Yang Tao, Huang Ying, Fong Youyi
Vaccine and Infectious Disease Division, Fred Hutchinson Cancer Research Center, Seattle, Washington 98109, U.S.A.
Biometrika. 2021 Dec;108(4):829-843. doi: 10.1093/biomet/asaa100. Epub 2020 Dec 10.
We consider the use of threshold-based regression models for evaluating immune response biomarkers as principal surrogate markers of a vaccine's protective effect. Threshold-based regression models, which allow the relationship between a clinical outcome and a covariate to change dramatically across a threshold value in the covariate, have been studied by various authors under fully observed data. Limited research, however, has examined these models in the presence of missing covariates, such as the counterfactual potential immune responses of a participant in the placebo arm of a standard vaccine trial had s/he been assigned to the vaccine arm instead. Based on a hinge model for a threshold effect of the principal surrogate on vaccine efficacy, we develop a regression methodology that consists of two components: (1) The estimated likelihood method is employed to handle missing potential outcomes, and (2) a penalty is imposed on the estimated likelihood to ensure satisfactory finite sample performance. We develop a method that allows joint estimation of all model parameters as well as a two-step method that separates the estimation of the threshold parameter from the rest of the parameters. Stable iterative algorithms are developed to implement the two methods and the asymptotic properties of the proposed estimators are established. In simulation studies, the proposed estimators are shown to have satisfactory finite sample performance. The proposed methods are applied to analyze a real dataset collected from dengue vaccine efficacy trials to predict how vaccine efficacy varies with an individual's potential immune response if receiving vaccine.
我们考虑使用基于阈值的回归模型来评估免疫反应生物标志物,将其作为疫苗保护效果的主要替代标志物。基于阈值的回归模型允许临床结局与协变量之间的关系在协变量的阈值处发生显著变化,已有多位作者在完全观测数据的情况下对其进行了研究。然而,在存在缺失协变量的情况下,对这些模型的研究较少,例如在标准疫苗试验的安慰剂组中,如果一名参与者被分配到疫苗组,其潜在的免疫反应是反事实的。基于主要替代标志物对疫苗效力的阈值效应的铰链模型,我们开发了一种回归方法,该方法由两个部分组成:(1)采用估计似然法处理缺失的潜在结局,(2)对估计似然施加惩罚以确保令人满意的有限样本性能。我们开发了一种允许联合估计所有模型参数的方法以及一种将阈值参数估计与其他参数估计分开的两步法。开发了稳定的迭代算法来实现这两种方法,并建立了所提出估计量的渐近性质。在模拟研究中,所提出的估计量显示出具有令人满意的有限样本性能。所提出的方法被应用于分析从登革热疫苗效力试验中收集的真实数据集,以预测如果个体接受疫苗,疫苗效力如何随其潜在免疫反应而变化。