BayesianMCPMod 1.2.0
(28-Aug-2025)
- Fixed a bug in 
performBayesianMCPMod() where the model
significance status from the MCP step was sometimes not correctly
assigned to the fitted model in the Mod step. 
- Fixed a bug in 
print.modelFit() where sometimes the
coefficients for the fitted model shapes were not printed
correctly. 
- Fixed a bug in 
getMED() where quantile and evidence
level could sometimes not be matched due to floating-point precision
issues when using bootstrapped quantiles. 
- Changed functions 
getPosterior(),
getCritProb(), and getContr() to accept a
covariance matrix instead of a standard deviation vector as
argument. 
- Added support for none-zero off-diagonal covariance matrices in the
MCP step.
 
- Added bootstrapped differences to
getBootstrapSamples(). 
- Added average MED identification rate as attribute to
assessDesign() output. 
- Made the 
future.apply package optional. 
- Re-worked vignettes and improved the output of print functions.
 
BayesianMCPMod 1.1.0
(07-Mar-2025)
- Fixed a bug in 
plot.modelFits() that would plot
credible bands based on incorrectly selected bootstrapped
quantiles. 
- Added 
getMED(), a function to assess the minimally
efficacious dose (MED) and integrated getMED() into
assessDesign() and
performBayesianMCPMod(). 
- Added parallel processing using the future framework.
 
- Modified the handling of the fit of an average model: Now,
getModelFits() has an argument to fit an average model and
this will be carried forward for all subsequent functions. 
- Re-introduced 
getBootstrapSamples(), a separate
function for bootstrapping samples from the posterior distributions of
the dose levels. 
- Adapted the vignettes to new features.
 
BayesianMCPMod 1.0.2
(06-Feb-2025)
- Addition of new vignette comparing frequentist and Bayesian MCPMod
using vague priors.
 
- Extension of 
getPosterior() to allow the input of a
fully populated variance-covariance matrix. 
- Added the non-monotonic model shapes beta and quadratic.
 
- New argument in 
assessDesign() to optionally skip the
Mod part of MCPMod. 
- Additional tests.
 
BayesianMCPMod 1.0.1
(03-Apr-2024)
- Re-submission of the 
BayesianMCPMod package. 
- Removed a test that occasionally failed on the fedora CRAN test
system.
 
- Fixed a bug in 
getBootstrapQuantiles() that would
return wrong bootstrapped quantiles. 
- Added 
getBootstrapSamples(), a separate function for
bootstrapping samples. 
BayesianMCPMod 1.0.0
(31-Dec-2023)
- Initial release of the 
BayesianMCPMod package. 
- Special thanks to Jana Gierse, Bjoern Bornkamp, Chen Yao, Marius
Thomas & Mitchell Thomann for their review and valuable
comments.
 
- Thanks to Kevin Kunzmann for R infrastructure support and to Frank
Fleischer for methodological support.