metapack (version 0.1.x) provides function(s) to perform Bayesian inference for (network) meta-analytic models including the ones introduced in the following papers:
- Yao, H., Kim, S., Chen, M. H., Ibrahim, J. G., Shah, A. K., & Lin, J. (2015). Bayesian inference for multivariate meta-regression with a partially observed within-study sample covariance matrix. Journal of the American Statistical Association, 110(510), 528-544.
- Li, H, Lim, D, Chen, M-H, et al. Bayesian network meta‐regression hierarchical models using heavy-tailed multivariate random effects with covariate-dependent variances. Statistics in Medicine. 2021; 1-22. doi:10.1002/sim.8983
metapack takes advantage of formula-parsing to extract relevant information to configure a meta-analytic model. Aside from the data characteristic (aggregate v. IPD) and the response type (univariate v. multivariate), all other modeling choices fall into prior specification.
To see the model specification, please refer to the corresponding papers, the long-form vignette of this package, or the following paper:
- Lim, D., Chen, M. H., Ibrahim, J. G., Kim, S., Shah, A. K., & Lin, J. (2022). metapack: An R Package for Bayesian Meta-Analysis and Network Meta-Analysis with a Unified Formula Interface. The R journal, 14(3), 142.
install.packages("metapack")
If you encounter a clear bug, please file an issue with a minimal reproducible example on GitHub. For questions and other discussion, please email the maintainer.
- Daeyoung Lim Daeyoung.Lim@fda.hhs.gov
- Ming-Hui Chen ming-hui.chen@uconn.edu
- Sungduk Kim kims2@mail.nih.gov
- Joseph G. Ibrahim ibrahim@bios.unc.edu
- Arvind Shah arvind_shah@merck.com
- Jianxin Lin jianxin_lin@merck.com
- Dr. Chen and Dr. Ibrahim's research was partially supported by NIH grants #GM70335 and #P01CA142538, and Merck & Co., Inc., Kenilworth, NJ, USA.
- Dr. Kim's research was supported by the Intramural Research Program of National Institutes of Health, National Cancer Institute.