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joineRML

joineRML is an extension of the joineR package for fitting joint models of time-to-event data and multivariate longitudinal data. The model fitted in joineRML is an extension of the Wulfsohn and Tsiatis (1997) and Henderson et al. (2000) models, which is comprised of (K+1)-sub-models: a Cox proportional hazards regression model (Cox, 1972) and a K-variate linear mixed-effects model - a direct extension of the Laird and Ware (1982) regression model. The model is fitted using a Monte Carlo Expectation-Maximization (MCEM) algorithm, which closely follows the methodology presented by Lin et al. (2002).

Why use joineRML?

As noted in Hickey et al. (2016), there is a lack of statistical software available for fitting joint models to multivariate longitudinal data. This is contrary to a growing methodology in the statistical literature. joineRML is intended to fill this void.

Example

The main workhorse function is mjoint. As a simple example, we use the heart.valve dataset from the package and fit a bivariate joint model.

library(joineRML)
data(heart.valve)
hvd <- heart.valve[!is.na(heart.valve$log.grad) & !is.na(heart.valve$log.lvmi), ]

set.seed(12345)
fit <- mjoint(
    formLongFixed = list("grad" = log.grad ~ time + sex + hs,
                         "lvmi" = log.lvmi ~ time + sex),
    formLongRandom = list("grad" = ~ 1 | num,
                          "lvmi" = ~ time | num),
    formSurv = Surv(fuyrs, status) ~ age,
    data = list(hvd, hvd),
    timeVar = "time")

The fitted model is assigned to fit. We can apply a number of functions to this object, e.g. coef, logLik, plot, print, ranef, fixef, summary, AIC, getVarCov, vcov, confint, sigma, update, formula, resid, and fitted. In addition, several special functions have been added, including dynSurv, dynLong, and baseHaz, as well as plotting functions for objects inheriting from the dynSurv, dynLong, ranef, and mjoint functions. For example,

summary(fit)
plot(fit, param = 'gamma')

mjoint automatically estimates approximate standard errors using the empirical information matrix (Lin et al., 2002), but the bootSE function can be used as an alternative.

Errors and updates

If you spot any errors or wish to see a new feature added, please file an issue at https://github.com/graemeleehickey/joineRML/issues or email Graeme Hickey.

Further learning

For an overview of the model estimation being performed, please see the technical vignette, which can be accessed by

vignette('technical', package = 'joineRML')

For a demonstration of the package, please see the introductory vignette, which can be accessed by

vignette('joineRML', package = 'joineRML')

Funding

This project is funded by the Medical Research Council (Grant number MR/M013227/1).

Using the latest developmental version

To install the latest developmental version, you will need R version (version 3.3.0 or higher) and some additional software depending on what platform you are using.

Windows

If not already installed, you will need to install Rtools. Choose the version that corresponds to the version of R that you are using.

Mac OSX

If not already installed, you will need to install Xcode Command Line Tools. To do this, open a new terminal and run

$ xcode-select --install

From R

The latest developmental version will not yet be available on CRAN. Therefore, to install it, you will need devtools. You can check you are using the correct version by running

Once the prerequisite software is installed, you can install joineRML by running the following command in an R console

library('devtools')
install_github('graemeleehickey/joineRML')

Compatibility with broom

Tidiers methods for objects of class mjoint (i.e. models fit with joineRML) are included in the broom package; this provides methods that allow extracting model estimates, predictions, and comparing models in a straightforward way.

See vignette(topic = "joineRML-broom", package = "joineRML") for further details and examples.

References

  1. Cox DR. Regression models and life-tables. J R Stat Soc Ser B Stat Methodol. 1972; 34(2): 187-220.

  2. Henderson R, Diggle PJ, Dobson A. Joint modelling of longitudinal measurements and event time data. Biostatistics. 2000; 1(4): 465-480.

  3. Hickey GL, Philipson P, Jorgensen A, Kolamunnage-Dona R. Joint modelling of time-to-event and multivariate longitudinal outcomes: recent developments and issues. BMC Med Res Methodol. 2016; 16(1): 117.

  4. Laird NM, Ware JH. Random-effects models for longitudinal data. Biometrics. 1982; 38(4): 963-974.

  5. Lin H, McCulloch CE, Mayne ST. Maximum likelihood estimation in the joint analysis of time-to-event and multiple longitudinal variables. Stat Med. 2002; 21: 2369-2382.

  6. Wulfsohn MS, Tsiatis AA. A joint model for survival and longitudinal data measured with error. Biometrics. 1997; 53(1): 330-339.

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Version

Install

install.packages('joineRML')

Monthly Downloads

1,658

Version

0.4.6

License

GPL-3 | file LICENSE

Issues

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Last Published

January 20th, 2023

Functions in joineRML (0.4.6)

bootSE

Standard errors via bootstrap for an mjoint object
epileptic.qol

Quality of life data following epilepsy drug treatment
formula.mjoint

Extract model formulae from an mjoint object
fitted.mjoint

Extract mjoint fitted values
confint.mjoint

Confidence intervals for model parameters of an mjoint object
baseHaz

The baseline hazard estimate of an mjoint object
fixef.mjoint

Extract fixed effects estimates from an mjoint object
getVarCov.mjoint

Extract variance-covariance matrix of random effects from an mjoint object
dynLong

Dynamic predictions for the longitudinal data sub-model
dynSurv

Dynamic predictions for the time-to-event data sub-model
logLik.mjoint

Extract log-likelihood from an mjoint object
mjoint_tidiers

Tidying methods for joint models for time-to-event data and multivariate longitudinal data
plot.dynSurv

Plot a dynSurv object
mjoint

Fit a joint model to time-to-event data and multivariate longitudinal data
mjoint.object

Fitted mjoint object
joineRML

joineRML
heart.valve

Aortic valve replacement surgery data
plot.mjoint

Plot diagnostics from an mjoint object
sampleData

Sample from an mjoint object
renal

Renal transplantation data
reexports

Objects exported from other packages
residuals.mjoint

Extract mjoint residuals
ranef.mjoint

Extract random effects estimates from an mjoint object
plot.dynLong

Plot a dynLong object
vcov.mjoint

Extract an approximate variance-covariance matrix of estimated parameters from an mjoint object
sigma.mjoint

Extract residual standard deviation(s) from an mjoint object
pbc2

Mayo Clinic primary biliary cirrhosis data
summary.mjoint

Summary of an mjoint object
simData

Simulate data from a joint model
plot.ranef.mjoint

Plot a ranef.mjoint object
plotConvergence

Plot convergence time series for parameter vectors from an mjoint object