Surrogate marker assessment using mediation and instrumental variable analyses in a case-cohort design

Yen-Tsung Huang, Jih-Chang Yu, Jui-Hsiang Lin
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Abstract

The identification of surrogate markers for gold standard outcomes in clinical trials enables future cost-effective trials that target the identified markers. Due to resource limitations, these surrogate markers may be collected only for cases and for a subset of the trial cohort, giving rise to what is termed the case-cohort design. Motivated by a COVID-19 vaccine trial, we propose methods of assessing the surrogate markers for a time-to-event outcome in a case-cohort design by using mediation and instrumental variable (IV) analyses. In the mediation analysis we decomposed the vaccine effect on COVID-19 risk into an indirect effect (the effect mediated through the surrogate marker such as neutralizing antibodies) and a direct effect (the effect not mediated by the marker), and we propose that the mediation proportions are surrogacy indices. In the IV analysis we aimed to quantify the causal effect of the surrogate marker on disease risk in the presence of surrogatedisease confounding which is unavoidable even in randomized trials. We employed weighted estimating equations derived from nonparametric maximum likelihood estimators (NPMLEs) under semiparametric probit models for the time-to-disease outcome. We plugged in the weighted NPMLEs to construct estimators for the aforementioned causal effects and surrogacy indices, and we determined the asymptotic properties of the proposed estimators. Finite sample performance was evaluated in numerical simulations. Applying the proposed mediation and IV analyses to a mock COVID-19 vaccine trial data, we found that 84.2% of the vaccine efficacy was mediated by 50% pseudovirus neutralizing antibody and that neutralizing antibodies had significant protective effects for COVID-19 risk.
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在病例队列设计中使用中介和工具变量分析的替代标记物评估
临床试验中金标准结果的替代标记物的鉴定使未来针对鉴定标记物的具有成本效益的试验成为可能。由于资源限制,这些替代标记可能只收集病例和试验队列的一个子集,从而产生所谓的病例队列设计。受一项COVID-19疫苗试验的启发,我们提出了在病例队列设计中使用中介和工具变量(IV)分析来评估事件发生时间结局的替代标志物的方法。在中介分析中,我们将疫苗对COVID-19风险的影响分解为间接影响(通过中和抗体等替代标志物介导的影响)和直接影响(不通过标志物介导的影响),并提出中介比例为替代指标。在IV分析中,我们旨在量化在存在替代疾病混淆的情况下替代标志物对疾病风险的因果影响,即使在随机试验中也不可避免。在半参数概率模型下,我们使用非参数最大似然估计(NPMLEs)衍生的加权估计方程来预测疾病发生时间。我们引入加权npmle来构造上述因果效应和替代指标的估计量,并确定了所提估计量的渐近性质。在数值模拟中对有限样本性能进行了评价。将提出的中介和IV分析应用于模拟COVID-19疫苗试验数据,我们发现疫苗效力的84.2%是由50%的假病毒中和抗体介导的,中和抗体对COVID-19风险具有显著的保护作用。
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