From the Department of Obstetrics, Gynecology, and Reproductive Sciences, Program on Reproductive Health and the Environment, School of Medicine, University of California, San Francisco, San Francisco, CA.
Division of Biostatistics, School of Public Health, University of California, Berkeley, CA.
Epidemiology. 2023 Jul 1;34(4):535-543. doi: 10.1097/EDE.0000000000001611. Epub 2023 Mar 16.
Two-way fixed effects methods have been used to estimate effects of policies adopted in different places over time, but they can provide misleading results when effects are heterogeneous or dynamic, and alternate methods have been proposed.
We compared methods for estimating the average treatment effect on the treated (ATT) under staggered adoption of policies, including two-way fixed effects, group-time ATT, cohort ATT, and target-trial approaches. We applied each method to assess the impact of Medicaid expansion on preterm birth using the National Center for Health Statistics' birth records. We compared each estimator's performance in a simulation parameterized to mimic the empirical example. We generated constant, heterogeneous, and dynamic effects and calculated bias, mean squared error, and confidence interval coverage of each estimator across 1000 iterations.
Two-way fixed effects estimated that Medicaid expansion increased the risk of preterm birth (risk difference [RD], 0.12; 95% CI = 0.02, 0.22), while the group-time ATT, cohort ATT, and target-trial approaches estimated protective or null effects (group-time RD, -0.16; 95% CI = -0.58, 0.26; cohort RD, -0.02; 95% CI = -0.46, 0.41; target trial RD, -0.16; 95% CI = -0.59, 0.26). In simulations, two-way fixed effects performed well when treatment effects were constant and less well under heterogeneous and dynamic effects.
We demonstrated why new approaches perform better than two-way fixed effects when treatment effects are heterogeneous or dynamic under a staggered policy adoption design, and created simulation and analysis code to promote understanding and wider use of these methods in the epidemiologic literature.
双向固定效应方法已被用于估计随着时间的推移在不同地点采取的政策的效果,但当效果存在异质性或动态性时,它们可能会提供误导性的结果,因此已经提出了替代方法。
我们比较了在政策交错采用情况下估计处理组平均治疗效果(ATT)的方法,包括双向固定效应、组时 ATT、队列 ATT 和目标试验方法。我们应用每种方法来评估医疗补助计划扩大对早产的影响,使用国家卫生统计中心的出生记录。我们在模拟中模拟了经验示例的参数,比较了每个估计器的性能。我们生成了常数、异质和动态效应,并在 1000 次迭代中计算了每个估计器的偏差、均方误差和置信区间覆盖率。
双向固定效应估计医疗补助计划扩大增加了早产的风险(风险差异 [RD],0.12;95%CI = 0.02,0.22),而组时 ATT、队列 ATT 和目标试验方法估计具有保护或无效的效果(组时 RD,-0.16;95%CI = -0.58,0.26;队列 RD,-0.02;95%CI = -0.46,0.41;目标试验 RD,-0.16;95%CI = -0.59,0.26)。在模拟中,当治疗效果为常数时,双向固定效应表现良好,而在异质和动态效果下表现不佳。
我们展示了为什么在交错政策采用设计下,当治疗效果存在异质性或动态性时,新方法比双向固定效应表现更好,并创建了模拟和分析代码,以促进这些方法在流行病学文献中的理解和更广泛应用。