反概率
审查(临床试验)
估计员
统计
缺少数据
生存功能
数学
残余物
估计方程
非参数统计
参数统计
似然函数
核更平滑
计量经济学
渐近分布
计算机科学
最大似然
核方法
算法
贝叶斯概率
人工智能
后验概率
径向基函数核
支持向量机
作者
Wenwen Li,Huijuan Ma,David Faraggi,Gregg E. Dinse
摘要
The mean residual life (MRL) function is an important and attractive alternative to the hazard function for characterizing the distribution of a time-to-event variable. In this article, we study the modeling and inference of a family of generalized MRL models for right-censored survival data with censoring indicators missing at random. To estimate the model parameters, augmented inverse probability weighted estimating equation approaches are developed, in which the non-missingness probability and the conditional probability of an uncensored observation are estimated by parametric methods or nonparametric kernel smoothing techniques. Asymptotic properties of the proposed estimators are established and finite sample performance is evaluated by extensive simulation studies. An application to brain cancer data is presented to illustrate the proposed methods.
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