论文标题
带有群集多层过程数据的瞬态状态职业概率的边际回归
Marginal Regression on Transient State Occupation Probabilities with Clustered Multistate Process Data
论文作者
论文摘要
聚类的多阶段过程数据通常在多中心观察研究和临床试验中遇到。具有此类数据的临床重要估计是处于特定瞬态状态的边际概率随时间的函数。但是,目前尚无使用聚类的多态过程数据对这些概率进行非参数边缘回归分析的方法。为了解决这个问题,我们提出了一种加权功能性的概括估计方程方法,该方法对集群内部依赖性的结构不施加马尔可夫的假设或假设,并允许提供信息丰富的群集大小(ICS)。严格确定了功能回归系数的拟议估计量的渐近性能,并提出了协变量效应的非参数假设测试程序。仿真研究表明,即使在少数簇中,提出的方法也可以很好地执行,并且忽略了群内依赖性,而ICS会导致无效的推论。该方法用于分析来自多中心临床试验的数据,该试验对头颈的复发或转移性鳞状细胞癌进行了分层的随机设计。
Clustered multistate process data are commonly encountered in multicenter observational studies and clinical trials. A clinically important estimand with such data is the marginal probability of being in a particular transient state as a function of time. However, there is currently no method for nonparametric marginal regression analysis of these probabilities with clustered multistate process data. To address this problem, we propose a weighted functional generalized estimating equations approach which does not impose Markov assumptions or assumptions regarding the structure of the within-cluster dependence, and allows for informative cluster size (ICS). The asymptotic properties of the proposed estimators for the functional regression coefficients are rigorously established and a nonparametric hypothesis testing procedure for covariate effects is proposed. Simulation studies show that the proposed method performs well even with a small number of clusters, and that ignoring the within-cluster dependence and the ICS leads to invalid inferences. The proposed method is used to analyze data from a multicenter clinical trial on recurrent or metastatic squamous-cell carcinoma of the head and neck with a stratified randomization design.