Analyzing Competing Risk Data Using the R timereg Package

In this paper we describe flexible competing risks regression models using the comp.risk() function available in the timereg package for R based on Scheike et al. (2008). Regression models are specified for the transition probabilities, that is the cumulative incidence in the competing risks setting...

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Bibliographic Details
Main Authors: Thomas H. Scheike, Mei-Jie Zhang
Format: Article
Language:English
Published: Foundation for Open Access Statistics 2011-01-01
Series:Journal of Statistical Software
Subjects:
R
Online Access:http://www.jstatsoft.org/v38/i02/paper
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spelling doaj-d99618705dcb499099da24bfd5fb7ab22020-11-24T22:22:29ZengFoundation for Open Access StatisticsJournal of Statistical Software1548-76602011-01-013802Analyzing Competing Risk Data Using the R timereg PackageThomas H. ScheikeMei-Jie ZhangIn this paper we describe flexible competing risks regression models using the comp.risk() function available in the timereg package for R based on Scheike et al. (2008). Regression models are specified for the transition probabilities, that is the cumulative incidence in the competing risks setting. The model contains the Fine and Gray (1999) model as a special case. This can be used to do goodness-of-fit test for the subdistribution hazards’ proportionality assumption (Scheike and Zhang 2008). The program can also construct confidence bands for predicted cumulative incidence curves.http://www.jstatsoft.org/v38/i02/paperbinomial modellingcompeting risksgoodness of fitinverse-censoring probability weightingnonparametric effectsnon-proportionalityRregression effectstimereg
collection DOAJ
language English
format Article
sources DOAJ
author Thomas H. Scheike
Mei-Jie Zhang
spellingShingle Thomas H. Scheike
Mei-Jie Zhang
Analyzing Competing Risk Data Using the R timereg Package
Journal of Statistical Software
binomial modelling
competing risks
goodness of fit
inverse-censoring probability weighting
nonparametric effects
non-proportionality
R
regression effects
timereg
author_facet Thomas H. Scheike
Mei-Jie Zhang
author_sort Thomas H. Scheike
title Analyzing Competing Risk Data Using the R timereg Package
title_short Analyzing Competing Risk Data Using the R timereg Package
title_full Analyzing Competing Risk Data Using the R timereg Package
title_fullStr Analyzing Competing Risk Data Using the R timereg Package
title_full_unstemmed Analyzing Competing Risk Data Using the R timereg Package
title_sort analyzing competing risk data using the r timereg package
publisher Foundation for Open Access Statistics
series Journal of Statistical Software
issn 1548-7660
publishDate 2011-01-01
description In this paper we describe flexible competing risks regression models using the comp.risk() function available in the timereg package for R based on Scheike et al. (2008). Regression models are specified for the transition probabilities, that is the cumulative incidence in the competing risks setting. The model contains the Fine and Gray (1999) model as a special case. This can be used to do goodness-of-fit test for the subdistribution hazards’ proportionality assumption (Scheike and Zhang 2008). The program can also construct confidence bands for predicted cumulative incidence curves.
topic binomial modelling
competing risks
goodness of fit
inverse-censoring probability weighting
nonparametric effects
non-proportionality
R
regression effects
timereg
url http://www.jstatsoft.org/v38/i02/paper
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