| datasim_bin | Simulate binary data from a platform trial with a shared control arm and a given number of experimental treatment arms entering at given time points |
| datasim_cont | Simulate continuous data from a platform trial with a shared control arm and a given number of experimental treatment arms entering at given time points |
| fixmodel_bin | Frequentist logistic regression model analysis for binary data adjusting for periods |
| fixmodel_cal_bin | Frequentist logistic regression model analysis for binary data adjusting for calendar time units |
| fixmodel_cal_cont | Frequentist linear regression model analysis for continuous data adjusting for calendar time units |
| fixmodel_cont | Frequentist linear regression model analysis for continuous data adjusting for periods |
| gam_cont | Generalized additive model analysis for continuous data |
| get_ss_matrix | Sample size matrix for a platform trial with a given number of treatment arms |
| inv_u_trend | Generation of an inverted-u trend |
| linear_trend | Generation of a linear trend that starts in a given period |
| MAPprior_bin | Analysis for binary data using the MAP Prior approach |
| MAPprior_cont | Analysis for continuous data using the MAP Prior approach |
| mixmodel_AR1_cal_cont | Mixed regression model analysis for continuous data adjusting for calendar time units as a random factor with AR1 correlation structure |
| mixmodel_AR1_cont | Mixed regression model analysis for continuous data adjusting for periods as a random factor with AR1 correlation structure |
| mixmodel_cal_cont | Mixed regression model analysis for continuous data adjusting for calendar time units as a random factor |
| mixmodel_cont | Mixed regression model analysis for continuous data adjusting for periods as a random factor |
| piecewise_cal_cont | Model-based analysis for continuous data using discontinuous piecewise polynomials per calendar time unit |
| piecewise_cont | Model-based analysis for continuous data using discontinuous piecewise polynomials per period |
| plot_trial | Function for visualizing the simulated trial |
| poolmodel_bin | Pooled analysis for binary data |
| poolmodel_cont | Pooled analysis for continuous data |
| seasonal_trend | Generation of a seasonal trend |
| sepmodel_adj_bin | Separate analysis for binary data adjusted for periods |
| sepmodel_adj_cont | Separate analysis for continuous data adjusted for periods |
| sepmodel_bin | Separate analysis for binary data |
| sepmodel_cont | Separate analysis for continuous data |
| sim_study | Wrapper function performing simulation studies for a given set of scenarios (not parallelized) |
| sim_study_par | Wrapper function performing simulation studies for a given set of scenarios (parallelized on replication level) |
| splines_cal_cont | Spline regression analysis for continuous data with knots placed according to calendar time units |
| splines_cont | Spline regression analysis for continuous data with knots placed according to periods |
| sw_trend | Generation of stepwise trend with equal jumps between periods |
| timemachine_bin | Time machine analysis for binary data |
| timemachine_cont | Time machine analysis for continuous data |