The rbmi
package is used for the imputation of missing data in clinical trials with continuous multivariate normal longitudinal outcomes.
It supports imputation under a missing at random (MAR) assumption, reference-based imputation methods,
and delta adjustments (as required for sensitivity analysis such as tipping point analyses). The package implements both Bayesian and
approximate Bayesian multiple imputation combined with Rubin's rules for inference, and frequentist conditional mean imputation combined with
(jackknife or bootstrap) resampling.
The package can be installed directly from CRAN via:
install.packages("rbmi")
Note that the usage of Bayesian multiple imputation requires the installation of the suggested package rstan.
install.packages("rstan")
The package is designed around its 4 core functions:
draws()
- Fits multiple imputation modelsimpute()
- Imputes multiple datasetsanalyse()
- Analyses multiple datasetspool()
- Pools multiple results into a single statistic
The basic usage of these core functions is described in the quickstart vignette:
vignette(topic = "quickstart", package = "rbmi")
For clarification on the current validation status of rbmi
please see the FAQ vignette.
For any help with regards to using the package or if you find a bug please create a GitHub issue