Overview
twoCoprimary provides comprehensive tools for sample size and power calculation in clinical trials with two co-primary endpoints. In co-primary endpoint trials, treatment success requires demonstrating statistically significant effects on all primary endpoints simultaneously. This package implements state-of-the-art methodologies that properly account for correlation between endpoints, leading to more efficient trial designs.
Key Features
The package supports five combinations of co-primary endpoints:
- Two continuous endpoints - Normal distribution with correlation (Sozu et al., 2011)
- Two binary endpoints (asymptotic) - Large sample approximation methods (Sozu et al., 2010)
- Two binary endpoints (exact) - Exact inference for small to medium samples (Homma & Yoshida, 2025)
- Mixed continuous and binary - Biserial correlation structure (Sozu et al., 2012)
- Mixed count and continuous - Negative binomial for overdispersed counts (Homma & Yoshida, 2024)
All methods provide: - ✅ Sample size calculation given target power - ✅ Power calculation given sample size - ✅ Proper Type I error control without multiplicity adjustment - ✅ Accounting for correlation between endpoints - ✅ Support for unbalanced allocation ratios
Installation
Install from CRAN:
install.packages("twoCoprimary")Or install the development version from GitHub:
# install.packages("pak")
pak::pak("gosukehommaEX/twoCoprimary")Quick Start
Example 1: Two Continuous Endpoints
Calculate sample size for a trial with two continuous co-primary endpoints:
library(twoCoprimary)
# Sample size calculation
result <- ss2Continuous(
delta1 = 0.5, # Standardized effect size for endpoint 1
delta2 = 0.4, # Standardized effect size for endpoint 2
rho = 0.3, # Correlation between endpoints
alpha = 0.025, # One-sided significance level
power = 0.80, # Target power
r = 1 # Allocation ratio (1:1)
)
print(result)
#>
#> Sample size calculation for two continuous co-primary endpoints
#>
#> Parameters:
#> Effect sizes: delta1 = 0.5, delta2 = 0.4
#> Correlation: rho = 0.3
#> Significance level: alpha = 0.025 (one-sided)
#> Target power: 1 - beta = 0.8
#> Allocation ratio: r = 1
#>
#> Results:
#> Sample size per group: n1 = n2 = 130
#> Total sample size: N = 260Example 2: Two Binary Endpoints (Exact Method)
For small to medium sample sizes, use exact methods:
# Sample size with exact inference
result_exact <- ss2BinaryExact(
p11 = 0.30, p12 = 0.15, # Response rates for endpoint 1
p21 = 0.50, p22 = 0.30, # Response rates for endpoint 2
rho1 = 0.3, rho2 = 0.3, # Within-group correlations
alpha = 0.025, # One-sided significance level
power = 0.80, # Target power
r = 1, # Allocation ratio
test_method = "Fisher" # Exact test method
)
print(result_exact)Example 3: Mixed Count and Continuous Endpoints
For COPD/asthma trials with exacerbation count and lung function:
# Exacerbation rates (events per year)
r1 <- 0.80 # Treatment group
r2 <- 1.25 # Control group
# Sample size calculation
result_mixed <- ss2MixedCountContinuous(
r1 = r1, r2 = r2, # Event rates
nu = 1.0, # Dispersion parameter
t = 1, # Follow-up period (years)
mu1 = 250, mu2 = 200, # Mean FEV1 (mL)
sd = 300, # Common SD
rho1 = 0.5, rho2 = 0.5, # Correlations
alpha = 0.025,
power = 0.80,
r = 1
)
print(result_mixed)References
Homma, G., & Yoshida, T. (2025). Exact power and sample size in clinical trials with two co-primary binary endpoints. Statistical Methods in Medical Research, 34(1). https://doi.org/10.1177/09622802251368697
Homma, G., & Yoshida, T. (2024). Sample size calculation for clinical trials with co‐primary outcomes: Negative binomial and continuous outcomes. Pharmaceutical Statistics, 23(3), 368-392. https://doi.org/10.1002/pst.2337
Sozu, T., Kanou, T., Hamada, C., & Yoshimura, I. (2011). Power and sample size calculations in clinical trials with multiple primary variables. Japanese Journal of Biometrics, 32(2), 83-96. https://doi.org/10.5691/jjb.32.83
Sozu, T., Sugimoto, T., Hamasaki, T., & Evans, S. R. (2012). Sample size determination in clinical trials with multiple co-primary binary endpoints including mixed binary and continuous endpoints. Biometrical Journal, 54(5), 716-729. https://doi.org/10.1002/bimj.201100221
Sozu, T., Sugimoto, T., Hamasaki, T., & Evans, S. R. (2010). Sample size determination in superiority clinical trials with multiple co-primary correlated endpoints. Statistics in Medicine, 29(21), 2219-2227. https://doi.org/10.1002/sim.3972
Citation
citation("twoCoprimary")Getting Help
- For bug reports and feature requests, please use the GitHub issue tracker
- For questions about usage, see the documentation website
