The Bennett Institute for Applied Data Science, Nuffield Department of Primary Care Health Sciences, University of Oxford, Oxford, United Kingdom (W.J.H., A.G., A.J.W., H.J.C., C.E.M., B.M., R.C., A.M., S.B., D.E., P.I., S.D., B.G.).
London School of Hygiene and Tropical Medicine, London, United Kingdom (E.W., H.I.M., K.B., A.S., C.T.R., L.T., I.J.D., S.J.W.E., L.S.).
Ann Intern Med. 2023 May;176(5):685-693. doi: 10.7326/M21-4269. Epub 2023 May 2.
The COVID-19 vaccines were developed and rigorously evaluated in randomized trials during 2020. However, important questions, such as the magnitude and duration of protection, their effectiveness against new virus variants, and the effectiveness of booster vaccination, could not be answered by randomized trials and have therefore been addressed in observational studies. Analyses of observational data can be biased because of confounding and because of inadequate design that does not consider the evolution of the pandemic over time and the rapid uptake of vaccination. Emulating a hypothetical "target trial" using observational data assembled during vaccine rollouts can help manage such potential sources of bias. This article describes 2 approaches to target trial emulation. In the sequential approach, on each day, eligible persons who have not yet been vaccinated are matched to a vaccinated person. The single-trial approach sets a single baseline at the start of the rollout and considers vaccination as a time-varying variable. The nature of the confounding depends on the analysis strategy: Estimating "per-protocol" effects (accounting for vaccination of initially unvaccinated persons after baseline) may require adjustment for both baseline and "time-varying" confounders. These issues are illustrated by using observational data from 2 780 931 persons in the United Kingdom aged 70 years or older to estimate the effect of a first dose of a COVID-19 vaccine. Addressing the issues discussed in this article should help authors of observational studies provide robust evidence to guide clinical and policy decisions.
2020 年期间,COVID-19 疫苗在随机试验中得到了开发和严格评估。然而,一些重要问题,如保护的程度和持续时间、它们对新病毒变体的有效性,以及加强针接种的有效性,无法通过随机试验来回答,因此已经在观察性研究中得到了探讨。由于混杂和设计不当,观察性数据的分析可能存在偏倚,这些设计没有考虑到随着时间的推移大流行的演变以及疫苗接种的快速普及。使用疫苗推出期间收集的观察性数据模拟假设的“目标试验”可以帮助管理这些潜在的偏倚来源。本文介绍了两种模拟目标试验的方法。在序贯方法中,在每天,尚未接种疫苗的合格人员与已接种疫苗的人员进行匹配。单次试验方法在推出开始时设定一个单一的基线,并将疫苗接种视为一个随时间变化的变量。混杂的性质取决于分析策略:估计“按方案”效果(考虑到基线后最初未接种者的疫苗接种)可能需要调整基线和“随时间变化”的混杂因素。这些问题通过使用来自英国 70 岁或以上的 2780931 人的观察性数据来估计 COVID-19 疫苗第一剂的效果来说明。解决本文讨论的问题应该有助于观察性研究的作者提供可靠的证据,以指导临床和政策决策。