Graphical representation of survival curves associated with a binary non‐reversible time dependent covariate Journal Article


Authors: Feuer, E. J.; Hankey, B. F.; Gaynor, J. J.; Wesley, M. N.; Baker, S. G.; Meyer, J. S.
Article Title: Graphical representation of survival curves associated with a binary non‐reversible time dependent covariate
Abstract: The use of time dependent covariates has allowed for incorporation into analysis of survival data intervening events that are binary and non‐reversible (for example, heart transplant, initial response to chemotherapy). We can represent this type of intervening event as a three‐state stochastic process with a starting state (S), an intervening state (I), and an absorbing state (D), which usually represents death. In this paper we present three procedures for calculating survivorship functions which attempt to display the prognostic significance of the time dependent covariate. The first method compares survival from baseline for the two possible paths through the stochastic process; the second method compares overall survival to survival with state I removed from the process; and, the third method compares survival for those already in state I at a landmark time x to those in state S at time x who will never enter state I. We develop discrete hazard estimates for the survival curves associated with the three methods. Two examples illustrate how these methods can yield different results and in which situations one might employ each of the three methods. Extensions to applications with reversible binary time dependent covariates and models with both baseline and time dependent covariates are suggested. Copyright © 1992 John Wiley & Sons, Ltd.
Keywords: survival analysis; survival rate; methodology; risk factors; time factors; statistical analysis; data interpretation, statistical; models, statistical; stochastic model; stochastic processes; human; article; support, u.s. gov't, p.h.s.
Journal Title: Statistics in Medicine
Volume: 11
Issue: 4
ISSN: 0277-6715
Publisher: John Wiley & Sons  
Date Published: 1992-01-01
Start Page: 455
End Page: 474
Language: English
DOI: 10.1002/sim.4780110408
PUBMED: 1609178
PROVIDER: scopus
DOI/URL:
Notes: Source: Scopus
Altmetric
Citation Impact
BMJ Impact Analytics
MSK Authors
  1. Jeffrey J. Gaynor
    36 Gaynor