
R Speaks Non Linear Mixed Effects Modeling, RsNLME, is a
suite of R packages and supplementary Shiny apps developed by Certara
that supports pharmacometric modeling inside R.
When used together, these packages can add a level of speed and flexibility to your pharmacometrics workflow that cannot be achieved with point-and-click type tools.
Whether you’re still learning R or a seasoned expert, efficiently build, execute, and analyze your models from the Shiny GUI, then generate the corresponding R code to reproduce and expand your workflow from the R command line.

Certara.RsNLME uses tidyverse syntax to
generate and update pharmacometric models in R. All functions can easily
be chained together using the %>% operator from
magrittr. See RsNLME
Examples.
library(Certara.RsNLME)
library(magrittr)
# Create two-compartment pharmacokinetic model
model <- pkmodel(numCompartments = 2, data = pkData,
ID = "Subject", Time = "Act_Time", A1 = "Amount", CObs = "Conc",
modelName = "TwCpt_IVBolus_FOCE_ELS")
# Update initial estimates
model <- model %>%
fixedEffect(effect = c("tvV", "tvCl", "tvV2", "tvCl2"), value = c(15, 5, 40, 15)) If you are still learning the command line syntax, use the
Certara.RsNLME.ModelBuilder Shiny application from either
RStudio or Pirana to build your NLME model from the GUI and generate the
corresponding R and PML code to reproduce your model across multiple
environments.
library(Certara.RsNLME)
library(Certara.RsNLME.ModelBuilder)
model <- modelBuilderUI(data = pkData)Learn more about Certara.RsNLME.ModelBuilder here
Next, we can execute the above model we created from the Shiny GUI
inside R using the command fitmodel():
job <- fitmodel(model)
print(job$Overall) Scenario RetCode LogLik -2LL AIC BIC nParm nObs nSub EpsShrinkage Condition
1: WorkFlow 1 -632.7953 1265.591 1283.591 1308.057 9 112 16 0.17297 3.34287Or alternatively, use the Certara.RsNLME.ModelExecutor
Shiny application to specify additional engine arguments, change the
estimation algorithm, add output tables, and more - all from the Shiny
GUI!
library(Certara.RsNLME.ModelExecutor)
modelExecutorUI(model)Learn more about Certara.RsNLME.ModelExecutor here
After executing the model, we use the
Certara.Xpose.NLME, xpose,
ggplot2, and flextable packages to generate
our model diagnostic plots.
library(Certara.Xpose.NLME)
library(xpose)
library(ggplot2)
xpdb <- xposeNlmeModel(model, job)
res_vs_idv(xpdb) +
theme_classic()
Learn more about Certara.Xpose.NLME here
Or alternatively, use the Certara.ModelResults Shiny
application to easily preview, customize, and report model diagnostics
plots and tables from the Shiny GUI. Furthermore, the application will
generate the corresponding .R and .Rmd code to
reproduce your model diagnostics.
library(Certara.ModelResults)
resultsUI(model)Learn more about Certara.ModelResults here
Lastly, users can execute a vpcmodel() to generate a
Visual Predictive Check (VPC) plot and assess model fit.
Using the Certara.RsNLME package, we will execute the
function vpcmodel() to return our observed and simulated
data used to generate our VPC.
library(Certara.RsNLME)
vpcJob <- vpcmodel(model)Next we’ll extract our observed and simulated data from the return
value of vpcmodel().
obs_data <- vpcJob$predcheck0
sim_data <- vpcJob$predoutThen we can use the tidyvpc package to parameterize our VPC.
library(tidyvpc)
vpc <- observed(obs_data, y = DV, x = IVAR) %>%
simulated(sim_data, y = DV) %>%
binless() %>%
vpcstats()Learn more about tidyvpc here
Or alternatively, use the Certara.VPCResults Shiny
application to easily parameterize, customize, and report VPC plots from
the Shiny GUI. Furthermore, the application will generate the
corresponding .R and .Rmd code to reproduce
your VPC’s in R.
vpcResultsUI(obs_data, sim_data)Learn more about Certara.VPCResults here