Smooth Semi-nonparametric Analysis for Mixture Cure Models and Its Application to Breast Cancer

Smooth Semi-nonparametric Analysis for Mixture Cure Models and Its Application to Breast Cancer

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Article ID: iaor201525012
Volume: 56
Issue: 3
Start Page Number: 217
End Page Number: 235
Publication Date: Sep 2014
Journal: Australian & New Zealand Journal of Statistics
Authors: , ,
Keywords: statistics: inference
Abstract:

Mixture cure models are widely used when a proportion of patients are cured. The proportional hazards mixture cure model and the accelerated failure time mixture cure model are the most popular models in practice. Usually the expectation–maximisation (EM) algorithm is applied to both models for parameter estimation. Bootstrap methods are used for variance estimation. In this paper we propose a smooth semi‐nonparametric (SNP) approach in which maximum likelihood is applied directly to mixture cure models for parameter estimation. The variance can be estimated by the inverse of the second derivative of the SNP likelihood. A comprehensive simulation study indicates good performance of the proposed method. We investigate stage effects in breast cancer by applying the proposed method to breast cancer data from the South Carolina Cancer Registry.

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