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Low-dimensional confounder adjustment and high-dimensional penalized estimation for survival analysis
by
Li, Jialiang
, Zhang, Wenyang
, Xia, Xiaochao
, Jiang, Binyan
in
Applied mathematics
/ Biomedical research
/ Data analysis
/ Economics
/ Feature selection
/ Finance
/ Fines & penalties
/ Gene expression
/ Gene Expression Profiling
/ Health Sciences
/ High-Throughput Nucleotide Sequencing
/ Humans
/ Insurance
/ Management
/ Mathematics and Statistics
/ Medicine
/ Methods
/ Operations Research/Decision Theory
/ Quality Control
/ Reliability
/ Safety and Risk
/ Statistics
/ Statistics for Business
/ Statistics for Life Sciences
/ Studies
/ Survival Analysis
/ Variables
2016
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Low-dimensional confounder adjustment and high-dimensional penalized estimation for survival analysis
by
Li, Jialiang
, Zhang, Wenyang
, Xia, Xiaochao
, Jiang, Binyan
in
Applied mathematics
/ Biomedical research
/ Data analysis
/ Economics
/ Feature selection
/ Finance
/ Fines & penalties
/ Gene expression
/ Gene Expression Profiling
/ Health Sciences
/ High-Throughput Nucleotide Sequencing
/ Humans
/ Insurance
/ Management
/ Mathematics and Statistics
/ Medicine
/ Methods
/ Operations Research/Decision Theory
/ Quality Control
/ Reliability
/ Safety and Risk
/ Statistics
/ Statistics for Business
/ Statistics for Life Sciences
/ Studies
/ Survival Analysis
/ Variables
2016
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Low-dimensional confounder adjustment and high-dimensional penalized estimation for survival analysis
by
Li, Jialiang
, Zhang, Wenyang
, Xia, Xiaochao
, Jiang, Binyan
in
Applied mathematics
/ Biomedical research
/ Data analysis
/ Economics
/ Feature selection
/ Finance
/ Fines & penalties
/ Gene expression
/ Gene Expression Profiling
/ Health Sciences
/ High-Throughput Nucleotide Sequencing
/ Humans
/ Insurance
/ Management
/ Mathematics and Statistics
/ Medicine
/ Methods
/ Operations Research/Decision Theory
/ Quality Control
/ Reliability
/ Safety and Risk
/ Statistics
/ Statistics for Business
/ Statistics for Life Sciences
/ Studies
/ Survival Analysis
/ Variables
2016
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Low-dimensional confounder adjustment and high-dimensional penalized estimation for survival analysis
Journal Article
Low-dimensional confounder adjustment and high-dimensional penalized estimation for survival analysis
2016
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Overview
High-throughput profiling is now common in biomedical research. In this paper we consider the layout of an etiology study composed of a failure time response, and gene expression measurements. In current practice, a widely adopted approach is to select genes according to a preliminary marginal screening and a follow-up penalized regression for model building. Confounders, including for example clinical risk factors and environmental exposures, usually exist and need to be properly accounted for. We propose covariate-adjusted screening and variable selection procedures under the accelerated failure time model. While penalizing the high-dimensional coefficients to achieve parsimonious model forms, our procedure also properly adjust the low-dimensional confounder effects to achieve more accurate estimation of regression coefficients. We establish the asymptotic properties of our proposed methods and carry out simulation studies to assess the finite sample performance. Our methods are illustrated with a real gene expression data analysis where proper adjustment of confounders produces more meaningful results.
Publisher
Springer US,Springer Nature B.V
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