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Cost-effectiveness analysis using data from multinational trials: the use of bivariate hierarchical modeling.

机译:使用来自跨国公司试验的数据进行成本效益分析:使用双变量层次模型。

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Health care cost-effectiveness analysis (CEA) often uses individual patient data (IPD) from multinational randomized controlled trials. Although designed to account for between-patient sampling variability in the clinical and economic data, standard analytical approaches to CEA ignore the presence of between-location variability in the study results. This is a restrictive limitation given that countries often differ in factors that could affect the results of CEAs, such as the availability of health care resources, their unit costs, clinical practice, and patient case mix. The authors advocate the use of Bayesian bivariate hierarchical modeling to analyze multinational cost-effectiveness data. This analytical framework explicitly recognizes that patient-level costs and outcomes are nested within countries. Using real-life data, the authors illustrate how the proposed methods can be applied to obtain (a) more appropriate estimates of overall cost-effectiveness and associated measure of sampling uncertainty compared to standard CEA and (b) country-specific cost-effectiveness estimates that can be used to assess the between-location variability of the study results while controlling for differences in country-specific and patient-specific characteristics. It is demonstrated that results from standard CEA using IPD from multinational trials display a large degree of variability across the 17 countries included in the analysis, producing potentially misleading results. In contrast, "shrinkage estimates'' obtained from the modeling approach proposed here facilitate the appropriate quantification of country-specific cost-effectiveness estimates while weighting the results based on the level of information available within each country. The authors suggest that the methods presented here represent a general framework for the analysis of economic data collected from different locations.
机译:卫生保健成本效益分析(CEA)通常使用来自跨国随机对照试验的单个患者数据(IPD)。尽管旨在考虑临床和经济数据中患者之间的样本变异性,但是CEA的标准分析方法忽略了研究结果中位置之间变异性的存在。这是一个限制性限制,因为各国通常会在影响CEA结果的因素上有所差异,例如医疗资源的可获得性,其单位成本,临床实践以及患者病例组合。作者主张使用贝叶斯二元层次模型来分析跨国公司的成本效益数据。该分析框架明确认识到,患者水平的成本和结果嵌套在国家内部。作者利用现实生活中的数据说明了如何使用拟议的方法来获得(a)与标准CEA相比更合适的总体成本效益估算和抽样不确定性的相关度量,以及(b)针对特定国家的成本效益估算可用于评估研究结果的位置间差异,同时控制特定国家/地区和患者特定特征的差异。结果表明,使用来自跨国试验的IPD的标准CEA结果在分析中所涉及的17个国家/地区显示出很大的差异性,可能会产生误导性的结果。相反,从此处提出的建模方法获得的“收缩估算”有助于对特定国家的成本效益估算进行适当的量化,同时根据每个国家内部可用的信息水平对结果进行加权。代表分析从不同位置收集的经济数据的一般框架。

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