Dahabreh Issa J, Wong John B, Trikalinos Thomas A
a Center for Evidence Synthesis in Health, School of Public Health , Brown University , Providence , RI , USA.
b Department of Health Services, Policy & Practice, School of Public Health , Brown University , Providence , RI , USA.
Expert Rev Pharmacoecon Outcomes Res. 2017 Feb;17(1):27-37. doi: 10.1080/14737167.2017.1277143.
Mathematical models that attempt to capture structural relationships between their components and combine information from multiple sources are increasingly used in medicine. Areas covered: We provide an overview of methods for model validation and calibration and survey studies comparing alternative approaches. Expert commentary: Model validation entails a confrontation of models with data, background knowledge, and other models, and can inform judgments about model credibility. Calibration involves selecting parameter values to improve the agreement of model outputs with data. When the goal of modeling is quantitative inference on the effects of interventions or forecasting, calibration can be viewed as estimation. This view clarifies issues related to parameter identifiability and facilitates formal model validation and the examination of consistency among different sources of information. In contrast, when the goal of modeling is the generation of qualitative insights about the modeled phenomenon, calibration is a rather informal process for selecting inputs that result in model behavior that roughly reproduces select aspects of the modeled phenomenon and cannot be equated to an estimation procedure. Current empirical research on validation and calibration methods consists primarily of methodological appraisals or case-studies of alternative techniques and cannot address the numerous complex and multifaceted methodological decisions that modelers must make. Further research is needed on different approaches for developing and validating complex models that combine evidence from multiple sources.
试图捕捉各组成部分之间的结构关系并整合来自多个来源信息的数学模型在医学中的应用越来越广泛。涵盖领域:我们概述了模型验证和校准的方法,并调查了比较替代方法的研究。专家评论:模型验证需要将模型与数据、背景知识及其他模型进行对比,从而为判断模型可信度提供依据。校准涉及选择参数值以提高模型输出与数据的一致性。当建模目标是对干预效果进行定量推断或预测时,校准可被视为估计。这种观点澄清了与参数可识别性相关的问题,并有助于进行正式的模型验证以及检验不同信息来源之间的一致性。相比之下,当建模目标是对建模现象产生定性见解时,校准是一个相当非正式的过程,用于选择能使模型行为大致再现建模现象某些选定方面的输入,且不能等同于估计程序。当前关于验证和校准方法的实证研究主要包括对替代技术的方法评估或案例研究,无法解决建模者必须做出的众多复杂且多方面的方法决策。需要进一步研究开发和验证整合多源证据的复杂模型的不同方法。