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VBJM (version 0.1.0)

Variational Inference for Joint Model

Description

The shared random effects joint model is one of the most widely used approaches to study the associations between longitudinal biomarkers and a survival outcome and make dynamic risk predictions using the longitudinally measured biomarkers. One major limitation of joint models is that they could be computationally expensive for complex models where the number of the shared random effects is large. This package can be used to fit complex multivariate joint models using our newly developed algorithm Jieqi Tu and Jiehuan Sun (2023) , which is based on Gaussian variational approximate inference and is computationally efficient.

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Version

Install

install.packages('VBJM')

Monthly Downloads

195

Version

0.1.0

License

GPL-2

Maintainer

Jiehuan Sun

Last Published

September 2nd, 2023

Functions in VBJM (0.1.0)

LongData

Simulated Longtidunal Data
VBJM_fit

The function to fit VBJM.
SurvData

Simulated Survival Data
control_list

control_list