A Comprehensive Introduction to Pumas

Authors

Vijay Ivaturi

Jose Storopoli

This tutorial provides a comprehensive introduction to a modeling and simulation workflow in Pumas. The idea is not to get into the details of Pumas specifics, but instead provide a narrative on the lines of a regular workflow in our day-to-day work, with brevity where required to allow a broad overview. Wherever possible, cross-references will be provided to documentation and detailed examples that provide deeper insight into a particular topic.

As part of this workflow, you will be introduced to various aspects such as:

  1. Data wrangling in Julia
  2. Exploratory analysis in Julia
  3. Continuous data non-linear mixed effects modeling in Pumas
  4. Model comparison routines, post-processing, validation etc.

1 The Study and Design

CTMNopain is a novel anti-inflammatory agent under preliminary investigation. A dose-ranging trial was conducted comparing placebo with 3 doses of CTMNopain (5mg, 20mg and 80 mg QD). The maximum tolerated dose is 160 mg per day. Plasma concentrations (mg/L) of the drug were measured at 0, 0.5, 1, 1.5, 2, 2.5, 3-8 hours.

Pain score (0=no pain, 1=mild, 2=moderate, 3=severe) were obtained at time points when plasma concentration was collected. A pain score of 2 or more is considered as no pain relief.

The subjects can request for remedication if pain relief is not achieved after 2 hours post dose. Some subjects had remedication before 2 hours if they were not able to bear the pain. The time to remedication and the remedication status is available for subjects.

The pharmacokinetic dataset can be accessed using PharmaDatasets.jl.

2 Setup

2.1 Load libraries

These libraries provide the workhorse functionality in the Pumas ecosystem:

using Pumas
using PumasUtilities
using NCA
using NCAUtilities

In addition, libraries below are good add-on’s that provide ancillary functionality:

using GLM: lm, @formula
using Random
using CSV
using DataFramesMeta
using CairoMakie
using PharmaDatasets

2.2 Data Wrangling

We start by reading in the dataset and making some quick summaries.

Tip

If you want to learn more about data wrangling, don’t forget to check our Data Wrangling in Julia tutorials!

pkpain_df = dataset("pk_painrelief")
first(pkpain_df, 5)
5×7 DataFrame
Row Subject Time Conc PainRelief PainScore RemedStatus Dose
Int64 Float64 Float64 Int64 Int64 Int64 String7
1 1 0.0 0.0 0 3 1 20 mg
2 1 0.5 1.15578 1 1 0 20 mg
3 1 1.0 1.37211 1 0 0 20 mg
4 1 1.5 1.30058 1 0 0 20 mg
5 1 2.0 1.19195 1 1 0 20 mg

Let’s filter out the placebo data as we don’t need that for the PK analysis.

pkpain_noplb_df = @rsubset pkpain_df :Dose != "Placebo";
first(pkpain_noplb_df, 5)
5×7 DataFrame
Row Subject Time Conc PainRelief PainScore RemedStatus Dose
Int64 Float64 Float64 Int64 Int64 Int64 String7
1 1 0.0 0.0 0 3 1 20 mg
2 1 0.5 1.15578 1 1 0 20 mg
3 1 1.0 1.37211 1 0 0 20 mg
4 1 1.5 1.30058 1 0 0 20 mg
5 1 2.0 1.19195 1 1 0 20 mg

3 Analysis

3.1 Non-compartmental analysis

Let’s begin by performing a quick NCA of the concentration time profiles and view the exposure changes across doses. The input data specification for NCA analysis requires the presence of a :route column and an :amt column that specifies the dose. So, let’s add that in:

@rtransform! pkpain_noplb_df begin
    :route = "ev"
    :Dose = parse(Int, chop(:Dose; tail = 3))
end

We also need to create an :amt column:

@rtransform! pkpain_noplb_df :amt = :Time == 0 ? :Dose : missing

Now, we map the data variables to the read_nca function that prepares the data for NCA analysis.

pkpain_nca = read_nca(
    pkpain_noplb_df;
    id = :Subject,
    time = :Time,
    amt = :amt,
    observations = :Conc,
    group = [:Dose],
    route = :route,
)
NCAPopulation (120 subjects):
  Group: [["Dose" => 5], ["Dose" => 20], ["Dose" => 80]]
  Number of missing observations: 0
  Number of blq observations: 0

Now that we mapped the data in, let’s visualize the concentration vs time plots for a few individuals. When paginate is set to true, a vector of plots are returned and below we display the first element with 9 individuals.

