Geng Yuan, Zhang Hao Helen, Lu Wenbin
Department of Statistics, North Carolina State University, Raleigh, NC 27695, U.S.A.
Stat Med. 2015 Mar 30;34(7):1169-84. doi: 10.1002/sim.6397. Epub 2014 Dec 16.
In clinical studies with time-to-event as a primary endpoint, one main interest is to find the best treatment strategy to maximize patients' mean survival time. Due to patient's heterogeneity in response to treatments, great efforts have been devoted to developing optimal treatment regimes by integrating individuals' clinical and genetic information. A main challenge arises in the selection of important variables that can help to build reliable and interpretable optimal treatment regimes as the dimension of predictors may be high. In this paper, we propose a robust loss-based estimation framework that can be easily coupled with shrinkage penalties for both estimation of optimal treatment regimes and variable selection. The asymptotic properties of the proposed estimators are studied. Moreover, a model-free estimator of restricted mean survival time under the derived optimal treatment regime is developed, and its asymptotic property is studied. Simulations are conducted to assess the empirical performance of the proposed method for parameter estimation, variable selection, and optimal treatment decision. An application to an AIDS clinical trial data set is given to illustrate the method.
在以事件发生时间作为主要终点的临床研究中,一个主要关注点是找到最佳治疗策略,以使患者的平均生存时间最大化。由于患者对治疗反应的异质性,人们致力于通过整合个体的临床和基因信息来制定最佳治疗方案。在选择有助于构建可靠且可解释的最佳治疗方案的重要变量时出现了一个主要挑战,因为预测变量的维度可能很高。在本文中,我们提出了一个基于稳健损失的估计框架,该框架可以很容易地与收缩惩罚相结合,用于最佳治疗方案的估计和变量选择。研究了所提出估计量的渐近性质。此外,还开发了在推导的最佳治疗方案下受限平均生存时间的无模型估计量,并研究了其渐近性质。进行了模拟以评估所提出方法在参数估计、变量选择和最佳治疗决策方面的实证性能。给出了一个艾滋病临床试验数据集的应用示例来说明该方法。