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diff --git a/vignettes/web_only/dimethenamid_2018.rmd b/vignettes/web_only/dimethenamid_2018.rmd new file mode 100644 index 00000000..08661b5a --- /dev/null +++ b/vignettes/web_only/dimethenamid_2018.rmd @@ -0,0 +1,520 @@ +--- +title: Example evaluations of the dimethenamid data from 2018 +author: Johannes Ranke +date: Last change 11 January 2022, built on `r format(Sys.Date(), format = "%d %b %Y")` +output: + html_document: + toc: true + toc_float: true + code_folding: hide + fig_retina: null +bibliography: ../references.bib +vignette: > + %\VignetteEngine{knitr::rmarkdown} + %\VignetteEncoding{UTF-8} +--- + +[Wissenschaftlicher Berater, Kronacher Str. 12, 79639 Grenzach-Wyhlen, Germany](http://www.jrwb.de) + +```{r, include = FALSE} +require(knitr) +require(mkin) +require(nlme) +options(digits = 5) +opts_chunk$set( + comment = "", + tidy = FALSE, + cache = TRUE +) +``` + +# Introduction + +During the preparation of the journal article on nonlinear mixed-effects models +in degradation kinetics [@ranke2021] and the analysis of the dimethenamid +degradation data analysed therein, a need for a more detailed analysis using +not only nlme and saemix, but also nlmixr for fitting the mixed-effects models +was identified, as many model variants do not converge when fitted with nlme, +and not all relevant error models can be fitted with saemix. + +This vignette is an attempt to satisfy this need. + +# Data + +Residue data forming the basis for the endpoints derived in the conclusion on +the peer review of the pesticide risk assessment of dimethenamid-P published by +the European Food Safety Authority (EFSA) in 2018 [@efsa_2018_dimethenamid] +were transcribed from the risk assessment report [@dimethenamid_rar_2018_b8] +which can be downloaded from the Open EFSA repository +[https://open.efsa.europa.eu/study-inventory/EFSA-Q-2014-00716](https://open.efsa.europa.eu). + +The data are [available in the mkin +package](https://pkgdown.jrwb.de/mkin/reference/dimethenamid_2018.html). The +following code (hidden by default, please use the button to the right to show +it) treats the data available for the racemic mixture dimethenamid (DMTA) and +its enantiomer dimethenamid-P (DMTAP) in the same way, as no difference between +their degradation behaviour was identified in the EU risk assessment. The +observation times of each dataset are multiplied with the corresponding +normalisation factor also available in the dataset, in order to make it +possible to describe all datasets with a single set of parameters. + +Also, datasets observed in the same soil are merged, resulting in dimethenamid +(DMTA) data from six soils. + +```{r dimethenamid_data} +library(mkin, quietly = TRUE) +dmta_ds <- lapply(1:7, function(i) { + ds_i <- dimethenamid_2018$ds[[i]]$data + ds_i[ds_i$name == "DMTAP", "name"] <- "DMTA" + ds_i$time <- ds_i$time * dimethenamid_2018$f_time_norm[i] + ds_i +}) +names(dmta_ds) <- sapply(dimethenamid_2018$ds, function(ds) ds$title) +dmta_ds[["Elliot"]] <- rbind(dmta_ds[["Elliot 1"]], dmta_ds[["Elliot 2"]]) +dmta_ds[["Elliot 1"]] <- NULL +dmta_ds[["Elliot 2"]] <- NULL +``` + +# Parent degradation + +We evaluate the observed degradation of the parent compound using simple +exponential decline (SFO) and biexponential decline (DFOP), using constant +variance (const) and a two-component variance (tc) as error models. + +## Separate evaluations + +As a first step, to get a visual impression of the fit of the different models, +we do separate evaluations for each soil using the mmkin function from the +mkin package: + +```{r f_parent_mkin} +f_parent_mkin_const <- mmkin(c("SFO", "DFOP"), dmta_ds, + error_model = "const", quiet = TRUE) +f_parent_mkin_tc <- mmkin(c("SFO", "DFOP"), dmta_ds, + error_model = "tc", quiet = TRUE) +``` + +The plot of the individual SFO fits shown below suggests that at least in some +datasets the degradation