For this exercise, we’ll need the campsismod package.
This package can be loaded as follows:
Assume a very simple 1-compartment PK model with first-order
eliminate rate K. Say this parameter has a typical value of
log(2)/12≈0.06 (where 12 is the elimination half life) and has 15% CV.
Let’s also initiate the central compartment to 1000.
This can be translated into the following Campsis model (
download Notepad++ plugin for Campsis):
Let’s now create our theta.csv with our single parameter
K as follows:
And finally, let’s also create our omega.csv to include
inter-individual variability on K:
This model can now be loaded by campsismod…
## Warning in read.allparameters(folder = folder): No file 'sigma.csv' could be
## found.
Let’s simulated this model in Campsis:
library(campsis)
dataset <- Dataset(25) %>% add(Observations(seq(0,24,by=0.5)))
results <- model %>% simulate(dataset=dataset, seed=1)
spaghettiPlot(results, "A_CENTRAL")The same model can be created programmatically. First, let’s create an empty Campsis model.
Then, let’s define the equation of our model parameter
K.
We can add an ordinary differential equation as follows:
We can init the central compartment as well on the fly:
Finally, let’s define our THETA_K and
ETA_K:
model <- model %>% add(Theta("K", value=0.06))
model <- model %>% add(Omega("K", value=15, type="cv%"))This model can simulated by Campsis as well. Powerful, isn’t it?
library(campsis)
dataset <- Dataset(25) %>% add(Observations(seq(0,24,by=0.5)))
results <- model %>% simulate(dataset=dataset, seed=2)
spaghettiPlot(results, "A_CENTRAL")