Background: Randomized controlled trials are often used to inform policy and practice for broad populations. The average treatment effect (ATE) for a target population, however, may be different from the ATE observed in a trial if there are effect modifiers whose distribution in the target population is different that from that in the trial. Methods exist to use trial data to estimate the target population ATE, provided the distributions of treatment effect modifiers are observed in both the trial and target population -- an assumption that may not hold in practice. Methods: The proposed sensitivity analyses address the situation where a treatment effect modifier is observed in the trial but not the target population. These methods are based on an outcome model or the combination of such a model and weighting adjustment for observed differences between the trial sample and target population. They accommodate several types of outcome models: linear models (including single time outcome and pre- and post-treatment outcomes) for additive effects, and models with log or logit link for multiplicative effects. We clarify the methods' assumptions and provide detailed implementation instructions. Illustration: We illustrate the methods using an example generalizing the effects of an HIV treatment regimen from a randomized trial to a relevant target population. Conclusion: These methods allow researchers and decision-makers to have more appropriate confidence when drawing conclusions about target population effects.
翻译:· 方法:拟议的灵敏度分析处理试验中观察到治疗效果改变剂但目标人口没有观察到治疗效果改变剂的情况。这些方法基于结果模型或这种模型和加权调整相结合,以观察试验抽样和目标人口之间的观察到的差异。 这些方法包含几种结果模型:累积效应线型模型(包括单一时间结果和治疗前和治疗后结果),以及具有倍增效应的日志或逻辑联系的模型。 我们澄清了方法假设,并提供了详细的执行指示。