bbssr 1.0.2
Minor Updates
- Fixed title case in DESCRIPTION file for CRAN submission
 
- Updated from “Re-estimation” to “Re-Estimation” as requested by
CRAN
 
bbssr 1.0.1
Minor Updates
- Function Removal: Removed
ClopperPearsonCI() function as it was not being used in the
main BSSR functionality 
- Documentation Updates: Updated all documentation to
reflect the removal of confidence interval functionality
 
- Package Optimization: Streamlined package to focus
on core BSSR methods
 
bbssr 1.0.0
Initial Release
This is the first release of bbssr, a comprehensive R
package for blinded sample size re-estimation (BSSR) in two-arm clinical
trials with binary endpoints.
Main Features
- Blinded Sample Size Re-estimation: Implement
adaptive trial designs with 
BinaryPowerBSSR() 
- Multiple Exact Statistical Tests: Support for 5
different exact tests:
- Pearson chi-squared test (
'Chisq') 
- Fisher exact test (
'Fisher') 
- Fisher mid-p test (
'Fisher-midP') 
- Z-pooled exact unconditional test (
'Z-pool') 
- Boschloo exact unconditional test (
'Boschloo') 
 
- Flexible Design Options: Choose between restricted,
unrestricted, and weighted BSSR approaches
 
- Traditional Methods: Calculate power
(
BinaryPower()) and sample sizes
(BinarySampleSize()) for fixed designs 
- Exact Confidence Intervals: Clopper-Pearson
confidence intervals (
ClopperPearsonCI()) 
- Rejection Regions: Compute exact rejection regions
(
BinaryRR()) 
Design Approaches
- Restricted Design: Conservative approach ensuring
final sample size ≥ initial sample size
 
- Unrestricted Design: Flexible approach allowing
both sample size increases and decreases
 
- Weighted Design: Advanced approach using weighted
averaging across interim scenarios
 
Documentation
- Comprehensive documentation with examples for all functions
 
- Detailed vignettes explaining methodology and usage:
vignette("bbssr-introduction") - Getting started
guide 
vignette("bbssr-statistical-methods") - Statistical
methodology 
 
- Complete README with practical examples
 
Statistical Validity
- All methods maintain exact Type I error control at specified α
level
 
- Exact statistical tests rather than asymptotic approximations
 
- Suitable for small to moderate sample sizes common in clinical
trials
 
Dependencies
- Base R (≥ 3.5.0)
 
fpCompare for robust floating-point comparisons 
stats for statistical functions 
Development
- Package follows R package development best practices
 
- Comprehensive documentation with roxygen2
 
- Ready for CRAN submission