Estimation in a Cox Proportional Hazards Cure Model
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- 1 March 2000
- journal article
- Published by Oxford University Press (OUP) in Biometrics
- Vol. 56 (1) , 227-236
- https://doi.org/10.1111/j.0006-341x.2000.00227.x
Abstract
Summary.Some failure time data come from a population that consists of some subjects who are susceptible to and others who are nonsusceptible to the event of interest. The data typically have heavy censoring at the end of the follow‐up period, and a standard survival analysis would not always be appropriate. In such situations where there is good scientific or empirical evidence of a nonsusceptible population, the mixture or cure model can be used (Farewell, 1982,Biometrics38, 1041–1046). It assumes a binary distribution to model the incidence probability and a parametric failure time distribution to model the latency. Kuk and Chen (1992,Biometrika79, 531–541) extended the model by using Cox's proportional hazards regression for the latency. We develop maximum likelihood techniques for the joint estimation of the incidence and latency regression parameters in this model using the nonparametric form of the likelihood and an EM algorithm. A zero‐tail constraint is used to reduce the near nonidentifiability of the problem. The inverse of the observed information matrix is used to compute the standard errors. A simulation study shows that the methods are competitive to the parametric methods under ideal conditions and are generally better when censoring from loss to follow‐up is heavy. The methods are applied to a data set of tonsil cancer patients treated with radiation therapy.Keywords
This publication has 16 references indexed in Scilit:
- Local control of carcinoma of the tonsil by radiation therapy: An analysis of patterns of fractionation in nine institutionsInternational Journal of Radiation Oncology*Biology*Physics, 1995
- A mixture model combining logistic regression with proportional hazards regressionBiometrika, 1992
- Mixture models in survival analysis: Are they worth the risk?The Canadian Journal of Statistics / La Revue Canadienne de Statistique, 1986
- Asymptotic Equivalence Between the Cox Estimator and the General ML Estimators of Regression and Survival Parameters in the Cox ModelThe Annals of Statistics, 1984
- Cox's Regression Model for Counting Processes: A Large Sample StudyThe Annals of Statistics, 1982
- A Large Sample Study of Cox's Regression ModelThe Annals of Statistics, 1981