School of Physical and Mathematical Sciences, Nanyang Technological University, Singapore, Singapore.
Department of Statistics, Pukyong National University, Busan, South Korea.
Stat Med. 2019 Oct 30;38(24):4854-4870. doi: 10.1002/sim.8338. Epub 2019 Aug 16.
Frailty models are widely used to model clustered survival data arising in multicenter clinical studies. In the literature, most existing frailty models are proportional hazards, additive hazards, or accelerated failure time model based. In this paper, we propose a frailty model framework based on mean residual life regression to accommodate intracluster correlation and in the meantime provide easily understand and straightforward interpretation for the effects of prognostic factors on the expectation of the remaining lifetime. To overcome estimation challenges, a novel hierarchical quasi-likelihood approach is developed by making use of the idea of hierarchical likelihood in the construction of the quasi-likelihood function, leading to hierarchical estimating equations. Simulation results show favorable performance of the method regardless of frailty distributions. The utility of the proposed methodology is illustrated by its application to the data from a multi-institutional study of breast cancer.
衰弱模型广泛用于对多中心临床研究中出现的聚类生存数据进行建模。在文献中,大多数现有的衰弱模型都是基于比例风险、加性风险或加速失效时间模型。在本文中,我们提出了一个基于平均剩余寿命回归的衰弱模型框架,以适应聚类相关性,同时为预后因素对剩余寿命的预期的影响提供易于理解和直接的解释。为了克服估计挑战,我们通过利用分层似然的思想在拟似然函数的构建中提出了一种新的层次拟似然方法,从而得到了层次估计方程。模拟结果表明,无论衰弱分布如何,该方法都具有良好的性能。通过将该方法应用于乳腺癌多机构研究的数据,说明了该方法的实用性。