Abstract

This paper presents a parametric method of fitting semi-Markov models with piecewise-constant hazards in the presence of left, right and interval censoring. We investigate transition intensities in a three-state illness–death model with no recovery. We relax the Markov assumption by adjusting the intensity for the transition from state 2 (illness) to state 3 (death) for the time spent in state 2 through a time-varying covariate. This involves the exact time of the transition from state 1 (healthy) to state 2. When the data are subject to left or interval censoring, this time is unknown. In the estimation of the likelihood, we take into account interval censoring by integrating out all possible times for the transition from state 1 to state 2. For left censoring, we use an Expectation–Maximisation inspired algorithm. A simulation study reflects the performance of the method. The proposed combination of statistical procedures provides great flexibility. We illustrate the method in an application by using data on stroke onset for the older population from the UK Medical Research Council Cognitive Function and Ageing Study. Copyright © 2012 John Wiley & Sons, Ltd.

Highlights

  • Stroke is the rapidly developing loss of brain function due to a disorder in the blood supply to the brain

  • We illustrate the method in an application by using data from the UK Medical Research Council Cognitive Function and Ageing Study (MRC CFAS)

  • We handled interval censoring by using integration and handled left censoring by using an EM-inspired algorithm

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Summary

Introduction

Stroke is the rapidly developing loss of brain function due to a disorder in the blood supply to the brain. Foucher et al have investigated ways to fit multi-state models in the presence of left, right and interval censoring by using a generalised Weibull distribution for the waiting times of the underlying process [22]. In most longitudinal studies, information about the measured endpoints prior to baseline is rarely available For this reason, we have developed in this paper a method that does not need this information and have not use self-reported data regarding the time of first stroke. Because the exact time of transition from state 1 to state 2 is unknown, the data are subject to left, right and interval censoring. W : Age at the time of transition from state 1 to state 2

Method
The regression model
A piecewise-constant hazards model
Likelihood contributions
Handling left censoring
Simulation study
Application
Findings
Discussion
Full Text
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