将协变量纳入替代悖论风险度量

Pub Date : 2023-03-01 Epub Date: 2023-02-17 DOI:10.3390/stats6010020
Fatema Shafie Khorassani, Jeremy M G Taylor, Niko Kaciroti, Michael R Elliott
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引用次数: 0

摘要

临床试验通常收集中间或替代终点,而不是他们真正感兴趣的终点。重要的是,对替代终点的治疗效果准确地预测了对真正终点的治疗效果。在某些情况下,建议的替代终点与真终点正相关,但治疗对替代终点和真终点的影响相反,这种现象被称为“替代悖论”。协变量信息可能有助于预测个体的替代悖论风险。在这项工作中,我们提出了使用元分析因果关联框架将协变量纳入评估代理悖论风险的措施的方法。测量方法计算治疗对替代终点和真终点产生相反影响的概率,并确定作为协变量函数的替代终点的积极治疗效应的大小,这将降低对真终点的负面治疗效应的风险,从而允许协变量对替代终点和真终点的影响在不同的试验中发生变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Incorporating Covariates into Measures of Surrogate Paradox Risk.

Clinical trials often collect intermediate or surrogate endpoints other than their true endpoint of interest. It is important that the treatment effect on the surrogate endpoint accurately predicts the treatment effect on the true endpoint. There are settings in which the proposed surrogate endpoint is positively correlated with the true endpoint, but the treatment has opposite effects on the surrogate and true endpoints, a phenomenon labeled "surrogate paradox". Covariate information may be useful in predicting an individual's risk of surrogate paradox. In this work, we propose methods for incorporating covariates into measures of assessing the risk of surrogate paradox using the meta-analytic causal association framework. The measures calculate the probability that a treatment will have opposite effects on the surrogate and true endpoints and determine the size of a positive treatment effect on the surrogate endpoint that would reduce the risk of a negative treatment effect on the true endpoint as a function of covariates, allowing the effects of covariates on the surrogate and true endpoint to vary across trials.

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