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Continuous covariate frailty models for censored and truncated clustered data
Authors:Ignacio López-de-Ullibarri  Paul Janssen  Ricardo Cao
Institution:1. Department of Mathematics, Escuela Universitaria Politécnica, Universidade da Coruña, Ferrol, A Coruña, Spain;2. Center for Statistics, Hasselt University, B-3590 Diepenbeek, Belgium;3. Department of Mathematics, Facultad de Informática, Universidade da Coruña, A Coruña, Spain
Abstract:Using some logarithmic and integral transformation we transform a continuous covariate frailty model into a polynomial regression model with a random effect. The responses of this mixed model can be ‘estimated’ via conditional hazard function estimation. The random error in this model does not have zero mean and its variance is not constant along the covariate and, consequently, these two quantities have to be estimated. Since the asymptotic expression for the bias is complicated, the two-large-bandwidth trick is proposed to estimate the bias. The proposed transformation is very useful for clustered incomplete data subject to left truncation and right censoring (and for complex clustered data in general). Indeed, in this case no standard software is available to fit the frailty model, whereas for the transformed model standard software for mixed models can be used for estimating the unknown parameters in the original frailty model. A small simulation study illustrates the good behavior of the proposed method. This method is applied to a bladder cancer data set.
Keywords:Conditional hazard function  Clustered survival data  Estimation via transformation  Kernel estimation
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