f = observations_vs_time(
    pkpain_nca;
    paginate = true,
    axis = (; xlabel = "Time (hr)", ylabel = "CTMNoPain Concentration (ng/mL)"),
)
f[1]

An observations versus time profile for all subjects

Observations versus Time

or you can view the summary curves by dose group as passed in to the group argument in read_nca

summary_observations_vs_time(
    pkpain_nca,
    figure = (; fontsize = 22, size = (800, 1000)),
    color = "black",
    linewidth = 3,
    axis = (; xlabel = "Time (hr)", ylabel = "CTMX Concentration (μg/mL)"),
)

An observations versus time profile for all subjects in a summarized manner

Summary Observations versus Time

A full NCA Report is now obtained for completeness purposes using the run_nca function, but later we will only extract a couple of key metrics of interest.

pk_nca = run_nca(pkpain_nca; sigdigits = 3)

We can look at the NCA fits for some subjects. Here f is a vector or figures. We’ll showcase the first image by indexing f:

f = subject_fits(
    pk_nca,
    paginate = true,
    axis = (; xlabel = "Time (hr)", ylabel = "CTMX Concentration (μg/mL)"),

    # Legend options
    legend = (; position = :bottom),
)
f[1]

Trend plot with observations for all individual subjects over time

Subject Fits

As CTMNopain’s effect maybe mainly related to maximum concentration (cmax) or area under the curve (auc), we present some summary statistics using the summarize function from NCA.

strata = [:Dose]
1-element Vector{Symbol}:
 :Dose
params = [:cmax, :aucinf_obs]
2-element Vector{Symbol}:
 :cmax
 :aucinf_obs
output = summarize(pk_nca; stratify_by = strata, parameters = params)
6×10 DataFrame
Row Dose parameters numsamples minimum maximum mean std geomean geostd geomeanCV
Int64 String Int64 Float64 Float64 Float64 Float64 Float64 Float64 Float64
1 5 cmax 40 0.19 0.539 0.356075 0.0884129 0.345104 1.2932 26.1425
2 5 aucinf_obs 40 0.914 3.4 1.5979 0.490197 1.53373 1.32974 29.0868
3 20 cmax 40 0.933 2.7 1.4737 0.361871 1.43408 1.2633 23.6954
4 20 aucinf_obs 40 2.77 14.1 6.377 2.22239 6.02031 1.41363 35.6797
5 80 cmax 40 3.3 8.47 5.787 1.31957 5.64164 1.25757 23.2228
6 80 aucinf_obs 40 13.7 49.1 29.5 8.68984 28.2954 1.34152 30.0258

The statistics printed above are the default, but you can pass in your own statistics using the stats = [] argument to the summarize function.

We can look at a few parameter distribution plots.

parameters_vs_group(
    pk_nca,
    parameter = :cmax,
    axis = (; xlabel = "Dose (mg)", ylabel = "Cₘₐₓ (ng/mL)"),
    figure = (; fontsize = 18),
)

A violin plot for the Cmax distribution for each dose group

Cmax for each Dose Group

Dose normalized PK parameters, cmax and aucinf were essentially dose proportional between for 5 mg, 20 mg and 80 mg doses. You can perform a simple regression to check the impact of dose on cmax:

dp = NCA.DoseLinearityPowerModel(pk_nca, :cmax; level = 0.9)
Dose Linearity Power Model
Variable: cmax
Model: log(cmax) ~ log(α) + β × log(dose)
StatsBase.CoefTable([[1.0077528981236414], [0.9757097548045869], [1.039796041442696]], ["Estimate", "low CI 90%", "high CI 90%"], ["β"], 0, 0)

Here’s a visualization for the dose linearity using a power model for cmax:

power_model(dp; legend = (; position = :bottom))

A dose linearity power model plot for Cmax

Dose Linearity Plot

We can also visualize a dose proportionality results with respect to a specific endpoint in a NCA Report; for example cmax and aucinf_obs:

dose_vs_dose_normalized(pk_nca, :cmax)

A dose proportionality plot for Cmax

Dose Proportionality Plot
dose_vs_dose_normalized(pk_nca, :aucinf_obs)

A dose proportionality plot for AUC

Dose Proportionality Plot

Based on visual inspection of the concentration time profiles as seen earlier, CTMNopain exhibited monophasic decline, and perhaps a one compartment model best fits the PK data.

3.2 Pharmacokinetic modeling

As seen from the plots above, the concentrations decline monoexponentially. We will evaluate both one and two compartment structural models to assess best fit. Further, different residual error models will also be tested.

