Cooper Nicola J, Sutton Alex J, Abrams Keith R, Turner David, Wailoo Allan
Department of Epidemiology and Public Health, University of Leicester, UK.
Health Econ. 2004 Mar;13(3):203-26. doi: 10.1002/hec.804.
Decision analytical models are widely used in economic evaluation of health care interventions with the objective of generating valuable information to assist health policy decision-makers to allocate scarce health care resources efficiently. The whole decision modelling process can be summarised in four stages: (i) a systematic review of the relevant data (including meta-analyses), (ii) estimation of all inputs into the model (including effectiveness, transition probabilities and costs), (iii) sensitivity analysis for data and model specifications, and (iv) evaluation of the model. The aim of this paper is to demonstrate how the individual components of decision modelling, outlined above, may be addressed simultaneously in one coherent Bayesian model (sometimes known as a comprehensive decision analytical model) and evaluated using Markov Chain Monte Carlo simulation implemented in the specialist software WinBUGS. To illustrate the method described, it is applied to two illustrative examples: (1) The prophylactic use of neurominidase inhibitors for the prevention of influenza. (2) The use of taxanes for the second-line treatment of advanced breast cancer. The advantages of integrating the four stages outlined into one comprehensive decision analytical model, compared to the conventional 'two-stage' approach, are discussed.
决策分析模型广泛应用于医疗保健干预措施的经济评估,目的是生成有价值的信息,以帮助卫生政策决策者有效分配稀缺的医疗保健资源。整个决策建模过程可概括为四个阶段:(i)对相关数据进行系统综述(包括荟萃分析),(ii)估计模型的所有输入参数(包括有效性、转移概率和成本),(iii)对数据和模型规格进行敏感性分析,以及(iv)对模型进行评估。本文的目的是演示如何在一个连贯的贝叶斯模型(有时称为综合决策分析模型)中同时处理上述决策建模的各个组成部分,并使用专业软件WinBUGS中实现的马尔可夫链蒙特卡罗模拟进行评估。为说明所描述的方法,将其应用于两个示例:(1)神经氨酸酶抑制剂预防流感的预防性使用。(2)紫杉烷用于晚期乳腺癌二线治疗。与传统的“两阶段”方法相比,讨论了将上述四个阶段整合到一个综合决策分析模型中的优点。