Marginal Semiparametric Accelerated Failure Time Cure Model for Clustered Survival Data
Yi Niu
Co-Author
Dalian University of Technology
Duze Fan
Co-Author
Dalian University of Technology
Jie Ding
Co-Author
Dalian University of Technology
Wednesday, Aug 6: 8:55 AM - 9:15 AM
Topic-Contributed Paper Session
Music City Center
The semiparametric accelerated failure time mixture cure model is an appealing alternative to the proportional hazards mixture cure model in analyzing failure time data with long-term survivors. However, this model was only proposed for independent survival data and has not been extended to clustered or correlated survival data, partly due to the complexity of the estimation method for the model. We consider a marginal semiparametric accelerated failure time mixture cure model for clustered right-censored failure time data with a potential cure fraction. We overcome the complexity of the existing semiparametric method by proposing a generalized estimating equations approach based on the EM algorithm to estimate the regression parameters in the model. The correlation structures within clusters are modeled by working correlation matrices in the proposed generalized estimating equations. The large sample properties of the regression estimators are established. Numerical studies demonstrate that the proposed estimation method is easy to use and robust to the misspecification of working matrices and that higher efficiency is achieved when the working correlation structure is closer to the true correlation structure. We apply the proposed model and estimation method to a contralateral breast cancer study and reveal new insights when the potential correlation between patients is taken into account.
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