Linear and nonlinear variable selection in competing risks data.

Pubmed ID: 29579776

Journal: Statistics in medicine

Publication Date: June 15, 2018

Link: https://onlinelibrary.wiley.com/doi/pdf/10.1002/sim.7637

MeSH Terms: Humans, Cardiovascular Diseases, Risk Factors, Data Interpretation, Statistical, Risk Assessment, Proportional Hazards Models, Models, Statistical, Linear Models, Nonlinear Dynamics, Likelihood Functions

Authors: Shen C, Li S, Ren X, Yu Z

Cite As: Ren X, Li S, Shen C, Yu Z. Linear and nonlinear variable selection in competing risks data. Stat Med 2018 Jun 15;37(13):2134-2147. Epub 2018 Mar 26.

Studies:

Abstract

Subdistribution hazard model for competing risks data has been applied extensively in clinical researches. Variable selection methods of linear effects for competing risks data have been studied in the past decade. There is no existing work on selection of potential nonlinear effects for subdistribution hazard model. We propose a two-stage procedure to select the linear and nonlinear covariate(s) simultaneously and estimate the selected covariate effect(s). We use spectral decomposition approach to distinguish the linear and nonlinear parts of each covariate and adaptive LASSO to select each of the 2 components. Extensive numerical studies are conducted to demonstrate that the proposed procedure can achieve good selection accuracy in the first stage and small estimation biases in the second stage. The proposed method is applied to analyze a cardiovascular disease data set with competing death causes.