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Variable selection in competing risks models based on quantile regression.

Erqian LiMaozai TianMan-Lai Tang
Published in: Statistics in medicine (2019)
The proportional subdistribution hazard regression model has been widely used by clinical researchers for analyzing competing risks data. It is well known that quantile regression provides a more comprehensive alternative to model how covariates influence not only the location but also the entire conditional distribution. In this paper, we develop variable selection procedures based on penalized estimating equations for competing risks quantile regression. Asymptotic properties of the proposed estimators including consistency and oracle properties are established. Monte Carlo simulation studies are conducted, confirming that the proposed methods are efficient. A bone marrow transplant data set is analyzed to demonstrate our methodologies.
Keyphrases
  • bone marrow
  • human health
  • monte carlo
  • electronic health record
  • big data
  • risk assessment
  • machine learning
  • artificial intelligence
  • deep learning