and to calculate uncertainty in model output due to uncertainty in the calibration data. As the number of tutorials and studies published grow, the solutions to common difficulties in Bayesian calibration across these fields have become more apparent, and a step-by-step process for successful calibration across all these fields is emerging. We provide a statement of the key steps in a Bayesian calibration, and we outline analyses and approaches to each step that have emerged from one or more of these applied sciences. Thus we present a synthesis of Bayesian calibration methodologies that cut across a number of scientific disciplines. To demonstrate these steps and to provide further detail on the computations involved in Bayesian calibration, we calibrated a compartmental model of tobacco smoking behaviour in Australia. We found that the proportion of a birth cohort estimated to take up smoking before they reach age 20 years in 2016 was at its lowest value since the early 20th century, and that quit rates were at their highest. As a novel outcome, we quantified the rate that ex-smokers switched to reporting as a 'never smoker' when surveyed later in life; a phenomenon that, to our knowledge, has never been quantified using cross-sectional survey data.
翻译:利用贝叶斯统计,正在越来越多地对流行病学、生物、生态和环境过程的模拟模型进行校准。贝叶西亚方法为综合多种数据源和计算模型输出因校准数据不确定性而出现的不确定性提供了简单的规则。随着教学材料和所发表的研究数量的增加,解决拜叶斯校准在这些领域中的共同困难的方法变得更加明显,并且正在逐步在所有这些领域进行成功的校准。我们提供了关于巴伊西亚校准的关键步骤的说明,我们概述了从这些应用科学中出现的每一步的分析和方法。因此,我们综合了拜伊西亚校准方法,这些方法跨越了科学学科的不确定性。为了展示这些步骤和进一步详细说明了拜伊西亚校准中涉及的计算方法,我们调整了澳大利亚烟草吸烟行为的一个分包模型。我们发现,2016年出生组在达到20岁之前估计吸烟的比例是最低的,20世纪初时戒烟率是最高的,因此,我们用新式的数据转换为历史数据,后来,我们用新式的数据转换为历史数据测量结果,我们用新式数据转换为历史。