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Methods for Handling Unobserved Covariates in a Bayesian Update of a Cost-effectiveness Model

机译:在成本效益模型的贝叶斯更新中处理未观察的协变量的方法

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Health economic decision models often involve a wide-ranging and complicated synthesis of evidence from a number of sources, making design and implementation of such models resource-heavy. When new data become available and reassessment of treatment recommendations is warranted, it may be more efficient to perform a Bayesian update of an existing model than to construct a new model. If the existing model depends on many, possibly correlated, covariates, then an update may produce biased estimates of model parameters if some of these covariates are completely absent from the new data. Motivated by the need to update a cost-effectiveness analysis comparing diagnostic strategies for coronary heart disease, this study develops methods to overcome this obstacle by either introducing additional data or using results from previous studies. We outline a framework to handle unobserved covariates, and use our motivating example to illustrate both the flexibility of the proposed methods and some potential difficulties in applying them.
机译:卫生经济决策模型往往涉及来自许多来源的广泛和复杂的综合证据,使得这些模型的设计和实施资源重。当新数据变得可用并保证治疗建议的重新评估时,执行现有模型的贝叶斯更新可能更有效,而不是构建一个新模型。如果现有模型取决于许多,可能相关的协变量,则如果这些协变量中的一些完全没有从新数据中完全不存在,则更新可能会产生模型参数的偏置估计。有必要更新成本效益分析,比较冠心病的诊断策略,这项研究通过引入额外数据或使用先前研究的结果来制定克服这个障碍的方法。我们概述了一个框架来处理未观察到的协变量,并使用我们的激励例子来说明所提出的方法的灵活性以及在应用它们时的一些潜在困难。

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