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jmBIG (version 0.1.3)

Joint Longitudinal and Survival Model for Big Data

Description

Provides analysis tools for big data where the sample size is very large. It offers a suite of functions for fitting and predicting joint models, which allow for the simultaneous analysis of longitudinal and time-to-event data. This statistical methodology is particularly useful in medical research where there is often interest in understanding the relationship between a longitudinal biomarker and a clinical outcome, such as survival or disease progression. This can be particularly useful in a clinical setting where it is important to be able to predict how a patient's health status may change over time. Overall, this package provides a comprehensive set of tools for joint modeling of BIG data obtained as survival and longitudinal outcomes with both Bayesian and non-Bayesian approaches. Its versatility and flexibility make it a valuable resource for researchers in many different fields, particularly in the medical and health sciences.

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Version

Install

install.packages('jmBIG')

Monthly Downloads

207

Version

0.1.3

License

GPL-3

Maintainer

Atanu Bhattacharjee

Last Published

January 19th, 2025

Functions in jmBIG (0.1.3)

surv2

survival data
print.jmstanBig

print.jmstanBig
predJRML

Prediction using joineRML
print.joinRMLBig

print.joinRMLBig
postTraj

Prediction using rstanarm
postSurvfit

Prediction using rstanarm
cisurvfitJMCS

Bootstrapped CI using FastJM
plot_cisurvfitJMCS

Plot for cisurvfitJMCS object
jmstanBig

Joint model for BIG data using rstanarm
joinRMLBig

Joint model for BIG data using joineRML
jmcsBig

Joint model for BIG data using FastJM
long2

longitudinal data
longsurv

longitudinal- survival dataset
jmbayesBig

Joint model for BIG data using JMbayes2
print.jmcsBig

print.jmcsBig
print.jmbayesBig

print.jmbayesBig
predJMbayes

Prediction using JMbayes2
survfitJMCS

Prediction using FastJM