multivariate longitudinal outcomes
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2021 ◽  
Vol 2021 ◽  
pp. 1-10
Author(s):  
Behnaz Alafchi ◽  
Hossein Mahjub ◽  
Leili Tapak ◽  
Ghodratollah Roshanaei ◽  
Mohammad Ali Amirzargar

In longitudinal studies, clinicians usually collect longitudinal biomarkers’ measurements over time until an event such as recovery, disease relapse, or death occurs. Joint modeling approaches are increasingly used to study the association between one longitudinal and one survival outcome. However, in practice, a patient may experience multiple disease progression events successively. So instead of modeling of a single event, progression of the disease as a multistate process should be modeled. On the other hand, in such studies, multivariate longitudinal outcomes may be collected and their association with the survival process is of interest. In the present study, we applied a joint model of various longitudinal biomarkers and transitions between different health statuses in patients who underwent renal transplantation. The full joint likelihood approaches are faced with the complexities in computation of the likelihood. So, here, we have proposed two-stage modeling of multivariate longitudinal outcomes and multistate conditions to avoid these complexities. The proposed model showed reliable results compared to the joint model in case of joint modeling of univariate longitudinal biomarker and the multistate process.


2020 ◽  
pp. 096228022094153 ◽  
Author(s):  
Jeffrey Lin ◽  
Kan Li ◽  
Sheng Luo

The random survival forest (RSF) is a non-parametric alternative to the Cox proportional hazards model in modeling time-to-event data. In this article, we developed a modeling framework to incorporate multivariate longitudinal data in the model building process to enhance the predictive performance of RSF. To extract the essential features of the multivariate longitudinal outcomes, two methods were adopted and compared: multivariate functional principal component analysis and multivariate fast covariance estimation for sparse functional data. These resulting features, which capture the trajectories of the multiple longitudinal outcomes, are then included as time-independent predictors in the subsequent RSF model. This non-parametric modeling framework, denoted as functional survival forests, is better at capturing the various trends in both the longitudinal outcomes and the survival model which may be difficult to model using only parametric approaches. These advantages are demonstrated through simulations and applications to the Alzheimer’s Disease Neuroimaging Initiative.


2009 ◽  
Vol 53 (4) ◽  
pp. 1142-1154 ◽  
Author(s):  
Cécile Proust-Lima ◽  
Pierre Joly ◽  
Jean-François Dartigues ◽  
Hélène Jacqmin-Gadda

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