Blommestein Hedwig M, Franken Margreet G, Uyl-de Groot Carin A
Department of Health Policy and Management, institute for Medical Technology Assessment, Erasmus University, P.O. Box 1738, 3000 DR, Rotterdam, The Netherlands.
Pharmacoeconomics. 2015 Jun;33(6):551-60. doi: 10.1007/s40273-015-0260-4.
Decision makers increasingly request evidence on the real-world cost effectiveness of a new treatment. There is, however, a lack of practical guidance on how to conduct an economic evaluation based on registry data and how this evidence can be used in actual decision making. This paper explains the required steps on how to perform a sound economic evaluation using examples from an economic evaluation conducted with real-world data from the Dutch Population based HAematological Registry for Observational Studies. There are three main issues related to using registry data: confounding by indication, missing data, and insufficient numbers of (comparable) patients. If encountered, it is crucial to accurately deal with these issues to maximize the internal validity and generalizability of the outcomes and their value to decision makers. Multivariate regression modeling, propensity score matching, and data synthesis are well-established methods to deal with confounding. Multiple imputation methods should be used in cases where data are missing at random. Furthermore, it is important to base the incremental cost-effectiveness ratio of a new treatment compared with its alternative on comparable groups of (matched) patients, even if matching results in a small analytical population. Unmatched real-world data provide insights into the costs and effects of a treatment in a real-world setting. Decision makers should realize that real-world evidence provides extremely valuable and relevant policy information, but needs to be assessed differently compared with evidence derived from a randomized clinical trial.
决策者越来越多地要求提供有关新疗法实际成本效益的证据。然而,对于如何基于登记数据进行经济评估以及如何将该证据用于实际决策,缺乏实用的指导。本文以荷兰基于人群的血液学观察性登记研究的真实世界数据进行的一项经济评估为例,解释了进行合理经济评估所需的步骤。使用登记数据存在三个主要问题:指征混杂、数据缺失以及(可比较的)患者数量不足。如果遇到这些问题,准确处理这些问题对于最大化结果的内部有效性、普遍性及其对决策者的价值至关重要。多变量回归建模、倾向得分匹配和数据合成是处理混杂的成熟方法。在数据随机缺失的情况下应使用多重插补方法。此外,即使匹配导致分析人群较小,将新疗法与其替代疗法的增量成本效益比基于(匹配的)可比患者组也是很重要的。未匹配的真实世界数据提供了对真实世界中一种治疗的成本和效果的见解。决策者应认识到,真实世界证据提供了极其有价值且相关的政策信息,但与来自随机临床试验的证据相比,需要进行不同的评估。