Despite the importance of vaccine efficacy against post-infection outcomes like transmission or severe illness, these estimands are unidentifiable, even under strong assumptions that are rarely satisfied in real-world trials. We develop a novel method to nonparametrically point identify these principal effects while eliminating the monotonicity assumption and allowing for measurement error. Furthermore, our results allow for multiple treatments, and are general enough to be applicable outside of vaccine efficacy. Our method relies on the fact that many vaccine trials are run across geographically disparate sites, and measure biologically-relevant categorical pretreatment covariates. We show that our method can be applied to a variety of clinical trial settings where vaccine efficacy against infection and a post-infection outcome can be jointly inferred. This can yield new insights from existing vaccine efficacy trial data and will aid researchers in designing new multi-arm clinical trials.
翻译:尽管疫苗对传染或严重疾病等感染后结果的功效十分重要,但这些估计值是无法辨别的,即便在现实世界试验中很少满足的强烈假设下也是如此。我们开发了一种非对称点的新方法,在消除单一性假设的同时确定这些主要效果,并允许测量错误。此外,我们的结果允许多种治疗,而且很笼统,足以在疫苗功效之外适用。我们的方法依据的事实是,许多疫苗试验在地理上不同的地点进行,并测量与生物有关的绝对预处理共变。我们表明,我们的方法可以应用于各种临床试验环境,在这种环境中可以共同推断疫苗对感染的功效和感染后的结果。这可以从现有的疫苗功效试验数据中得出新的见解,并将帮助研究人员设计新的多武器临床试验。