Joint Models for Time-to-Event Data and Longitudinal Biomarkers of High Dimension

被引:0
作者
Molei Liu
Jiehuan Sun
Jose D. Herazo-Maya
Naftali Kaminski
Hongyu Zhao
机构
[1] Harvard University,Department of Biostatistics, Harvard School of Public Health
[2] Yale University,Department of Biostatistics
[3] Yale School of Medicine,Pulmonary, Critical Care and Sleep Medicine
来源
Statistics in Biosciences | 2019年 / 11卷
关键词
Bayesian factor analysis; Joint models; Longitudinal biomarkers of high dimension; Survival prediction;
D O I
暂无
中图分类号
学科分类号
摘要
Joint models for longitudinal biomarkers and time-to-event data are widely used in longitudinal studies. Many joint modeling approaches have been proposed to handle different types of longitudinal biomarkers and survival outcomes. However, most existing joint modeling methods cannot deal with a large number of longitudinal biomarkers simultaneously, such as the longitudinally collected gene expression profiles. In this article, we propose a new joint modeling method under the Bayesian framework, which is able to analyze longitudinal biomarkers of high dimension. Specifically, we assume that only a few unobserved latent variables are related to the survival outcome and the latent variables are inferred using a factor analysis model, which greatly reduces the dimensionality of the biomarkers and also accounts for the high correlations among the biomarkers. Through extensive simulation studies, we show that our proposed method has improved prediction accuracy over other joint modeling methods. We illustrate the usefulness of our method on a dataset of idiopathic pulmonary fibrosis patients in which we are interested in predicting the patients’ time-to-death using their gene expression profiles.
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页码:614 / 629
页数:15
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