## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) set.seed(7194) ## ----setup, message=FALSE----------------------------------------------------- library(goldilocks) ## ----hazards------------------------------------------------------------------ cutpoints <- c(0, 6) # one internal cut at 6 months -> two intervals end_of_study <- 24 hc <- prop_to_haz(probs = c(0.30, 0.50), cutpoints = cutpoints, endtime = end_of_study) ht <- prop_to_haz(probs = c(0.18, 0.40), cutpoints = cutpoints, endtime = end_of_study) round(rbind(control = hc, treatment = ht), 4) ## ----check_cif---------------------------------------------------------------- ppwe(hazard = matrix(hc, nrow = 1), cutpoints = cutpoints, end_of_study = end_of_study) ppwe(hazard = matrix(ht, nrow = 1), cutpoints = cutpoints, end_of_study = end_of_study) ## ----prior-------------------------------------------------------------------- prior <- c(0.1, 0.1) # shape and rate of the Gamma prior on each lambda_j ## ----run_one_trial, cache=TRUE------------------------------------------------ out <- survival_adapt( hazard_treatment = ht, hazard_control = hc, cutpoints = cutpoints, N_total = 100, lambda = 5, # enrolments per month lambda_time = 0, # constant accrual rate interim_look = 60, end_of_study = end_of_study, prior = prior, block = 4, rand_ratio = c(1, 1), prop_loss = 0.05, alternative = "less", h0 = 0, Fn = 0.05, Sn = 0.95, prob_ha = 0.975, N_impute = 50, N_mcmc = 2000, method = "bayes") out ## ----flat_design, eval=FALSE-------------------------------------------------- # hc_flat <- prop_to_haz(0.50, endtime = end_of_study) # control, single hazard # ht_flat <- prop_to_haz(0.40, endtime = end_of_study) # treatment, single hazard # # out_flat <- survival_adapt( # hazard_treatment = ht_flat, # hazard_control = hc_flat, # cutpoints = 0, # N_total = 100, # lambda = 5, # lambda_time = 0, # interim_look = 60, # end_of_study = end_of_study, # prior = prior, # block = 4, # rand_ratio = c(1, 1), # prop_loss = 0.05, # alternative = "less", # h0 = 0, # Fn = 0.05, # Sn = 0.95, # prob_ha = 0.975, # N_impute = 50, # N_mcmc = 2000, # method = "bayes")