Broekhuizen Henk, Groothuis-Oudshoorn Catharina G M, van Til Janine A, Hummel J Marjan, IJzerman Maarten J
Department of Health Technology and Services Research, MIRA Institute, University of Twente, PO Box 217, 7500 AE, Enschede, The Netherlands,
Pharmacoeconomics. 2015 May;33(5):445-55. doi: 10.1007/s40273-014-0251-x.
Multi-criteria decision analysis (MCDA) is increasingly used to support decisions in healthcare involving multiple and conflicting criteria. Although uncertainty is usually carefully addressed in health economic evaluations, whether and how the different sources of uncertainty are dealt with and with what methods in MCDA is less known. The objective of this study is to review how uncertainty can be explicitly taken into account in MCDA and to discuss which approach may be appropriate for healthcare decision makers. A literature review was conducted in the Scopus and PubMed databases. Two reviewers independently categorized studies according to research areas, the type of MCDA used, and the approach used to quantify uncertainty. Selected full text articles were read for methodological details. The search strategy identified 569 studies. The five approaches most identified were fuzzy set theory (45% of studies), probabilistic sensitivity analysis (15%), deterministic sensitivity analysis (31%), Bayesian framework (6%), and grey theory (3%). A large number of papers considered the analytic hierarchy process in combination with fuzzy set theory (31%). Only 3% of studies were published in healthcare-related journals. In conclusion, our review identified five different approaches to take uncertainty into account in MCDA. The deterministic approach is most likely sufficient for most healthcare policy decisions because of its low complexity and straightforward implementation. However, more complex approaches may be needed when multiple sources of uncertainty must be considered simultaneously.
多标准决策分析(MCDA)越来越多地用于支持涉及多个相互冲突标准的医疗保健决策。尽管在卫生经济评估中通常会仔细处理不确定性,但在MCDA中不同来源的不确定性是否以及如何得到处理以及采用何种方法却鲜为人知。本研究的目的是回顾如何在MCDA中明确考虑不确定性,并讨论哪种方法可能适合医疗保健决策者。在Scopus和PubMed数据库中进行了文献综述。两名评审员根据研究领域、所使用的MCDA类型以及用于量化不确定性的方法对研究进行了独立分类。阅读选定的全文文章以获取方法学细节。检索策略共识别出569项研究。最常被识别的五种方法是模糊集理论(占研究的45%)、概率敏感性分析(15%)、确定性敏感性分析(31%)、贝叶斯框架(6%)和灰色理论(3%)。大量论文将层次分析法与模糊集理论结合使用(31%)。只有3%的研究发表在与医疗保健相关的期刊上。总之,我们的综述确定了在MCDA中考虑不确定性的五种不同方法。由于其低复杂性和直接的实施方式,确定性方法对于大多数医疗保健政策决策来说很可能就足够了。然而,当必须同时考虑多个不确定性来源时,可能需要更复杂的方法。