Parast Layla, Griffin Beth Ann
RAND Corporation, 1776 Main Street, Santa Monica, CA, 90403, USA.
Lifetime Data Anal. 2017 Apr;23(2):161-182. doi: 10.1007/s10985-016-9358-z. Epub 2016 Feb 15.
Clinical studies aimed at identifying effective treatments to reduce the risk of disease or death often require long term follow-up of participants in order to observe a sufficient number of events to precisely estimate the treatment effect. In such studies, observing the outcome of interest during follow-up may be difficult and high rates of censoring may be observed which often leads to reduced power when applying straightforward statistical methods developed for time-to-event data. Alternative methods have been proposed to take advantage of auxiliary information that may potentially improve efficiency when estimating marginal survival and improve power when testing for a treatment effect. Recently, Parast et al. (J Am Stat Assoc 109(505):384-394, 2014) proposed a landmark estimation procedure for the estimation of survival and treatment effects in a randomized clinical trial setting and demonstrated that significant gains in efficiency and power could be obtained by incorporating intermediate event information as well as baseline covariates. However, the procedure requires the assumption that the potential outcomes for each individual under treatment and control are independent of treatment group assignment which is unlikely to hold in an observational study setting. In this paper we develop the landmark estimation procedure for use in an observational setting. In particular, we incorporate inverse probability of treatment weights (IPTW) in the landmark estimation procedure to account for selection bias on observed baseline (pretreatment) covariates. We demonstrate that consistent estimates of survival and treatment effects can be obtained by using IPTW and that there is improved efficiency by using auxiliary intermediate event and baseline information. We compare our proposed estimates to those obtained using the Kaplan-Meier estimator, the original landmark estimation procedure, and the IPTW Kaplan-Meier estimator. We illustrate our resulting reduction in bias and gains in efficiency through a simulation study and apply our procedure to an AIDS dataset to examine the effect of previous antiretroviral therapy on survival.
旨在确定有效治疗方法以降低疾病或死亡风险的临床研究通常需要对参与者进行长期随访,以便观察到足够数量的事件,从而精确估计治疗效果。在此类研究中,在随访期间观察感兴趣的结果可能很困难,并且可能会观察到高删失率,这在应用为事件发生时间数据开发的直接统计方法时,常常会导致检验效能降低。已经提出了替代方法,以利用辅助信息,这些信息在估计边际生存时可能会提高效率,并在检验治疗效果时提高效能。最近,帕拉斯特等人(《美国统计协会杂志》109(505):384 - 394,2014年)提出了一种标志性估计程序,用于在随机临床试验环境中估计生存和治疗效果,并证明通过纳入中间事件信息以及基线协变量,可以显著提高效率和效能。然而,该程序需要假设每个个体在治疗和对照下的潜在结果与治疗组分配无关,而这在观察性研究环境中不太可能成立。在本文中,我们开发了用于观察性环境的标志性估计程序。特别是,我们在标志性估计程序中纳入治疗权重的逆概率(IPTW),以考虑观察到的基线(治疗前)协变量上的选择偏倚。我们证明,通过使用IPTW可以获得生存和治疗效果的一致估计,并且使用辅助中间事件和基线信息可以提高效率。我们将我们提出的估计与使用卡普兰 - 迈耶估计器、原始标志性估计程序和IPTW卡普兰 - 迈耶估计器获得的估计进行比较。我们通过模拟研究说明了我们由此导致的偏差减少和效率提高,并将我们的程序应用于一个艾滋病数据集,以检验先前抗逆转录病毒疗法对生存的影响。