slows down towards later time points, and that the +scatter of the residuals error is smaller for smaller values (panel to the +right): + +```{r f_parent_mkin_sfo_const} +plot(mixed(f_parent_mkin_const["SFO", ])) +``` + +Using biexponential decline (DFOP) results in a slightly more random +scatter of the residuals: + +```{r f_parent_mkin_dfop_const} +plot(mixed(f_parent_mkin_const["DFOP", ])) +``` + +The population curve (bold line) in the above plot results from taking the mean +of the individual transformed parameters, i.e. of log k1 and log k2, as well as +of the logit of the g parameter of the DFOP model). Here, this procedure +does not result in parameters that represent the degradation well, because in some +datasets the fitted value for k2 is extremely close to zero, leading to a log +k2 value that dominates the average. This is alleviated if only rate constants +that pass the t-test for significant difference from zero (on the untransformed +scale) are considered in the averaging: + +```{r f_parent_mkin_dfop_const_test} +plot(mixed(f_parent_mkin_const["DFOP", ]), test_log_parms = TRUE) +``` + +While this is visually much more satisfactory, such an average procedure could +introduce a bias, as not all results from the individual fits enter the +population curve with the same weight. This is where nonlinear mixed-effects +models can help out by treating all datasets with equally by fitting a +parameter distribution model together with the degradation model and the error +model (see below). + +The remaining trend of the residuals to be higher for higher predicted residues +is reduced by using the two-component error model: + +```{r f_parent_mkin_dfop_tc_test} +plot(mixed(f_parent_mkin_tc["DFOP", ]), test_log_parms = TRUE) +``` + +## Nonlinear mixed-effects models + +Instead of taking a model selection decision for each of the individual fits, we fit +nonlinear mixed-effects models (using different fitting algorithms as implemented in +different packages) and do model selection using all available data at the same time. +In order to make sure that these decisions are not unduly influenced by the +type of algorithm used, by implementation details or by the use of wrong control +parameters, we compare the model selection results obtained with different R +packages, with different algorithms and checking control parameters. + +### nlme + +The nlme package was the first R extension providing facilities to fit nonlinear +mixed-effects models. We would like to do model selection from all four +combinations of degradation models and error models based on the AIC. +However, fitting the DFOP model with constant variance and using default +control parameters results in an error, signalling that the maximum number +of 50 iterations was reached, potentially indicating overparameterisation. +Nevertheless, the algorithm converges when the two-component error model is +used in combination with the DFOP model. This can be explained by the fact +that the smaller residues observed at later sampling times get more +weight when using the two-component error model which will counteract the +tendency of the algorithm to try parameter combinations unsuitable for +fitting these data. + +```{r f_parent_nlme, warning = FALSE} +library(nlme) +f_parent_nlme_sfo_const <- nlme(f_parent_mkin_const["SFO", ]) +# f_parent_nlme_dfop_const <- nlme(f_parent_mkin_const["DFOP", ]) +f_parent_nlme_sfo_tc <- nlme(f_parent_mkin_tc["SFO", ]) +f_parent_nlme_dfop_tc <- nlme(f_parent_mkin_tc["DFOP", ]) +``` + +Note that a certain degree of overparameterisation is also indicated by a +warning obtained when fitting DFOP with the two-component error model ('false +convergence' in the 'LME step' in iteration 3). However, as this warning does +not occur in later iterations, and specifically not in the last of the +`r f_parent_nlme_dfop_tc$numIter` iterations, we can ignore this warning. + +The model comparison