ML and REML estimation in survival analysis with time dependent correlated frailty
- 15 June 1998
- journal article
- clinical trial
- Published by Wiley in Statistics in Medicine
- Vol. 17 (11) , 1201-1213
- https://doi.org/10.1002/(sici)1097-0258(19980615)17:11<1201::aid-sim845>3.0.co;2-7
Abstract
In the study of multiple failure times for the same subjects, for example, recurrent infections for patients with a given disease, there are often subject effects, that is, subjects have different risks that cannot be explained by known covariates. Standard methods, which ignore subject effects, lead to overestimation of precision. The frailty model for subject effects is better, but can be insufficient, because it assumes that subject effects are constant over time. Experience has shown that the dependence between different time periods often decreases with distance in time. Such a model is presented here, assuming that the frailty is no longer constant, but time varying, with one value for each spell. The main example is a first‐order autoregressive process. This is applied to a data set of 128 patients with chronic granulomatous disease (CGD), participating in a placebo controlled randomized trial of gamma interferon (γ‐IFN), suffering between 0 and 7 infections. It is shown that the time varying frailty model gives a significantly better fit than the constant frailty model. © 1998 John Wiley & Sons, Ltd.Keywords
This publication has 16 references indexed in Scilit:
- Estimating equations for hazard ratio parameters based on correlated failure time dataBiometrika, 1995
- The derivation of blup, ML, REML estimation methods for generalised linear mixed modelsCommunications in Statistics - Theory and Methods, 1995
- Fitting Parametric Counting Processes by Using Log-Linear ModelsJournal of the Royal Statistical Society Series C: Applied Statistics, 1995
- Cox regression analysis of multivariate failure time data: The marginal approachStatistics in Medicine, 1994
- Regression Analysis of Multivariate Incomplete Failure Time Data by Modeling Marginal DistributionsJournal of the American Statistical Association, 1989
- A Class of Multivariate Failure Time DistributionsBiometrika, 1986
- Survival models for heterogeneous populations derived from stable distributionsBiometrika, 1986
- Multivariate Generalizations of the Proportional Hazards ModelJournal of the Royal Statistical Society. Series A (General), 1985
- Life table methods for heterogeneous populations: Distributions describing the heterogeneityBiometrika, 1984
- Regression Models and Life-TablesJournal of the Royal Statistical Society Series B: Statistical Methodology, 1972