The goal of MBNMAtime
is to provide a collection of useful commands that allow users to run time-course Model-Based Network Meta-Analyses (MBNMA) or Model-Based Meta-Analyses (MBMA). This allows meta-analysis of studies with multiple follow-up measurements that can account for time-course for a single or multiple treatment comparisons.
Including all available follow-up measurements within a study makes use of all the available evidence in a way that maintains connectivity between treatments, and it does so in a way that explains time-course, thus explaining heterogeneity and inconsistency that may be present in a standard Network Meta-Analysis (NMA). All models and analyses are implemented in a Bayesian framework, following an extension of the standard NMA methodology presented by Lu and Ades (2004) and are run in JAGS (JAGS Computer Program 2017). For full details of time-course MBNMA methodology see Pedder et al. (2019).
Currently the package can be installed directly from GitHub using the devtools
R package:
# First install devtools
install.packages("devtools")
# Then install MBNMAtime directly from GitHub
devtools::install_github("hugaped/MBNMAtime")
Once it is released on CRAN (i.e. not yet!), you will (hopefully) be able to install the released version of MBNMAtime
from CRAN with:
Functions within MBNMAtime
follow a clear pattern of use:
mb.network()
mb.run()
, or any of the available wrapper time-course functionsmb.nodesplit()
predict()
At each of these stages there are a number of informative plots that can be generated to help make sense of your data and the models that you are fitting. Exported functions in the package are connected like so:
JAGS Computer Program. 2017. http://mcmc-jags.sourceforge.net.
Lu, G., and A. E. Ades. 2004. “Combination of Direct and Indirect Evidence in Mixed Treatment Comparisons.” Journal Article. Stat Med 23 (20): 3105–24. https://doi.org/10.1002/sim.1875.
Pedder, H., S. Dias, M. Bennetts, M. Boucher, and N. J. Welton. 2019. “Modelling Time-Course Relationships with Multiple Treatments: Model-Based Network Meta-Analysis for Continuous Summary Outcomes.” Journal Article. Res Synth Methods 10 (2): 267–86.