function of the nlme package can directly be applied +to these fits showing a much lower AIC for the DFOP model fitted with the +two-component error model. Also, the likelihood ratio test indicates that this +difference is significant as the p-value is below 0.0001. + +```{r AIC_parent_nlme} +anova( + f_parent_nlme_sfo_const, f_parent_nlme_sfo_tc, f_parent_nlme_dfop_tc +) +``` + +In addition to these fits, attempts were also made to include correlations +between random effects by using the log Cholesky parameterisation of the matrix +specifying them. The code used for these attempts can be made visible below. + +```{r f_parent_nlme_logchol, warning = FALSE, eval = FALSE} +f_parent_nlme_sfo_const_logchol <- nlme(f_parent_mkin_const["SFO", ], + random = nlme::pdLogChol(list(DMTA_0 ~ 1, log_k_DMTA ~ 1))) +anova(f_parent_nlme_sfo_const, f_parent_nlme_sfo_const_logchol) +f_parent_nlme_sfo_tc_logchol <- nlme(f_parent_mkin_tc["SFO", ], + random = nlme::pdLogChol(list(DMTA_0 ~ 1, log_k_DMTA ~ 1))) +anova(f_parent_nlme_sfo_tc, f_parent_nlme_sfo_tc_logchol) +f_parent_nlme_dfop_tc_logchol <- nlme(f_parent_mkin_const["DFOP", ], + random = nlme::pdLogChol(list(DMTA_0 ~ 1, log_k1 ~ 1, log_k2 ~ 1, g_qlogis ~ 1))) +anova(f_parent_nlme_dfop_tc, f_parent_nlme_dfop_tc_logchol) +``` + +While the SFO variants converge fast, the additional parameters introduced +by this lead to convergence warnings for the DFOP model. The model comparison +clearly show that adding correlations between random effects does not improve +the fits. + +The selected model (DFOP with two-component error) fitted to the data assuming +no correlations between random effects is shown below. + +```{r plot_parent_nlme} +plot(f_parent_nlme_dfop_tc) +``` + +### saemix + +The saemix package provided the first Open Source implementation of the +Stochastic Approximation to the Expectation Maximisation (SAEM) algorithm. +SAEM fits of degradation models can be conveniently performed using an +interface to the saemix package available in current development versions of +the mkin package. + +The corresponding SAEM fits of the four combinations of degradation and error +models are fitted below. As there is no convergence criterion implemented in +the saemix package, the convergence plots need to be manually checked for every +fit. As we will compare the SAEM implementation of saemix to the results +obtained using the nlmixr package later, we define control settings that +work well for all the parent data fits shown in this vignette. + +```{r saemix_control, results='hide'} +library(saemix) +saemix_control <- saemixControl(nbiter.saemix = c(800, 300), nb.chains = 15, + print = FALSE, save = FALSE, save.graphs = FALSE, displayProgress = FALSE) +saemix_control_moreiter <- saemixControl(nbiter.saemix = c(1600, 300), nb.chains = 15, + print = FALSE, save = FALSE, save.graphs = FALSE, displayProgress = FALSE) +``` + +The convergence plot for the SFO model using constant variance is shown below. + +```{r f_parent_saemix_sfo_const, results = 'hide', dependson = "saemix_control"} +f_parent_saemix_sfo_const <- mkin::saem(f_parent_mkin_const["SFO", ], quiet = TRUE, + control = saemix_control, transformations = "saemix") +plot(f_parent_saemix_sfo_const$so, plot.type = "convergence") +``` + +Obviously the default number of iterations is sufficient to reach convergence. +This can also be said for the SFO fit using the two-component error model. + +```{r f_parent_saemix_sfo_tc, results = 'hide', dependson = "saemix_control"} +f_parent_saemix_sfo_tc <- mkin::saem(f_parent_mkin_tc["SFO", ], quiet = TRUE, + control = saemix_control, transformations = "saemix") +plot(f_parent_saemix_sfo_tc$so, plot.type = "convergence") +``` + +When fitting the DFOP model with constant variance (see below), parameter +convergence is not as unambiguous. + +```{r f_parent_saemix_dfop_const, results = 'hide', dependson = "saemix_control"} +f_parent_saemix_dfop_const <- mkin::saem(f_parent_mkin_const["DFOP", ], quiet = TRUE, + control = saemix_control, transformations = "saemix") +plot(f_parent_saemix_dfop_const$so, plot.type = "convergence") +``` + +This is improved when the DFOP model is fitted with the two-component error +model. Convergence of the variance of k2 is enhanced, it remains more or less +stable already after 200 iterations of the first phase. + +```{r f_parent_saemix_dfop_tc, results = 'hide', dependson = "saemix_control"} +f_parent_saemix_dfop_tc <- mkin::saem(f_parent_mkin_tc["DFOP", ], quiet = TRUE, + control = saemix_control, transformations = "saemix") +plot(f_parent_saemix_dfop_tc$so, plot.type = "convergence") +``` + +```{r f_parent_saemix_dfop_tc_moreiter, results = 'hide', dependson = "saemix_control"} +# The last time I tried (2022-01-11) this gives an error in solve.default(omega.eta) +# system is computationally singular: reciprocal condition number = 5e-17 +#f_parent_saemix_dfop_tc_10k <- mkin::saem(f_parent_mkin_tc["DFOP", ], quiet = TRUE, +# control = saemix_control_10k, transformations = "saemix") +# Now we do not get a significant improvement by using twice the number of iterations +f_parent_saemix_dfop_tc_moreiter <- mkin::saem(f_parent_mkin_tc["DFOP", ], quiet = TRUE, + control = saemix_control_moreiter, transformations = "saemix") +#plot(f_parent_saemix_dfop_tc_moreiter$so, plot.type = "convergence") +``` + +An alternative way to fit DFOP in combination with the two-component error model +is to use the model formulation with transformed parameters as used per default +in mkin. + +```{r f_parent_saemix_dfop_tc_mkin, results = 'hide', dependson = "saemix_control"} +f_parent_saemix_dfop_tc_mkin <- mkin::saem(f_parent_mkin_tc["DFOP", ], quiet = TRUE, + control = saemix_control, transformations = "mkin") +plot(f_parent_saemix_dfop_tc_mkin$so, plot.type = "convergence") +``` +As the convergence plots do not clearly indicate that the algorithm has converged, we +again use four times the number of iterations, which leads to almost satisfactory +convergence (see below). + +```{r f_parent_saemix_dfop_tc_mkin_moreiter, results = 'hide', dependson = "saemix_control"} +saemix_control_muchmoreiter <- saemixControl(nbiter.saemix = c(3200, 300), nb.chains = 15, + print = FALSE, save = FALSE, save.graphs = FALSE, displayProgress = FALSE) +f_parent_saemix_dfop_tc_mkin_muchmoreiter <- mkin::saem(f_parent_mkin_tc["DFOP", ], quiet = TRUE, + control = saemix_control_muchmoreiter, transformations = "mkin") +plot(f_parent_saemix_dfop_tc_mkin_muchmoreiter$so, plot.type = "convergence") +``` + +The four combinations (SFO/const, SFO/tc, DFOP/const and DFOP/tc), including +the variations of the DFOP/tc combination can be compared using the model +comparison function of the saemix package: + +```{r AIC_parent_saemix, cache = FALSE} +AIC_parent_saemix <- saemix::compare.saemix( + f_parent_saemix_sfo_const$so, + f_parent_saemix_sfo_tc$so, + f_parent_saemix_dfop_const$so, + f_parent_saemix_dfop_tc$so, + f_parent_saemix_dfop_tc_moreiter$so, + f_parent_saemix_dfop_tc_mkin$so, + f_parent_saemix_dfop_tc_mkin_muchmoreiter$so) +rownames(AIC_parent_saemix) <- c( + "SFO const", "SFO tc", "DFOP const", "DFOP tc", "DFOP tc more iterations", + "DFOP tc mkintrans", "DFOP tc mkintrans more iterations") +print(AIC_parent_saemix) +``` + +As in the case of nlme fits, the DFOP model fitted with two-component error +(number 4) gives the lowest AIC. Using a much larger number of iterations +does not significantly change the AIC. When the mkin transformations are used +instead of the saemix transformations, we need four times the number of +iterations to obtain a goodness of fit that almost as good as the result +obtained with saemix transformations. + +In order to check the influence of the likelihood calculation algorithms +implemented in saemix, the likelihood from Gaussian quadrature is added +to the best fit, and the AIC values