Doubly penalized buckley-james method for survival data with high-dimensional covariates. |
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Authors: | Sijian Wang Bin Nan Ji Zhu David G Beer |
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Institution: | Department of Biostatistics, University of Michigan, Ann Arbor, MI 48109, USA. |
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Abstract: | Recent interest in cancer research focuses on predicting patients' survival by investigating gene expression profiles based on microarray analysis. We propose a doubly penalized Buckley-James method for the semiparametric accelerated failure time model to relate high-dimensional genomic data to censored survival outcomes, which uses the elastic-net penalty that is a mixture of L1- and L2-norm penalties. Similar to the elastic-net method for a linear regression model with uncensored data, the proposed method performs automatic gene selection and parameter estimation, where highly correlated genes are able to be selected (or removed) together. The two-dimensional tuning parameter is determined by generalized crossvalidation. The proposed method is evaluated by simulations and applied to the Michigan squamous cell lung carcinoma study. |
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