Daniel Rhian M, Tsiatis Anastasios A
Department of Medical Statistics and Centre for Statistical Methodology, London School of Hygiene and Tropical Medicine, London, WC1E 7HT, UK,
Lifetime Data Anal. 2013 Oct;19(4):513-46. doi: 10.1007/s10985-013-9261-9. Epub 2013 May 31.
Two common features of clinical trials, and other longitudinal studies, are (1) a primary interest in composite endpoints, and (2) the problem of subjects withdrawing prematurely from the study. In some settings, withdrawal may only affect observation of some components of the composite endpoint, for example when another component is death, information on which may be available from a national registry. In this paper, we use the theory of augmented inverse probability weighted estimating equations to show how such partial information on the composite endpoint for subjects who withdraw from the study can be incorporated in a principled way into the estimation of the distribution of time to composite endpoint, typically leading to increased efficiency without relying on additional assumptions above those that would be made by standard approaches. We describe our proposed approach theoretically, and demonstrate its properties in a simulation study.
一是对复合终点指标有主要兴趣;二是存在受试者过早退出研究的问题。在某些情况下,退出研究可能仅影响复合终点指标某些组成部分的观察,例如当另一个组成部分是死亡时,死亡信息可能可从国家登记处获取。在本文中,我们运用增强逆概率加权估计方程理论,展示如何将退出研究的受试者关于复合终点指标的此类部分信息以一种有原则的方式纳入到复合终点指标到达时间分布的估计中,通常这会提高效率,且无需依赖标准方法之外的额外假设。我们从理论上描述了我们提出的方法,并在模拟研究中展示了其性质。