Díaz Iván, Hoffman Katherine L, Hejazi Nima S
Division of Biostatistics, Department of Population Health, New York University Grossman School of Medicine, New York, NY, 10016, USA.
Department of Epidemiology, Mailman School of Public Health, Columbia University, New York, NY, 10032, USA.
Lifetime Data Anal. 2024 Jan;30(1):213-236. doi: 10.1007/s10985-023-09606-7. Epub 2023 Aug 24.
Longitudinal modified treatment policies (LMTP) have been recently developed as a novel method to define and estimate causal parameters that depend on the natural value of treatment. LMTPs represent an important advancement in causal inference for longitudinal studies as they allow the non-parametric definition and estimation of the joint effect of multiple categorical, ordinal, or continuous treatments measured at several time points. We extend the LMTP methodology to problems in which the outcome is a time-to-event variable subject to a competing event that precludes observation of the event of interest. We present identification results and non-parametric locally efficient estimators that use flexible data-adaptive regression techniques to alleviate model misspecification bias, while retaining important asymptotic properties such as [Formula: see text]-consistency. We present an application to the estimation of the effect of the time-to-intubation on acute kidney injury amongst COVID-19 hospitalized patients, where death by other causes is taken to be the competing event.
纵向修正治疗策略(LMTP)最近已被开发出来,作为一种定义和估计依赖于治疗自然值的因果参数的新方法。LMTP是纵向研究因果推断的一项重要进展,因为它们允许对在多个时间点测量的多个分类、有序或连续治疗的联合效应进行非参数定义和估计。我们将LMTP方法扩展到这样的问题,即结局是一个受竞争事件影响的事件发生时间变量,该竞争事件会妨碍对感兴趣事件的观察。我们给出了识别结果和非参数局部有效估计量,这些估计量使用灵活的数据自适应回归技术来减轻模型误设偏差,同时保留诸如[公式:见正文]-一致性等重要的渐近性质。我们展示了一个应用,即估计COVID-19住院患者中气管插管时间对急性肾损伤的影响,其中其他原因导致的死亡被视为竞争事件。