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Expected utility versus expected regret theory versions of decision curve analysis do generate different results when treatment effects are taken into account

机译:预期的实用程序与预期遗憾理论版本的决策曲线分析确实在考虑治疗效果时会产生不同的结果

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Abstract Rationale, aims, and objectives Decision curve analysis (DCA) is a widely used method for evaluating diagnostic tests and predictive models. It was developed based on expected utility theory (EUT) and has been reformulated using expected regret theory (ERG). Under certain circumstances, these 2 formulations yield different results. Here we describe these situations and explain the variation. Methods We compare the derivations of the EUT‐ and ERG‐based formulations of DCA for a typical medical decision problem: “treat none,” “treat all,” or “use model” to guide treatment. We illustrate the differences between the 2 formulations when applied to the following clinical question: at which probability of death we should refer a terminally ill patient to hospice? Results Both DCA formulations yielded identical but mirrored results when treatment effects are ignored; they generated significantly different results otherwise. Treatment effect has a significant effect on the results derived by EUT DCA and less so on ERG DCA. The elicitation of specific values for disutilities affected the results even more significantly in the context of EUT DCA, whereas no such elicitation was required within the ERG framework. Conclusion EUT and ERG DCA generate different results when treatment effects are taken into account. The magnitude of the difference depends on the effect of treatment and the disutilities associated with disease and treatment effects. This is important to realize as the current practice guidelines are uniformly based on EUT; the same recommendations can significantly differ if they are derived based on ERG framework.
机译:摘要基本原理,目标和目标决策曲线分析(DCA)是一种广泛使用的方法,用于评估诊断测试和预测模型。它是基于预期的实用理论(EUT)开发的,并使用预期的遗憾理论(ERG)进行重新制定。在某些情况下,这2种制剂产生了不同的结果。在这里,我们描述了这些情况并解释了变化。方法我们比较DCA基于EUT和ERG的配方的推导,典型的医学决策问题:“无处不在”,“处理全部”或“使用模型”来指导治疗。我们说明了在适用于以下临床问题时的2种制剂之间的差异:死亡概率我们应该将终端病人称为临终关怀结果DCA配方均产生相同但在忽略治疗效果时,镜像结果;它们否则产生显着不同的结果。治疗效果对EUT DCA的结果具有显着影响,并且在ERG DCA上较少。在EUT DCA的背景下,患者特定价值的诱导在EUT DCA的背景下更有程度地影响了结果,而在ERG框架内没有要求这种诱导。结论EUT和ERG DCA在考虑治疗效果时产生不同的结果。差异的幅度取决于治疗的影响和与疾病相关的疾病和治疗效果。这对于实现目前的实践指南统一地基于EUT;如果基于ERG框架导出,则相同的建议可能会显着不同。

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