选择(遗传算法)
可列斯基分解
统计
随机效应模型
惩罚法
特征选择
差异(会计)
计算机科学
数学
数学优化
计量经济学
算法
医学
人工智能
特征向量
物理
荟萃分析
会计
量子力学
内科学
业务
作者
Zangdong He,Wanzhu Tu,Sijian Wang,Haoda Fu,Zhangsheng Yu
出处
期刊:Biometrics
[Wiley]
日期:2014-09-15
卷期号:71 (1): 178-187
被引量:37
摘要
Summary Joint models of longitudinal and survival outcomes have been used with increasing frequency in clinical investigations. Correct specification of fixed and random effects is essential for practical data analysis. Simultaneous selection of variables in both longitudinal and survival components functions as a necessary safeguard against model misspecification. However, variable selection in such models has not been studied. No existing computational tools, to the best of our knowledge, have been made available to practitioners. In this article, we describe a penalized likelihood method with adaptive least absolute shrinkage and selection operator (ALASSO) penalty functions for simultaneous selection of fixed and random effects in joint models. To perform selection in variance components of random effects, we reparameterize the variance components using a Cholesky decomposition; in doing so, a penalty function of group shrinkage is introduced. To reduce the estimation bias resulted from penalization, we propose a two-stage selection procedure in which the magnitude of the bias is ameliorated in the second stage. The penalized likelihood is approximated by Gaussian quadrature and optimized by an EM algorithm. Simulation study showed excellent selection results in the first stage and small estimation biases in the second stage. To illustrate, we analyzed a longitudinally observed clinical marker and patient survival in a cohort of patients with heart failure.
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