The Cox proportional hazards model with a partly linear relative risk function Journal Article


Author: Heller, G.
Article Title: The Cox proportional hazards model with a partly linear relative risk function
Abstract: The conventional Cox proportional hazards regression model contains a loglinear relative risk function, linking the covariate information to the hazard ratio with a finite number of parameters. A generalization, termed the partly linear Cox model, allows for both finite dimensional parameters and an infinite dimensional parameter in the relative risk function, providing a more robust specification of the relative risk function. In this work, a likelihood based inference procedure is developed for the finite dimensional parameters of the partly linear Cox model. To alleviate the problems associated with a likelihood approach in the presence of an infinite dimensional parameter, the relative risk is reparameterized such that the finite dimensional parameters of interest are orthogonal to the infinite dimensional parameter. Inference on the finite dimensional parameters is accomplished through maximization of the profile partial likelihood, profiling out the infinite dimensional nuisance parameter using a kernel function. The asymptotic distribution theory for the maximum profile partial likelihood estimate is established. It is determined that this estimate is asymptotically efficient; the orthogonal reparameterization enables employment of profile likelihood inference procedures without adjustment for estimation of the nuisance parameter. An example from a retrospective analysis in cancer demonstrates the methodology.
Keywords: survival; survival analysis; pathophysiology; proportional hazards models; risk; prostatic neoplasms; proportional hazards model; prostate tumor; humans; human; male; article; kernel estimation; least favorable p-surface; orthogonal reparameterization; profile partial likelihood; semiparametric survival analysis
Journal Title: Lifetime Data Analysis
Volume: 7
Issue: 3
ISSN: 1380-7870
Publisher: Springer  
Date Published: 2001-09-01
Start Page: 255
End Page: 277
Language: English
DOI: 10.1023/a:1011688424797
PUBMED: 11677830
PROVIDER: scopus
DOI/URL:
Notes: Export Date: 21 May 2015 -- Source: Scopus
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  1. Glenn Heller
    399 Heller