The Institute for Health Research, Kaiser Permanente Colorado, Denver, CO, USA.
Stat Med. 2013 Aug 30;32(19):3290-9. doi: 10.1002/sim.5733. Epub 2013 Jan 10.
In the examination of the association between vaccines and rare adverse events after vaccination in postlicensure observational studies, it is challenging to define appropriate risk windows because prelicensure RCTs provide little insight on the timing of specific adverse events. Past vaccine safety studies have often used prespecified risk windows based on prior publications, biological understanding of the vaccine, and expert opinion. Recently, a data-driven approach was developed to identify appropriate risk windows for vaccine safety studies that use the self-controlled case series design. This approach employs both the maximum incidence rate ratio and the linear relation between the estimated incidence rate ratio and the inverse of average person time at risk, given a specified risk window. In this paper, we present a scan statistic that can identify appropriate risk windows in vaccine safety studies using the self-controlled case series design while taking into account the dependence of time intervals within an individual and while adjusting for time-varying covariates such as age and seasonality. This approach uses the maximum likelihood ratio test based on fixed-effects models, which has been used for analyzing data from self-controlled case series design in addition to conditional Poisson models.
在疫苗上市后观察性研究中检查疫苗与接种后罕见不良事件之间的关联时,由于上市前 RCT 几乎无法提供关于特定不良事件发生时间的信息,因此很难定义适当的风险窗口。过去的疫苗安全研究通常基于先前的出版物、对疫苗的生物学理解和专家意见,使用预先指定的风险窗口。最近,开发了一种数据驱动的方法来为使用自我对照病例系列设计的疫苗安全研究确定适当的风险窗口。该方法既使用最大发病率比值,也使用给定风险窗口下估计的发病率比值与平均个人风险时间倒数之间的线性关系。在本文中,我们提出了一种扫描统计量,可以在考虑个体内部时间间隔的依赖性的同时,为使用自我对照病例系列设计的疫苗安全研究确定适当的风险窗口,同时调整年龄和季节性等随时间变化的协变量。该方法使用基于固定效应模型的最大似然比检验,除了条件泊松模型外,该检验还用于分析自我对照病例系列设计的数据。