context("Complex test case from Schaefer et al. (2007) Piacenza paper") test_that("Complex test case from Schaefer (2007) can be reproduced (10% tolerance)", { skip_on_cran() schaefer07_complex_model <- mkinmod( parent = list(type = "SFO", to = c("A1", "B1", "C1"), sink = FALSE), A1 = list(type = "SFO", to = "A2"), B1 = list(type = "SFO"), C1 = list(type = "SFO"), A2 = list(type = "SFO"), use_of_ff = "max", quiet = TRUE) schaefer07_long <- mkin_wide_to_long(schaefer07_complex_case, time = "time") fit.default <- mkinfit(schaefer07_complex_model, schaefer07_long, quiet = TRUE) s <- summary(fit.default) r <- schaefer07_complex_results with(as.list(fit.default$bparms.optim), { r$mkin <<- c( k_parent, s$distimes["parent", "DT50"], s$ff["parent_A1"], k_A1, s$distimes["A1", "DT50"], s$ff["parent_B1"], k_B1, s$distimes["B1", "DT50"], s$ff["parent_C1"], k_C1, s$distimes["C1", "DT50"], s$ff["A1_A2"], k_A2, s$distimes["A2", "DT50"]) } ) r$means <- (r$KinGUI + r$ModelMaker)/2 r$mkin.deviation <- abs(round(100 * ((r$mkin - r$means)/r$means), digits=1)) expect_equal(r$mkin.deviation < 10, rep(TRUE, 14)) # In previous versions of mkinfit, if we used optimisation algorithm 'Marq' # we got a local minimum with a sum of squared residuals of 273.3707 # When using 'Marq', we needed to give a good starting estimate e.g. for k_A2 in # order to get the optimum with sum of squared residuals 240.5686 ssr <- sum(fit.default$data$residual^2) expect_equal(round(ssr, 4), 240.5686) })