This tutorial discusses a recently developed methodology for causal inference based on longitudinal modified treatment policies (LMTPs). LMTPs generalize many commonly used parameters for causal inference including average treatment effects, and facilitate the mathematical formalization, identification, and estimation of many novel parameters. LMTPs apply to a wide variety of exposures, including binary, multivariate, and continuous, as well as interventions that result in violations of the positivity assumption. LMTPs can accommodate time-varying treatments and confounders, competing risks, loss-to-follow-up, as well as survival, binary, or continuous outcomes. This tutorial aims to illustrate several practical uses of the LMTP framework, including describing different estimation strategies and their corresponding advantages and disadvantages. We provide numerous examples of types of research questions which can be answered within the proposed framework. We go into more depth with one of these examples -- specifically, estimating the effect of delaying intubation on critically ill COVID-19 patients' mortality. We demonstrate the use of the open source R package lmtp to estimate the effects, and we provide code on https://github.com/kathoffman/lmtp-tutorial.
翻译:本教程讨论了基于纵向修正治疗政策(LMTP)的因果推断方法。LMTP概括了许多常用的因果推断参数,包括平均治疗效应,并有助于许多新颖参数的数学形式化,识别和估计。LMTP适用于各种暴露,包括二元,多元和连续变量,以及导致违反平衡假设的干预措施。LMTP可以适应时间变化的治疗和混淆因子,竞争风险,失访,以及生存,二元或连续结果。本教程旨在说明LMTP框架的几个实际用途,包括描述不同的估计策略及其相应的优缺点。我们提供了许多类型的研究问题的示例,可以在所提供的框架中回答这些问题。我们深入探讨了其中之一的例子——具体而言,延迟插管对危重病COVID-19患者死亡率的影响。我们演示了使用开源的R软件包lmtp来估计影响,并在 https://github.com/kathoffman/lmtp-tutorial 提供了代码。