Linear transformation models for interval-censored data: Prediction of survival probability and model checking Journal Article


Author: Zhang, Z.
Article Title: Linear transformation models for interval-censored data: Prediction of survival probability and model checking
Abstract: In statistical analysis, when the value of a random variable is only known to be between two bounds, we say that this random variable is interval censored. This complicated censoring pattern is a common problem in research fields such as clinical trials or actuarial studies and raises challenges for statistical analysis. In this paper, we focus on regression analysis of case 2 interval-censored data. We first briefly review existing regression methods and an estimation approach under the class of linear transformation models developed by Zhang et al. We then propose a method for survival probability prediction via generalized estimating equations. We also consider a graphical model checking technique and a model selection tool. Some theoretical properties are established and the performance of our procedures is evaluated and illustrated by numerical studies including a real-life data analysis. © 2009 SAGE Publications.
Keywords: case 2 interval censoring; generalized estimating equation; linear transformation regression models; model checking; survival probability prediction
Journal Title: Statistical Modelling
Volume: 9
Issue: 4
ISSN: 1471-082X
Publisher: Sage Publications  
Date Published: 2009-01-01
Start Page: 321
End Page: 343
Language: English
DOI: 10.1177/1471082x0900900404
PROVIDER: scopus
DOI/URL:
Notes: --- - "Export Date: 30 November 2010" - "Source: Scopus"
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  1. Zhigang Zhang
    428 Zhang