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      Robust Network-Based Regularization and Variable Selection for High-Dimensional Genomic Data in Cancer Prognosis

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          Abstract

          In cancer genomic studies, an important objective is to identify prognostic markers associated with patients’ survival. Network-based regularization has achieved success in variable selections for high-dimensional cancer genomic data, due to its ability to incorporate the correlations among genomic features. However, as survival time data usually follow skewed distributions, and are contaminated by outliers, network-constrained regularization that does not take the robustness into account leads to false identifications of network structure and biased estimation of patients’ survival. In this study, we develop a novel robust network-based variable selection method under the accelerated failure time (AFT) model. Extensive simulation studies show the advantage of the proposed method over the alternative methods. Two case studies of lung cancer datasets with high dimensional gene expression measurements demonstrate that the proposed approach has identified markers with important implications.

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          Author and article information

          Journal
          8411723
          3864
          Genet Epidemiol
          Genet. Epidemiol.
          Genetic epidemiology
          0741-0395
          1098-2272
          8 February 2019
          11 February 2019
          April 2019
          01 April 2020
          : 43
          : 3
          : 276-291
          Affiliations
          [1 ]Department of Statistics, Kansas State University, Manhattan, KS
          [2 ]Department of Mathematics and Statistics, University of North Carolina at Charlotte, Charlotte, NC
          [3 ]Department of Biostatistics, Yale University, New Haven, CT
          [4 ]Division of Epidemiology, Biostatistics and Environmental Health, School of Public Health, University of Memphis, Memphis, TN
          Author notes
          Contact: Cen Wu, wucen@ 123456ksu.edu
          Article
          PMC6446588 PMC6446588 6446588 nihpa1009466
          10.1002/gepi.22194
          6446588
          30746793
          28aba809-c137-4d59-90da-2adad70ab17a
          History
          Categories
          Article

          high dimensional data,penalized estimation,robust variable selection,lung cancer prognosis,Network-based regularization

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