obtained from the three methods +are compared. + +```{r AIC_parent_saemix_methods, cache = FALSE} +f_parent_saemix_dfop_tc$so <- + saemix::llgq.saemix(f_parent_saemix_dfop_tc$so) +AIC_parent_saemix_methods <- c( + is = AIC(f_parent_saemix_dfop_tc$so, method = "is"), + gq = AIC(f_parent_saemix_dfop_tc$so, method = "gq"), + lin = AIC(f_parent_saemix_dfop_tc$so, method = "lin") +) +print(AIC_parent_saemix_methods) +``` + +The AIC values based on importance sampling and Gaussian quadrature are very +similar. Using linearisation is known to be less accurate, but still gives a +similar value. + +### nlmixr + +In the last years, a lot of effort has been put into the nlmixr package which +is designed for pharmacokinetics, where nonlinear mixed-effects models are +routinely used, but which can also be used for related data like chemical +degradation data. A current development branch of the mkin package provides +an interface between mkin and nlmixr. Here, we check if we get equivalent +results when using a refined version of the First Order Conditional Estimation +(FOCE) algorithm used in nlme, namely the First Order Conditional Estimation +with Interaction (FOCEI), and the SAEM algorithm as implemented in nlmixr. + +First, the focei algorithm is used for the four model combinations. A number of +warnings are produced with unclear significance. + +```{r f_parent_nlmixr_focei, results = "hide", message = FALSE, warning = FALSE} +library(nlmixr) +f_parent_nlmixr_focei_sfo_const <- nlmixr(f_parent_mkin_const["SFO", ], est = "focei") +f_parent_nlmixr_focei_sfo_tc <- nlmixr(f_parent_mkin_tc["SFO", ], est = "focei") +f_parent_nlmixr_focei_dfop_const <- nlmixr(f_parent_mkin_const["DFOP", ], est = "focei") +f_parent_nlmixr_focei_dfop_tc<- nlmixr(f_parent_mkin_tc["DFOP", ], est = "focei") +``` + +```{r AIC_parent_nlmixr_focei, cache = FALSE} +aic_nlmixr_focei <- sapply( + list(f_parent_nlmixr_focei_sfo_const$nm, f_parent_nlmixr_focei_sfo_tc$nm, + f_parent_nlmixr_focei_dfop_const$nm, f_parent_nlmixr_focei_dfop_tc$nm), + AIC) +``` + +The AIC values are very close to the ones obtained with nlme which are repeated below +for convenience. + +```{r AIC_parent_nlme_rep, cache = FALSE} +aic_nlme <- sapply( + list(f_parent_nlme_sfo_const, NA, f_parent_nlme_sfo_tc, f_parent_nlme_dfop_tc), + function(x) if (is.na(x[1])) NA else AIC(x)) +aic_nlme_nlmixr_focei <- data.frame( + "Degradation model" = c("SFO", "SFO", "DFOP", "DFOP"), + "Error model" = rep(c("constant variance", "two-component"), 2), + "AIC (nlme)" = aic_nlme, + "AIC (nlmixr with FOCEI)" = aic_nlmixr_focei, + check.names = FALSE +) +print(aic_nlme_nlmixr_focei) +``` + +Secondly, we use the SAEM estimation routine and check the convergence plots. The +control parameters also used for the saemix fits are defined beforehand. + +```{r nlmixr_saem_control} +nlmixr_saem_control_800 <- saemControl(logLik = TRUE, + nBurn = 800, nEm = 300, nmc = 15) +nlmixr_saem_control_1000 <- saemControl(logLik = TRUE, + nBurn = 1000, nEm = 300, nmc = 15) +nlmixr_saem_control_10k <- saemControl(logLik = TRUE, + nBurn = 10000, nEm = 1000, nmc = 15) +``` + +Then we fit SFO with constant variance + +```{r f_parent_nlmixr_saem_sfo_const, results = "hide", warning = FALSE, message = FALSE, dependson = "nlmixr_saem_control"} +f_parent_nlmixr_saem_sfo_const <- nlmixr(f_parent_mkin_const["SFO", ], est = "saem", + control = nlmixr_saem_control_800) +traceplot(f_parent_nlmixr_saem_sfo_const$nm) +``` + +and SFO with two-component error. + +```{r f_parent_nlmixr_saem_sfo_tc, results = "hide", warning = FALSE, message = FALSE, dependson = "nlmixr_saem_control"} +f_parent_nlmixr_saem_sfo_tc <- nlmixr(f_parent_mkin_tc["SFO", ], est = "saem", + control = nlmixr_saem_control_800) +traceplot(f_parent_nlmixr_saem_sfo_tc$nm) +``` + +For DFOP with constant variance, the convergence plots show considerable +instability of the fit, which indicates overparameterisation which was