Centre for Statistics in Medicine, Nuffield Department of Orthopaedics, Rheumatology and Musculoskeletal Sciences, University of Oxford, Oxford, UK.
Department of Medical Informatics, Erasmus University Medical Center, Rotterdam, The Netherlands.
Int J Epidemiol. 2024 Feb 1;53(1). doi: 10.1093/ije/dyad138.
There are scarce data on best practices to control for confounding in observational studies assessing vaccine effectiveness to prevent COVID-19. We compared the performance of three well-established methods [overlap weighting, inverse probability treatment weighting and propensity score (PS) matching] to minimize confounding when comparing vaccinated and unvaccinated people. Subsequently, we conducted a target trial emulation to study the ability of these methods to replicate COVID-19 vaccine trials.
We included all individuals aged ≥75 from primary care records from the UK [Clinical Practice Research Datalink (CPRD) AURUM], who were not infected with or vaccinated against SARS-CoV-2 as of 4 January 2021. Vaccination status was then defined based on first COVID-19 vaccine dose exposure between 4 January 2021 and 28 January 2021. Lasso regression was used to calculate PS. Location, age, prior observation time, regional vaccination rates, testing effort and COVID-19 incidence rates at index date were forced into the PS. Following PS weighting and matching, the three methods were compared for remaining covariate imbalance and residual confounding. Last, a target trial emulation comparing COVID-19 at 3 and 12 weeks after first vaccine dose vs unvaccinated was conducted.
Vaccinated and unvaccinated cohorts comprised 583 813 and 332 315 individuals for weighting, respectively, and 459 000 individuals in the matched cohorts. Overlap weighting performed best in terms of minimizing confounding and systematic error. Overlap weighting successfully replicated estimates from clinical trials for vaccine effectiveness for ChAdOx1 (57%) and BNT162b2 (75%) at 12 weeks.
Overlap weighting performed best in our setting. Our results based on overlap weighting replicate previous pivotal trials for the two first COVID-19 vaccines approved in Europe.
针对评估 COVID-19 疫苗有效性的观察性研究中如何控制混杂因素,目前相关最佳实践数据较为匮乏。我们比较了三种成熟方法(重叠加权法、逆概率治疗加权法和倾向评分匹配法)在比较疫苗接种者和未接种者时控制混杂因素的效果。随后,我们进行了一项目标试验模拟,以研究这些方法在复制 COVID-19 疫苗试验方面的能力。
我们纳入了英国初级保健记录中的所有年龄≥75 岁的个体(CPRD AURUM),截至 2021 年 1 月 4 日,这些个体均未感染 SARS-CoV-2 或接种过 SARS-CoV-2 疫苗。随后,根据 2021 年 1 月 4 日至 2021 年 1 月 28 日首次接种 COVID-19 疫苗的情况来定义疫苗接种状态。使用套索回归计算倾向评分。位置、年龄、前期观察时间、区域疫苗接种率、检测力度和指数日期的 COVID-19 发病率被强制纳入倾向评分。在进行倾向评分加权和匹配后,比较了三种方法在剩余协变量不平衡和残余混杂方面的效果。最后,我们进行了一项目标试验模拟,比较了首次接种疫苗后 3 周和 12 周的 COVID-19 与未接种疫苗的情况。
在加权分析中,接种疫苗和未接种疫苗的队列分别包含 583813 人和 332315 人,在匹配队列中则各包含 459000 人。重叠加权在最小化混杂因素和系统误差方面表现最佳。重叠加权成功复制了欧洲批准的两种 COVID-19 疫苗的临床试验估计结果,对于 ChAdOx1(57%)和 BNT162b2(75%),其疫苗有效性在 12 周时的估计结果可复制。
在我们的研究环境中,重叠加权表现最佳。我们基于重叠加权的结果复制了欧洲批准的两种 COVID-19 疫苗的前期关键试验。