Tsiatis Anastasios A, Davidian Marie, Cao Weihua
Department of Statistics, North Carolina State University, Raleigh, North Carolina 27695-8203, USA.
Biometrics. 2011 Jun;67(2):536-45. doi: 10.1111/j.1541-0420.2010.01476.x. Epub 2010 Aug 19.
A routine challenge is that of making inference on parameters in a statistical model of interest from longitudinal data subject to dropout, which are a special case of the more general setting of monotonely coarsened data. Considerable recent attention has focused on doubly robust (DR) estimators, which in this context involve positing models for both the missingness (more generally, coarsening) mechanism and aspects of the distribution of the full data, that have the appealing property of yielding consistent inferences if only one of these models is correctly specified. DR estimators have been criticized for potentially disastrous performance when both of these models are even only mildly misspecified. We propose a DR estimator applicable in general monotone coarsening problems that achieves comparable or improved performance relative to existing DR methods, which we demonstrate via simulation studies and by application to data from an AIDS clinical trial.
一个常见的挑战是,根据存在失访情况的纵向数据,对感兴趣的统计模型中的参数进行推断,而这些数据是单调粗化数据这一更一般情况的特殊示例。最近,相当多的注意力集中在双稳健(DR)估计量上,在此背景下,它涉及为缺失机制(更一般地说是粗化机制)和完整数据分布的各个方面设定模型,具有这样一个吸引人的特性:如果这些模型中只有一个被正确设定,就能得出一致的推断。当这两个模型哪怕只是稍有错误设定时,DR估计量就会因其潜在的灾难性表现而受到批评。我们提出了一种适用于一般单调粗化问题的DR估计量,相对于现有的DR方法,它能实现相当或更好的性能,我们通过模拟研究以及对一项艾滋病临床试验数据的应用来证明这一点。