High-Dimensional Variable Selection With Competing Events Using Cooperative Penalized Regression

被引:0
|
作者
Burk, Lukas [1 ,2 ,3 ,4 ]
Bender, Andreas [2 ,4 ]
Wright, Marvin N. [1 ,2 ,5 ]
机构
[1] Leibniz Inst Prevent Res & Epidemiol BIPS, Bremen, Germany
[2] Ludwig Maximilians Univ Munchen, Dept Stat, Munich, Germany
[3] Univ Bremen, Fac Math & Comp Sci, Bremen, Germany
[4] Munich Ctr Machine Learning MCML, Munich, Germany
[5] Univ Copenhagen, Dept Publ Hlth, Copenhagen, Denmark
关键词
competing risks; Cox regression; high-dimensional data analysis; penalized regression; variable selection; REGULARIZATION PATHS; FORESTS;
D O I
10.1002/bimj.70036
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Variable selection is an important step in the analysis of high-dimensional data, yet there are limited options for survival outcomes in the presence of competing risks. Commonly employed penalized Cox regression considers each event type separately through cause-specific models, neglecting possibly shared information between them. We adapt the feature-weighted elastic net (fwelnet), an elastic net generalization, to survival outcomes and competing risks. For two causes, our proposed algorithm fits two alternating cause-specific models, where each model receives the coefficient vector of the complementary model as prior information. We dub this "cooperative penalized regression," as it enables the modeling of competing risk data with cause-specific models while accounting for shared effects between causes. Coefficients that are shrunken toward zero in the model for the first cause will receive larger penalization weights in the model for the second cause and vice versa. Through multiple iterations, this process ensures stronger penalization of uninformative predictors in both models. We demonstrate our method's variable selection capabilities on simulated genomics data and apply it to bladder cancer microarray data. We evaluate selection performance using the positive predictive value for the correct selection of informative features and the false positive rate for the selection of uninformative variables. The benchmark compares results with cause-specific penalized Cox regression, random survival forests, and likelihood-boosted Cox regression. Results indicate that our approach is more effective at selecting informative features and removing uninformative features. In settings without shared effects, variable selection performance is similar to cause-specific penalized Cox regression.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Empirical Study on High-Dimensional Variable Selection and Prediction Under Competing Risks
    Hou, Jiayi
    Xu, Ronghui
    NEW FRONTIERS OF BIOSTATISTICS AND BIOINFORMATICS, 2018, : 421 - 440
  • [32] High-dimensional local polynomial regression with variable selection and dimension reduction
    Cheung, Kin Yap
    Lee, Stephen M. S.
    STATISTICS AND COMPUTING, 2024, 34 (01)
  • [33] Variable selection in high-dimensional sparse multiresponse linear regression models
    Luo, Shan
    STATISTICAL PAPERS, 2020, 61 (03) : 1245 - 1267
  • [34] Targeted Inference Involving High-Dimensional Data Using Nuisance Penalized Regression
    Sun, Qiang
    Zhang, Heping
    JOURNAL OF THE AMERICAN STATISTICAL ASSOCIATION, 2021, 116 (535) : 1472 - 1486
  • [35] High-dimensional local polynomial regression with variable selection and dimension reduction
    Kin Yap Cheung
    Stephen M. S. Lee
    Statistics and Computing, 2024, 34
  • [36] Robust Variable Selection with Optimality Guarantees for High-Dimensional Logistic Regression
    Insolia, Luca
    Kenney, Ana
    Calovi, Martina
    Chiaromonte, Francesca
    STATS, 2021, 4 (03): : 665 - 681
  • [37] Variable selection in high-dimensional sparse multiresponse linear regression models
    Shan Luo
    Statistical Papers, 2020, 61 : 1245 - 1267
  • [38] An Improved Forward Regression Variable Selection Algorithm for High-Dimensional Linear Regression Models
    Xie, Yanxi
    Li, Yuewen
    Xia, Zhijie
    Yan, Ruixia
    IEEE ACCESS, 2020, 8 (08): : 129032 - 129042
  • [39] Vanishing deviance problem in high-dimensional penalized Cox regression
    Yao, Sijie
    Li, Tingyi
    Cao, Biwei
    Wang, Xuefeng
    CANCER RESEARCH, 2023, 83 (07)
  • [40] DOUBLY PENALIZED ESTIMATION IN ADDITIVE REGRESSION WITH HIGH-DIMENSIONAL DATA
    Tan, Zhiqiang
    Zhang, Cun-Hui
    ANNALS OF STATISTICS, 2019, 47 (05): : 2567 - 2600