Title of article :
Bayesian Approach for Joint Longitudinal and Time-to-Event Data with Survival Fraction
Author/Authors :
Abu Bakar, Mohd Rizam Universiti Putra Malaysia - Department of Mathematics, Malaysia , Salah, Khalid A. Alquds University - Department of Mathematics, Palestine , Ibrahim, Noor Akma Universiti Putra Malaysia - Institute for Mathematical Research, Malaysia , Haron, Kassim Universiti Putra Malaysia - Department of Mathematics, Malaysia
Abstract :
Many medical investigations generate both repeatedly-measured (longitudinal) biomarker and survival data. One of complex issue arises when investigating the association between longitudinal and time-to-event data whenthere are cured patients in the population, which leads to a plateau in the survival function S(t) after suffcient follow-up. Thus, usual Cox proportional hazard model [11] is not applicable since the proportional hazard assumption is violated. An alternative is to consider survival models incorporating a cure fraction. In this paper, we present a new class of joint model for univariate longitudinal and survival data in presence of cure fraction. For the longitudinal model, a stochastic Integrated Ornstein-Uhlenbeck process will present, and for the survival model a semiparametric survival function will be considered which accommodate both zero and non-zero cure fractions of the dynamic disease pro- gression. Moreover, we consider a Bayesian approach which is motivated by the complexity of the model. Posterior and prior specification needs to accommo- date parameter constraints due to the non-negativity of the survival function. A simulation study is presented to evaluate the performance of the proposed joint model.
Keywords :
Survival model , longitudinal model , cure rate model , fixed effects , random effects , Bayesian approach , integrated Ornstein , Uhlenbeck.
Journal title :
Bulletin of the Malaysian Mathematical Sciences Society
Journal title :
Bulletin of the Malaysian Mathematical Sciences Society