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Deriving input parameters for cost-effectiveness modeling: Taxonomy of data types and approaches to their statistical synthesis

机译:获得成本效益建模的输入参数:数据类型的分类和统计综合的方法

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Background: The evidence base informing economic evaluation models is rarely derived from a single source. Researchers are typically expected to identify and combine available data to inform the estimation of model parameters for a particular decision problem. The absence of clear guidelines on what data can be used and how to effectively synthesize this evidence base under different scenarios inevitably leads to different approaches being used by different modelers. Objectives: The aim of this article is to produce a taxonomy that can help modelers identify the most appropriate methods to use when synthesizing the available data for a given model parameter. Methods: This article developed a taxonomy based on possible scenarios faced by the analyst when dealing with the available evidence. While mainly focusing on clinical effectiveness parameters, this article also discusses strategies relevant to other key input parameters in any economic model (i.e., disease natural history, resource use/costs, and preferences). Results: The taxonomy categorizes the evidence base for health economic modeling according to whether 1) single or multiple data sources are available, 2) individual or aggregate data are available (or both), or 3) individual or multiple decision model parameters are to be estimated from the data. References to examples of the key methodological developments for each entry in the taxonomy together with citations to where such methods have been used in practice are provided throughout. Conclusions: The use of the taxonomy developed in this article hopes to improve the quality of the synthesis of evidence informing decision models by bringing to the attention of health economics modelers recent methodological developments in this field.
机译:背景:通知经济评估模型的证据基础很少来自单个来源。研究人员通常预期识别和组合可用数据,以便为特定决策问题估计模型参数。没有明确的指导方针可以使用哪些数据以及如何在不同的场景下有效地合成本证据基础,不可避免地导致不同的建模使用的不同方法。目标:本文的目的是生产一个分类系统,可以帮助建模者确定在合成给定模型参数的可用数据时使用的最合适的方法。方法:本文根据分析师在处理可用证据时,基于分析师面临的可能场景开发了分类法。虽然主要关注临床效果参数,但本文还讨论了与任何经济模型(即疾病自然历史,资源使用/成本和偏好)中的其他关键输入参数相关的策略。结果:分类系统根据1)单个或多个数据源是否可用,分类为健康经济建模的证据基础,2)个人或聚合数据可用(或两者),或3)个单个或多个决策模型参数从数据估计。在整个中提供对分类学中每个条目的关键方法显示的例子的示例。结论:利用本文发达的分类物,希望通过引发卫生经济建模者最近在这一领域的方法的方法的提请来提高证据综合证明决策模型的质量。

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