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Journal article

Bayesian and likelihood inference for cure rates based on defective inverse Gaussian regression models

Abstract

Failure time models are considered when there is a subpopulation of individuals that is immune, or not susceptible, to an event of interest. Such models are of considerable interest in biostatistics. The most common approach is to postulate a proportion p of immunes or long-term survivors and to use a mixture model [5]. This paper introduces the defective inverse Gaussian model as a cure model and examines the use of the Gibbs sampler together with a data augmentation algorithm to study Bayesian inferences both for the cured fraction and the regression parameters. The results of the Bayesian and likelihood approaches are illustrated on two real data sets.

Authors

Balka J; Desmond AF; McNicholas PD

Journal

Journal of Applied Statistics, Vol. 38, No. 1, pp. 127–144

Publisher

Taylor & Francis

Publication Date

January 1, 2011

DOI

10.1080/02664760903301127

ISSN

0266-4763

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