already +observed above for this model combination. + +```{r f_parent_nlmixr_saem_dfop_const, results = "hide", warning = FALSE, message = FALSE, dependson = "nlmixr_saem_control"} +f_parent_nlmixr_saem_dfop_const <- nlmixr(f_parent_mkin_const["DFOP", ], est = "saem", + control = nlmixr_saem_control_800) +traceplot(f_parent_nlmixr_saem_dfop_const$nm) +``` + +For DFOP with two-component error, a less erratic convergence is seen. + +```{r f_parent_nlmixr_saem_dfop_tc, results = "hide", warning = FALSE, message = FALSE, dependson = "nlmixr_saem_control"} +f_parent_nlmixr_saem_dfop_tc <- nlmixr(f_parent_mkin_tc["DFOP", ], est = "saem", + control = nlmixr_saem_control_800) +traceplot(f_parent_nlmixr_saem_dfop_tc$nm) +``` + +To check if an increase in the number of iterations improves the fit, we repeat +the fit with 1000 iterations for the burn in phase and 300 iterations for the +second phase. + +```{r f_parent_nlmixr_saem_dfop_tc_1k, results = "hide", warning = FALSE, message = FALSE, dependson = "nlmixr_saem_control"} +f_parent_nlmixr_saem_dfop_tc_1000 <- nlmixr(f_parent_mkin_tc["DFOP", ], est = "saem", + control = nlmixr_saem_control_1000) +traceplot(f_parent_nlmixr_saem_dfop_tc_1000$nm) +``` + +Here the fit looks very similar, but we will see below that it shows a higher AIC +than the fit with 800 iterations in the burn in phase. Next we choose +10 000 iterations for the burn in phase and 1000 iterations for the second +phase for comparison with saemix. + +```{r f_parent_nlmixr_saem_dfop_tc_10k, results = "hide", warning = FALSE, message = FALSE, dependson = "nlmixr_saem_control"} +f_parent_nlmixr_saem_dfop_tc_10k <- nlmixr(f_parent_mkin_tc["DFOP", ], est = "saem", + control = nlmixr_saem_control_10k) +traceplot(f_parent_nlmixr_saem_dfop_tc_10k$nm) +``` + +In the above convergence plot, the time course of 'eta.DMTA_0' and +'log_k2' indicate a false convergence. + +The AIC values are internally calculated using Gaussian quadrature. + +```{r AIC_parent_nlmixr_saem, cache = FALSE} +AIC(f_parent_nlmixr_saem_sfo_const$nm, f_parent_nlmixr_saem_sfo_tc$nm, + f_parent_nlmixr_saem_dfop_const$nm, f_parent_nlmixr_saem_dfop_tc$nm, + f_parent_nlmixr_saem_dfop_tc_1000$nm, + f_parent_nlmixr_saem_dfop_tc_10k$nm) +``` + +We can see that again, the DFOP/tc model shows the best goodness of fit. +However, increasing the number of burn-in iterations from 800 to 1000 results +in a higher AIC. If we further increase the number of iterations to 10 000 +(burn-in) and 1000 (second phase), the AIC cannot be calculated for the +nlmixr/saem fit, supporting that the fit did not converge properly. + +### Comparison + +The following table gives the AIC values obtained with the three packages using +the same control parameters (800 iterations burn-in, 300 iterations second +phase, 15 chains). + +```{r AIC_all, cache = FALSE} +AIC_all <- data.frame( + check.names = FALSE, + "Degradation model" = c("SFO", "SFO", "DFOP", "DFOP"), + "Error model" = c("const", "tc", "const", "tc"), + nlme = c(AIC(f_parent_nlme_sfo_const), AIC(f_parent_nlme_sfo_tc), NA, AIC(f_parent_nlme_dfop_tc)), + nlmixr_focei = sapply(list(f_parent_nlmixr_focei_sfo_const$nm, f_parent_nlmixr_focei_sfo_tc$nm, + f_parent_nlmixr_focei_dfop_const$nm, f_parent_nlmixr_focei_dfop_tc$nm), AIC), + saemix = sapply(list(f_parent_saemix_sfo_const$so, f_parent_saemix_sfo_tc$so, + f_parent_saemix_dfop_const$so, f_parent_saemix_dfop_tc$so), AIC), + nlmixr_saem = sapply(list(f_parent_nlmixr_saem_sfo_const$nm, f_parent_nlmixr_saem_sfo_tc$nm, + f_parent_nlmixr_saem_dfop_const$nm, f_parent_nlmixr_saem_dfop_tc$nm), AIC) +) +kable(AIC_all) +``` + +```{r parms_all, cache = FALSE} +intervals(f_parent_saemix_dfop_tc) +intervals(f_parent_saemix_dfop_tc) +intervals(f_parent_saemix_dfop_tc_mkin_muchmoreiter) +intervals(f_parent_nlmixr_saem_dfop_tc) +intervals(f_parent_nlmixr_saem_dfop_tc_10k) +``` + + + +# References + +<!-- vim: set foldmethod=syntax: --> |