Title of article :
Slope estimation of covariates that influence renal outcome following renal transplant adjusting for informative right censoring
Author/Authors :
Miran A. Jaffa، نويسنده , , Ayad A. Jaffa&Stuart R. Lipsitz، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2012
Abstract :
A new statistical model is proposed to estimate population and individual slopes that are adjusted for
covariates and informative right censoring. Individual slopes are assumed to have a mean that depends on
the population slope for the covariates. The number of observations for each individual is modeled as a
truncated discrete distribution with mean dependent on the individual subjects’slopes. Our simulation study
results indicated that the associated bias and mean squared errors for the proposed model were comparable
to those associated with the model that only adjusts for informative right censoring. The proposed model
was illustrated using renal transplant dataset to estimate population slopes for covariates that could impact
the outcome of renal function following renal transplantation.
Keywords :
Empirical Bayes estimates , slope estimation , Longitudinal data , informative right censoring , discrete geometric distribution , Likelihood function
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS