A semiparametric approach for the nonparametric transformation survival model with multiple covariates

Citation
Song, Xiao et al., A semiparametric approach for the nonparametric transformation survival model with multiple covariates, Biostatistics (Oxford. Print) , 8(2), 2007, pp. 197-211
ISSN journal
14654644
Volume
8
Issue
2
Year of publication
2007
Pages
197 - 211
Database
ACNP
SICI code
Abstract
The nonparametric transformation model makes no parametric assumptions on the forms of the transformation function and the error distribution.This model is appealing in its flexibility for modeling censored survival data.Current approaches for estimation of the regression parameters involve maximizing discontinuous objective functions, which are numerically infeasible to implement with multiple covariates.Based on the partial rank (PR) estimator (Khan and Tamer, 2004), we propose a smoothed PR estimator which maximizes a smooth approximation of the PR objective function.The estimator is shown to be asymptotically equivalent to the PR estimator but is much easier to compute when there are multiple covariates.We further propose using the weighted bootstrap, which is more stable than the usual sandwich technique with smoothing parameters, for estimating the standard error.The estimator is evaluated via simulation studies and illustrated with the Veterans Administration lung cancer data set.