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Published in: Critical Care 2/2008

01-04-2008 | Commentary

Competing risks models and time-dependent covariates

Authors: Adrian Barnett, Nick Graves

Published in: Critical Care | Issue 2/2008

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Abstract

New statistical models for analysing survival data in an intensive care unit context have recently been developed. Two models that offer significant advantages over standard survival analyses are competing risks models and multistate models. Wolkewitz and colleagues used a competing risks model to examine survival times for nosocomial pneumonia and mortality. Their model was able to incorporate time-dependent covariates and so examine how risk factors that changed with time affected the chances of infection or death. We briefly explain how an alternative modelling technique (using logistic regression) can more fully exploit time-dependent covariates for this type of data.
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Metadata
Title
Competing risks models and time-dependent covariates
Authors
Adrian Barnett
Nick Graves
Publication date
01-04-2008
Publisher
BioMed Central
Published in
Critical Care / Issue 2/2008
Electronic ISSN: 1364-8535
DOI
https://doi.org/10.1186/cc6840

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