Schaubel Douglas E, Zhang Min
Department of Biostatistics, University of Michigan, 1420 Washington Hts, Ann Arbor, MI 48109-2029, USA.
Lifetime Data Anal. 2010 Oct;16(4):451-77. doi: 10.1007/s10985-009-9149-x. Epub 2010 Jan 10.
In biomedical studies where the event of interest is recurrent (e.g., hospitalization), it is often the case that the recurrent event sequence is subject to being stopped by a terminating event (e.g., death). In comparing treatment options, the marginal recurrent event mean is frequently of interest. One major complication in the recurrent/terminal event setting is that censoring times are not known for subjects observed to die, which renders standard risk set based methods of estimation inapplicable. We propose two semiparametric methods for estimating the difference or ratio of treatment-specific marginal mean numbers of events. The first method involves imputing unobserved censoring times, while the second methods uses inverse probability of censoring weighting. In each case, imbalances in the treatment-specific covariate distributions are adjusted out through inverse probability of treatment weighting. After the imputation and/or weighting, the treatment-specific means (then their difference or ratio) are estimated nonparametrically. Large-sample properties are derived for each of the proposed estimators, with finite sample properties assessed through simulation. The proposed methods are applied to kidney transplant data.
在生物医学研究中,若感兴趣的事件是复发性的(例如住院),那么复发性事件序列往往会因一个终止事件(例如死亡)而停止。在比较治疗方案时,边际复发事件均值常常是人们感兴趣的。复发/终止事件情形中的一个主要复杂之处在于,对于观察到死亡的受试者,删失时间是未知的,这使得基于标准风险集的估计方法无法适用。我们提出了两种半参数方法来估计特定治疗的边际事件均值的差异或比率。第一种方法涉及对未观察到的删失时间进行插补,而第二种方法使用删失加权的逆概率。在每种情况下,通过治疗加权的逆概率来调整特定治疗协变量分布中的不平衡。在插补和/或加权之后,对特定治疗的均值(然后是它们的差异或比率)进行非参数估计。为每个提出的估计量推导了大样本性质,并通过模拟评估了有限样本性质。所提出的方法应用于肾移植数据。