nmTest({ test_that("focei complex event info", { pheno <- function() { ini({ tcl <- log(0.008) # typical value of clearance tv <- log(0.6) # typical value of volume max_dose <- 5 ## var(eta.cl) eta.cl + eta.v ~ c(1, 0.01, 1) ## cov(eta.cl, eta.v), var(eta.v) # interindividual variability on clearance and volume add.err <- 0.1 # residual variability }) model({ cl <- exp(tcl + eta.cl) v <- exp(tv + eta.v) fest <- max_dose/DOSE if (fest > 1) fest <- 1 # error is here d/dt(A1) = - ke * A1 f(A1) <- fest cp = A1 / v cp ~ add(add.err) }) } f <- pheno() expect_error(f$foceiModel, NA) }) test_that("Inner test", { ev <- eventTable() %>% add.sampling(c( 95.99, 119.99, 143.99, 144.25, 144.5, 144.75, 145, 145.5, 146, 146.5, 147, 148, 150, 152, 156, 160, 164, 167.99, 191.99, 215.99, 216.25, 216.5, 216.75, 217, 217.5, 218, 218.5, 219, 220, 222, 224, 228, 232, 236, 240, 252, 264, 276, 288 )) %>% add.dosing(dose = 60000, start.time = 72, nbr.doses = 7, dosing.interval = 24) dv <- c( 263.6, 164.7, 287.3, 1248.7, 1211.5, 1017.7, 1690.1, 1029.8, 890.7, 598.4, 1009.3, 1159.8, 742.2, 724.6, 728.2, 509.7, 243.1, 259.9, 242.2, 281.4, 1500.1, 1281.4, 1200.2, 1378.8, 1373.2, 582.9, 960.2, 720.3, 852.6, 950.3, 654.7, 402.5, 456, 346.5, 268.2, 134.2, 42.6, 25.9, 14.6 ) m1 <- function() { ini({ tcl <- 1.6 tv <- 4.5 eta.cl ~ 0.1 eta.v ~ 0.1 prop.sd <- sqrt(0.1) }) model({ CL <- exp(tcl + eta.cl) V <- exp(tv + eta.v) C2 <- centr / V d/dt(centr) <- -CL * C2 C2 ~ prop(prop.sd) }) } w7 <- data.frame(ev$get.EventTable()) w7$DV <- NA w7$DV[which(is.na(w7$amt))] <- dv w7$ID <- 1 ETA <- matrix(c(-0.147736086922763, -0.294637022436797), ncol = 2) fitPi <- suppressMessages(nlmixr( m1, w7, est="focei", foceiControl( etaMat = ETA, maxOuterIterations = 0, maxInnerIterations = 0, covMethod = "" ) )) expect_equal(418.935, round(fitPi$objective, 3)) }) test_that("boundary value is not triggered by bounds on both sides of zero (#318)", { one.compartment <- function() { ini({ tka <- c(-6, -4, 2) tcl <- 1 tv <- 3.45 eta.ka ~ 0.6 eta.cl ~ 0.3 eta.v ~ 0.1 add.sd <- 0.7 }) model({ ka <- exp(tka + eta.ka)*100 cl <- exp(tcl + eta.cl) v <- exp(tv + eta.v) d/dt(depot) = -ka * depot d/dt(center) = ka * depot - cl / v * center cp = center / v cp ~ add(add.sd) }) } fit <- nlmixr2(one.compartment, theo_sd, est="focei", control = list(print=0)) # SE being present indicates that the covariance matrix was estimated expect_true("SE" %in% names(fit$parFixedDf)) }) })