## ----include = FALSE---------------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", fig.width = 6, fig.height = 4, out.width = "90%" ) ## ----setup-------------------------------------------------------------------- library(optedr) ## ----region-1d---------------------------------------------------------------- init_des <- data.frame( Point = c(30, 60, 90), Weight = c(1/3, 1/3, 1/3) ) region <- get_augment_region( criterion = "D-Optimality", init_design = init_des, alpha = 0.25, model = y ~ 10^(a - b / (c + x)), parameters = c("a", "b", "c"), par_values = c(8.07131, 1730.63, 233.426), design_space = c(1, 100), calc_optimal_design = FALSE, delta_val = 0.85 ) print(region) ## ----augment-1d--------------------------------------------------------------- new_pt <- mean(region$region[1:2]) augmented <- augment_design( criterion = "D-Optimality", init_design = init_des, alpha = 0.25, model = y ~ 10^(a - b / (c + x)), parameters = c("a", "b", "c"), par_values = c(8.07131, 1730.63, 233.426), design_space = c(1, 100), calc_optimal_design = FALSE, delta_val = 0.85, new_points = data.frame(Point = new_pt, Weight = 1) ) print(augmented) cat("Sum of weights:", sum(augmented$Weight), "\n") ## ----efficiency-1d------------------------------------------------------------ result_opt <- opt_des( "D-Optimality", y ~ 10^(a - b / (c + x)), c("a", "b", "c"), c(8.07131, 1730.63, 233.426), c(1, 100) ) eff_before <- design_efficiency(init_des, result_opt) eff_after <- design_efficiency(augmented, result_opt) cat("Efficiency before augmenting:", round(eff_before * 100, 2), "%\n") cat("Efficiency after augmenting: ", round(eff_after * 100, 2), "%\n") cat("Gain: ", round((eff_after - eff_before) * 100, 2), "percentage points\n") ## ----augment-with-opt, eval=FALSE--------------------------------------------- # region_opt <- get_augment_region( # criterion = "D-Optimality", # init_design = init_des, # alpha = 0.25, # model = y ~ 10^(a - b / (c + x)), # parameters = c("a", "b", "c"), # par_values = c(8.07131, 1730.63, 233.426), # design_space = c(1, 100), # calc_optimal_design = TRUE, # delta_val = 0.85 # ) ## ----region-2d---------------------------------------------------------------- init_2d <- data.frame( x1 = c(0.8, 10, 5), x2 = c(10, 0.8, 5), Weight = c(1/3, 1/3, 1/3) ) result_2D <- opt_des( criterion = "D-Optimality", model = y ~ Vmax * x1 * x2 / ((K1 + x1) * (K2 + x2)), parameters = c("Vmax", "K1", "K2"), par_values = c(1, 1, 1), design_space = list(x1 = c(0.1, 10), x2 = c(0.1, 10)) ) region_2d <- get_augment_region( criterion = "D-Optimality", init_design = init_2d, alpha = 0.25, model = y ~ Vmax * x1 * x2 / ((K1 + x1) * (K2 + x2)), parameters = c("Vmax", "K1", "K2"), par_values = c(1, 1, 1), design_space = list(x1 = c(0.1, 10), x2 = c(0.1, 10)), calc_optimal_design = FALSE, delta_val = 0.85 ) ## ----augment-2d--------------------------------------------------------------- best_2d <- region_2d$region[which.max(region_2d$region$efficiency), ] eff_antes <- suppressMessages(design_efficiency(init_2d, result_2D)) aug_2d <- augment_design( criterion = "D-Optimality", init_design = init_2d, alpha = 0.25, model = y ~ Vmax * x1 * x2 / ((K1 + x1) * (K2 + x2)), parameters = c("Vmax", "K1", "K2"), par_values = c(1, 1, 1), design_space = list(x1 = c(0.1, 10), x2 = c(0.1, 10)), calc_optimal_design = FALSE, delta_val = 0.85, new_points = data.frame(x1 = best_2d$x1, x2 = best_2d$x2, Weight = 1) ) eff_despues <- suppressMessages(design_efficiency(aug_2d, result_2D)) cat("Efficiency before:", round(eff_antes * 100, 2), "%\n") cat("Efficiency after: ", round(eff_despues * 100, 2), "%\n") print(aug_2d) ## ----region-3d---------------------------------------------------------------- init_3d <- data.frame( x1 = c(0.8, 10, 10, 0.8, 10), x2 = c(10, 0.8, 10, 10, 0.8), x3 = c(10, 10, 0.8, 0.8, 10), Weight = rep(0.2, 5) ) region_3d <- get_augment_region( criterion = "D-Optimality", init_design = init_3d, alpha = 0.45, model = y ~ Vmax * x1 * x2 * x3 / ((K1+x1) * (K2+x2) * (K3+x3)), parameters = c("Vmax", "K1", "K2", "K3"), par_values = c(1, 1, 1, 1), design_space = list(x1 = c(0.1, 10), x2 = c(0.1, 10), x3 = c(0.1, 10)), calc_optimal_design = FALSE, delta_val = 0.93 ) cat("Number of candidate points:", nrow(region_3d$region), "\n") plot(region_3d$plot) ## ----augment-ds--------------------------------------------------------------- region_ds <- get_augment_region( criterion = "Ds-Optimality", init_design = init_2d, alpha = 0.25, model = y ~ Vmax * x1 * x2 / ((K1 + x1) * (K2 + x2)), parameters = c("Vmax", "K1", "K2"), par_values = c(1, 1, 1), design_space = list(x1 = c(0.1, 10), x2 = c(0.1, 10)), calc_optimal_design = FALSE, par_int = c(1), delta_val = 0.85, n_lhs = 5000 ) best_ds <- region_ds$region[which.max(region_ds$region$efficiency), ] aug_ds <- augment_design( criterion = "Ds-Optimality", init_design = init_2d, alpha = 0.25, model = y ~ Vmax * x1 * x2 / ((K1 + x1) * (K2 + x2)), parameters = c("Vmax", "K1", "K2"), par_values = c(1, 1, 1), design_space = list(x1 = c(0.1, 10), x2 = c(0.1, 10)), calc_optimal_design = FALSE, par_int = c(1), delta_val = 0.85, new_points = data.frame(x1 = best_ds$x1, x2 = best_ds$x2, Weight = 1), n_lhs = 5000 ) print(aug_ds)