Limozin Juliette M, Seaman Shaun R, Su Li
MRC Biostatistics Unit, University of Cambridge, Cambridge, England, UK.
Stat Methods Med Res. 2025 Jul 9:9622802251356594. doi: 10.1177/09622802251356594.
Sequential trial emulation (STE) is an approach to estimating causal treatment effects by emulating a sequence of target trials from observational data. In STE, inverse probability weighting is commonly utilised to address time-varying confounding and/or dependent censoring. Then structural models for potential outcomes are applied to the weighted data to estimate treatment effects. For inference, the simple sandwich variance estimator is popular but conservative, while nonparametric bootstrap is computationally expensive, and a more efficient alternative, linearised estimating function (LEF) bootstrap, has not been adapted to STE. We evaluated the performance of various methods for constructing confidence intervals (CIs) of marginal risk differences in STE with survival outcomes by comparing the coverage of CIs based on nonparametric/LEF bootstrap, jackknife, and the sandwich variance estimator through simulations. LEF bootstrap CIs demonstrated better coverage than nonparametric bootstrap CIs and sandwich-variance-estimator-based CIs with small/moderate sample sizes, low event rates and low treatment prevalence, which were the motivating scenarios for STE. They were less affected by treatment group imbalance and faster to compute than nonparametric bootstrap CIs. With large sample sizes and medium/high event rates, the sandwich-variance-estimator-based CIs had the best coverage and were the fastest to compute. These findings offer guidance in constructing CIs in causal survival analysis using STE.
序贯试验模拟(STE)是一种通过从观察性数据中模拟一系列目标试验来估计因果治疗效果的方法。在STE中,通常使用逆概率加权来处理随时间变化的混杂因素和/或依存性截尾。然后将潜在结果的结构模型应用于加权数据以估计治疗效果。对于推断,简单的三明治方差估计器很流行但较为保守,而非参数自助法计算成本高昂,并且一种更有效的替代方法——线性化估计函数(LEF)自助法尚未应用于STE。我们通过模拟比较基于非参数/LEF自助法、刀切法和三明治方差估计器的置信区间(CI)覆盖范围,评估了STE中用于构建生存结局边际风险差异CI的各种方法的性能。在小/中等样本量、低事件发生率和低治疗患病率的情况下(这些是STE的激发场景),LEF自助法CI的覆盖范围优于非参数自助法CI和基于三明治方差估计器的CI。它们受治疗组不平衡的影响较小,并且计算速度比非参数自助法CI更快。在大样本量和中等/高事件发生率时,基于三明治方差估计器的CI具有最佳的覆盖范围且计算速度最快。这些发现为使用STE进行因果生存分析时构建CI提供了指导。