# Synthetic data for hierarchical kinetic models # Refactored version of the code previously in tests/testthat/setup_script.R # The number of datasets was 3 for FOMC, and 10 for HS in that script, now it # is always 15 for consistency library(mkin) # We use mkinmod and mkinpredict sampling_times = c(0, 1, 3, 7, 14, 28, 60, 90, 120) n <- 15 log_sd <- 0.3 err_1 = list(const = 1, prop = 0.05) tc <- function(value) sigma_twocomp(value, err_1$const, err_1$prop) const <- function(value) 2 set.seed(123456) SFO <- mkinmod(parent = mkinsub("SFO")) sfo_pop <- list(parent_0 = 100, k_parent = 0.03) sfo_parms <- as.matrix(data.frame( k_parent = rlnorm(n, log(sfo_pop$k_parent), log_sd))) set.seed(123456) ds_sfo <- lapply(1:n, function(i) { ds_mean <- mkinpredict(SFO, sfo_parms[i, ], c(parent = sfo_pop$parent_0), sampling_times) add_err(ds_mean, tc, n = 1)[[1]] }) attr(ds_sfo, "pop") <- sfo_pop attr(ds_sfo, "parms") <- sfo_parms set.seed(123456) FOMC <- mkinmod(parent = mkinsub("FOMC")) fomc_pop <- list(parent_0 = 100, alpha = 2, beta = 8) fomc_parms <- as.matrix(data.frame( alpha = rlnorm(n, log(fomc_pop$alpha), 0.4), beta = rlnorm(n, log(fomc_pop$beta), 0.2))) set.seed(123456) ds_fomc <- lapply(1:n, function(i) { ds_mean <- mkinpredict(FOMC, fomc_parms[i, ], c(parent = fomc_pop$parent_0), sampling_times) add_err(ds_mean, tc, n = 1)[[1]] }) attr(ds_fomc, "pop") <- fomc_pop attr(ds_fomc, "parms") <- fomc_parms set.seed(123456) DFOP <- mkinmod(parent = mkinsub("DFOP")) dfop_pop <- list(parent_0 = 100, k1 = 0.06, k2 = 0.015, g = 0.4) dfop_parms <- as.matrix(data.frame( k1 = rlnorm(n, log(dfop_pop$k1), log_sd), k2 = rlnorm(n, log(dfop_pop$k2), log_sd), g = plogis(rnorm(n, qlogis(dfop_pop$g), log_sd)))) set.seed(123456) ds_dfop <- lapply(1:n, function(i) { ds_mean <- mkinpredict(DFOP, dfop_parms[i, ], c(parent = dfop_pop$parent_0), sampling_times) add_err(ds_mean, tc, n = 1)[[1]] }) attr(ds_dfop, "pop") <- dfop_pop attr(ds_dfop, "parms") <- dfop_parms set.seed(123456) HS <- mkinmod(parent = mkinsub("HS")) hs_pop <- list(parent_0 = 100, k1 = 0.08, k2 = 0.01, tb = 15) hs_parms <- as.matrix(data.frame( k1 = rlnorm(n, log(hs_pop$k1), log_sd), k2 = rlnorm(n, log(hs_pop$k2), log_sd), tb = rlnorm(n, log(hs_pop$tb), 0.1))) set.seed(123456) ds_hs <- lapply(1:n, function(i) { ds_mean <- mkinpredict(HS, hs_parms[i, ], c(parent = hs_pop$parent_0), sampling_times) add_err(ds_mean, const, n = 1)[[1]] }) attr(ds_hs, "pop") <- hs_pop attr(ds_hs, "parms") <- hs_parms set.seed(123456) DFOP_SFO <- mkinmod( parent = mkinsub("DFOP", "m1"), m1 = mkinsub("SFO"), quiet = TRUE) dfop_sfo_pop <- list(parent_0 = 100, k_m1 = 0.007, f_parent_to_m1 = 0.5, k1 = 0.1, k2 = 0.02, g = 0.5) dfop_sfo_parms <- as.matrix(data.frame( k1 = rlnorm(n, log(dfop_sfo_pop$k1), log_sd), k2 = rlnorm(n, log(dfop_sfo_pop$k2), log_sd), g = plogis(rnorm(n, qlogis(dfop_sfo_pop$g), log_sd)), f_parent_to_m1 = plogis(rnorm(n, qlogis(dfop_sfo_pop$f_parent_to_m1), log_sd)), k_m1 = rlnorm(n, log(dfop_sfo_pop$k_m1), log_sd))) ds_dfop_sfo_mean <- lapply(1:n, function(i) { mkinpredict(DFOP_SFO, dfop_sfo_parms[i, ], c(parent = dfop_sfo_pop$parent_0, m1 = 0), sampling_times) } ) set.seed(123456) ds_dfop_sfo <- lapply(ds_dfop_sfo_mean, function(ds) { add_err(ds, sdfunc = function(value) sqrt(err_1$const^2 + value^2 * err_1$prop^2), n = 1, secondary = "m1")[[1]] }) attr(ds_dfop_sfo, "pop") <- dfop_sfo_pop attr(ds_dfop_sfo, "parms") <- dfop_sfo_parms #save(ds_sfo, ds_fomc, ds_dfop, ds_hs, ds_dfop_sfo, file = "data/ds_mixed.rda", version = 2)