Assessing time-by-covariate interactions in Cox proportional hazards regression models using cubic spline functions

Kenneth Robert Hess, The University of Texas School of Public Health

Abstract

This dissertation develops and explores the methodology for the use of cubic spline functions in assessing time-by-covariate interactions in Cox proportional hazards regression models. These interactions indicate violations of the proportional hazards assumption of the Cox model. Use of cubic spline functions allows for the investigation of the shape of a possible covariate time-dependence without having to specify a particular functional form. Cubic spline functions yield both a graphical method and a formal test for the proportional hazards assumption as well as a test of the nonlinearity of the time-by-covariate interaction. Five existing methods for assessing violations of the proportional hazards assumption are reviewed and applied along with cubic splines to three well known two-sample datasets. An additional dataset with three covariates is used to explore the use of cubic spline functions in a more general setting.

Subject Area

Biostatistics

Recommended Citation

Hess, Kenneth Robert, "Assessing time-by-covariate interactions in Cox proportional hazards regression models using cubic spline functions" (1992). Texas Medical Center Dissertations (via ProQuest). AAI9401761.
https://digitalcommons.library.tmc.edu/dissertations/AAI9401761

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