Abstract:
This research was aspirated for developing an improved analytical solution for analyzing data
with correlated survival and count response variables. A bivariate model/joint model which
simultaneously model these two responses was developed using two approaches named as
shared random effects models and joint random effects models where both belongs to the family
of random effects models. The use of random effects models for joint model development
doesn't impose any restrictions on the choice of the marginal model for the two responses where
this study deployed a parametric survival model with lognormal distribution for the survival
response and a Poisson generalized linear model for the count response. As the choice of a
statistical model depends on the design of the data, two commonly found designs of simple
randomized data and cluster randomized data was considered and joint models were developed
for these two designs. For each type of the joint model, for each design of the data, separate
simulation studies were carried out to test the functionality of the joint model and was compared
critically with the fit of separate univariate models of each response variable. The results of the
simulation studies established the appropriateness of the proposed joint models for analyzing
correlated survival and count responses. The use of nested random effects models for joint
model development, developing a joint model for both simple randomized and cluster
randomized data, developing joint models for both positively and negatively correlated
responses and developing joint models consisting of fully parametric marginal models serves
as the methodological contributions of this study.
Then, the proposed joint model of this study was used for analyzing data from a randomized
control trial on Epilepsy where the two responses were the timing of seizures and count of
seizures. The performance of the joint model was overwhelming in the analysis of this data
where model diagnostics and validations were very satisfactory in the joint model compared to
that of the univariate models. It was identified that the use of the proposed joint model provides
better analysis of the data in terms of identifying and quantifying the risk factors for each
response variable and predicting the survival probabilities of the Epilepsy patients. Therefore,
the practical importance of the joint model was demonstrated with the analysis of the Epilepsy
data.