## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>" ) ## ----setup, message=FALSE, warning=FALSE-------------------------------------- library(SuperSurv) set.seed(123) # Load built-in data data("metabric", package = "SuperSurv") # Define predictors and time grid X <- metabric[, grep("^x", names(metabric))] new.times <- seq(10, 150, by = 10) ## ----train-model-------------------------------------------------------------- fit <- SuperSurv( time = metabric$duration, event = metabric$event, X = X, newdata = X, new.times = new.times, event.library = c("surv.coxph", "surv.rfsrc"), cens.library = c("surv.coxph"), control = list(saveFitLibrary = TRUE) ) ## ----causal-effect------------------------------------------------------------ # Estimate the adjusted difference up to tau = 100 months results <- estimate_marginal_rmst( fit = fit, data = metabric, trt_col = "x4", times = new.times, tau = 100 ) print(results$ATE_RMST) ## ----------------------------------------------------------------------------- rmst_results_inf <- estimate_marginal_rmst( fit = fit, data = metabric, trt_col = "x4", times = new.times, tau = 100, inference = TRUE, B = 100, seed = 123 ) rmst_results_inf$ATE_RMST rmst_results_inf$SE_RMST rmst_results_inf$CI_RMST format.pval(rmst_results_inf$p_value, digits = 3, eps = 1e-16) ## ----plot-curve--------------------------------------------------------------- # Plot the Delta RMST across a sequence of tau values tau_grid <- seq(20, 140, by = 30) plot_marginal_rmst_curve( fit = fit, data = metabric, trt_col = "x4", times = new.times, tau_seq = tau_grid, inference = TRUE, B = 100, seed = 123, ci_level = 0.95 ) ## ----plot-obs----------------------------------------------------------------- plot_rmst_vs_obs( fit = fit, data = metabric, time_col = "duration", event_col = "event", times = new.times, tau = 350 )