Proportional hazards models with frailties and random effects
- 7 October 2002
- journal article
- research article
- Published by Wiley in Statistics in Medicine
- Vol. 21 (21) , 3219-3233
- https://doi.org/10.1002/sim.1259
Abstract
We discuss some of the fundamental concepts underlying the development of frailty and random effects models in survival. One of these fundamental concepts was the idea of a frailty model where each subject has his or her own disposition to failure, their so‐called frailty, additional to any effects we wish to quantify via regression. Although the concept of individual frailty can be of value when thinking about how data arise or when interpreting parameter estimates in the context of a fitted model, we argue that the concept is of limited practical value. Individual random effects (frailties), whenever detected, can be made to disappear by elementary model transformation. In consequence, unless we are to take some model form as unassailable, beyond challenge and carved in stone, and if we are to understand the term ‘frailty’ as referring to individual random effects, then frailty models have no value. Random effects models on the other hand, in which groups of individuals share some common effect, can be used to advantage. Even in this case however, if we are prepared to sacrifice some efficiency, we can avoid complex modelling by using the considerable power already provided by the stratified proportional hazards model. Stratified models and random effects models can both be seen to be particular cases of partially proportional hazards models, a view that gives further insight. The added structure of a random effects model, viewed as a stratified proportional hazards model with some added distributional constraints, will, for group sizes of five or more, provide no more than modest efficiency gains, even when the additional assumptions are exactly true. On the other hand, for moderate to large numbers of very small groups, of sizes two or three, the study of twins being a well known example, the efficiency gains of the random effects model can be far from negligible. For such applications, the case for using random effects models rather than the stratified model is strong. This is especially so in view of the good robustness properties of random effects models. Nonetheless, the simpler analysis, based upon the stratified model, remains valid, albeit making a less efficient use of resources. Copyright © 2002 John Wiley & Sons, Ltd.Keywords
This publication has 21 references indexed in Scilit:
- Proportional Hazards Estimate of the Conditional Survival FunctionJournal of the Royal Statistical Society Series B: Statistical Methodology, 2000
- On fitting Cox's regression model with time-dependent coefficientsBiometrika, 1997
- Flexible Methods for Analyzing Survival Data Using Splines, with Applications to Breast Cancer PrognosisJournal of the American Statistical Association, 1992
- Time-dependent coefficients in a Cox-type regression modelStochastic Processes and their Applications, 1991
- Nonparametric Survival Analysis with Time-Dependent Covariate Effects: A Penalized Partial Likelihood ApproachThe Annals of Statistics, 1990
- A Global Goodness-of-Fit Statistic for the Proportional Hazards ModelJournal of the Royal Statistical Society Series C: Applied Statistics, 1985