Abstract

ABSTRACTThe joint models for longitudinal data and time-to-event data have recently received numerous attention in clinical and epidemiologic studies. Our interest is in modeling the relationship between event time outcomes and internal time-dependent covariates. In practice, the longitudinal responses often show non linear and fluctuated curves. Therefore, the main aim of this paper is to use penalized splines with a truncated polynomial basis to parameterize the non linear longitudinal process. Then, the linear mixed-effects model is applied to subject-specific curves and to control the smoothing. The association between the dropout process and longitudinal outcomes is modeled through a proportional hazard model. Two types of baseline risk functions are considered, namely a Gompertz distribution and a piecewise constant model. The resulting models are referred to as penalized spline joint models; an extension of the standard joint models. The expectation conditional maximization (ECM) algorithm is applied to estimate the parameters in the proposed models. To validate the proposed algorithm, extensive simulation studies were implemented followed by a case study. In summary, the penalized spline joint models provide a new approach for joint models that have improved the existing standard joint models.

Highlights

  • The joint models for longitudinal data and time-to-event data are aimed to measure the association between the longitudinal marker level and the hazard rate for an event

  • Rizopoulos [2] introduced joint models for internal timedependent covariates and the risk for an event based on linear mixed-effects models and relative risk models

  • The use of a truncated polynomial basis gives us an intuitive and obvious way to model non-linear longitudinal outcome

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Summary

Introduction

The joint models for longitudinal data and time-to-event data are aimed to measure the association between the longitudinal marker level and the hazard rate for an event. Cox [1] has been considered as a very popular joint model to be used for time-independent covariates These models measured the effect of time-independent covariates on the hazard rate for an event. Ding and Wang [4] proposed the use of B-splines with a single multiplicative random effect to link the population mean function with the subject-specific profile. This simple model can gain an easy estimation for parameters, may not be appropriate for many practical applications [5].

The penalized spline joint models
Parameter estimation
Likelihood and score functions
The ECM algorithm
Empirical results
Data description
Findings
Discussion

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