Xu Ronghui, Luo Yunjun, Glynn Robert, Johnson Diana, Jones Kenneth L, Chambers Christina
Department of Family and Preventive Medicine, University of California, San Diego, 9500 Gilman Drive, MC 0112, La Jolla, CA 92093, USA.
Department of Pediatrics, University of California, San Diego, 9500 Gilman Drive, La Jolla, CA 92093, USA.
Int J Environ Res Public Health. 2014 Mar 12;11(3):3074-85. doi: 10.3390/ijerph110303074.
Women are advised to be vaccinated for influenza during pregnancy and may receive vaccine at any time during their pregnancy. In observational studies evaluating vaccine safety in pregnancy, to account for such time-varying vaccine exposure, a time-dependent predictor can be used in a proportional hazards model setting for outcomes such as spontaneous abortion or preterm delivery. Also, due to the observational nature of pregnancy exposure cohort studies and relatively low event rates, propensity score (PS) methods are often used to adjust for potential confounders. Using Monte Carlo simulation experiments, we compare two different ways to model the PS for vaccine exposure: (1) logistic regression treating the exposure status as binary yes or no; (2) Cox regression treating time to exposure as time-to-event. Coverage probability of the nominal 95% confidence interval for the exposure effect is used as the main measure of performance. The performance of the logistic regression PS depends largely on how the exposure data is generated. In contrast, the Cox regression PS consistently performs well across the different data generating mechanisms that we have considered. In addition, the Cox regression PS allows adjusting for potential time-varying confounders such as season of the year or exposure to additional vaccines. The application of the Cox regression PS is illustrated using data from a recent study of the safety of pandemic H1N1 influenza vaccine during pregnancy.
建议女性在孕期接种流感疫苗,且在孕期的任何时间都可以接种。在评估孕期疫苗安全性的观察性研究中,为了考虑这种随时间变化的疫苗暴露情况,可以在比例风险模型设置中使用时间依存预测变量来分析自然流产或早产等结局。此外,由于孕期暴露队列研究的观察性本质以及相对较低的事件发生率,倾向评分(PS)方法常被用于调整潜在的混杂因素。通过蒙特卡洛模拟实验,我们比较了两种对疫苗暴露的PS进行建模的不同方法:(1)将暴露状态视为“是”或“否”的二元变量进行逻辑回归;(2)将暴露时间视为事件发生时间进行Cox回归。暴露效应的名义95%置信区间的覆盖概率被用作主要的性能衡量指标。逻辑回归PS的性能在很大程度上取决于暴露数据的生成方式。相比之下,Cox回归PS在我们所考虑的不同数据生成机制下始终表现良好。此外,Cox回归PS允许调整潜在的随时间变化的混杂因素,如一年中的季节或额外疫苗的暴露情况。利用近期一项关于孕期大流行H1N1流感疫苗安全性研究的数据说明了Cox回归PS的应用。