We will use the results from NCA to provide us good initial estimates.

3.2.1 Data preparation for modeling

PumasNDF requires the presence of :evid and :cmt columns in the dataset.

@rtransform! pkpain_noplb_df begin
    :evid = :Time == 0 ? 1 : 0
    :cmt = :Time == 0 ? 1 : 2
    :cmt2 = 1 # for zero order absorption
end

Further, observations at time of dosing, i.e., when evid = 1 have to be missing

@rtransform! pkpain_noplb_df :Conc = :evid == 1 ? missing : :Conc

The dataframe will now be converted to a Population using read_pumas. Note that both observations and covariates are required to be an array even if it is one element.

pkpain_noplb = read_pumas(
    pkpain_noplb_df;
    id = :Subject,
    time = :Time,
    amt = :amt,
    observations = [:Conc],
    covariates = [:Dose],
    evid = :evid,
    cmt = :cmt,
)
Population
  Subjects: 120
  Covariates: Dose
  Observations: Conc

Now that the data is transformed to a Population of subjects, we can explore different models.

3.2.2 One-compartment model

Note

If you are not familiar yet with the @model blocks and syntax, please check our documentation.

pk_1cmp = @model begin

    @metadata begin
        desc = "One Compartment Model"
        timeu = u"hr"
    end

    @param begin
        """
        Clearance (L/hr)
        """
        tvcl  RealDomain(; lower = 0, init = 3.2)
        """
        Volume (L)
        """
        tvv  RealDomain(; lower = 0, init = 16.4)
        """
        Absorption rate constant (h-1)
        """
        tvka  RealDomain(; lower = 0, init = 3.8)
        """
          - ΩCL
          - ΩVc
          - ΩKa
        """
        Ω  PDiagDomain(init = [0.04, 0.04, 0.04])
        """
        Proportional RUV
        """
        σ_p  RealDomain(; lower = 0.0001, init = 0.2)
    end

    @random begin
        η ~ MvNormal(Ω)
    end

    @covariates begin
        """
        Dose (mg)
        """
        Dose
    end

    @pre begin
        CL = tvcl * exp(η[1])
        Vc = tvv * exp(η[2])
        Ka = tvka * exp(η[3])
    end

    @dynamics Depots1Central1

    @derived begin
        cp := @. Central / Vc
        """
        CTMx Concentration (ng/mL)
        """
        Conc ~ @. ProportionalNormal(cp, σ_p)
    end

end
Warning: Covariate Dose is not used in the model.
@ Pumas ~/run/_work/PumasTutorials.jl/PumasTutorials.jl/custom_julia_depot/packages/Pumas/qxx5c/src/dsl/model_macro.jl:3399
PumasModel
  Parameters: tvcl, tvv, tvka, Ω, σ_p
  Random effects: η
  Covariates: Dose
  Dynamical system variables: Depot, Central
  Dynamical system type: Closed form
  Derived: Conc
  Observed: Conc
Tip

Note that the local assignment := can be used to define intermediate statements that will not be carried outside of the block. This means that all the resulting data workflows from this model will not contain the intermediate variables defined with :=. We use this when we want to suppress the variable from any further output.

The idea behind := is for performance reasons. If you are not carrying the variable defined with := outside of the block, then it is not necessary to store it in the resulting data structures. Not only will your model run faster, but the resulting data structures will also be smaller.

Before going to fit the model, let’s evaluate some helpful steps via simulation to check appropriateness of data and model

# zero out the random effects
etas = zero_randeffs(pk_1cmp, pkpain_noplb, init_params(pk_1cmp))

Above, we are generating a vector of η’s of the same length as the number of subjects to zero out the random effects. We do this as we are evaluating the trajectories of the concentrations at the initial set of parameters at a population level. Other helper functions here are sample_randeffs and init_randeffs. Please refer to the documentation.

simpk_iparams = simobs(pk_1cmp, pkpain_noplb, init_params(pk_1cmp), etas)
Simulated population (Vector{<:Subject})
  Simulated subjects: 120
  Simulated variables: Conc
sim_plot(
    pk_1cmp,
    simpk_iparams;
    observations = [:Conc],
    figure = (; fontsize = 18),
    axis = (;
        xlabel = "Time (hr)",
        ylabel = "Observed/Predicted \n CTMx Concentration (ng/mL)",
    ),
)

A simulated observations versus time plot overlaid with the scatter plot of the observed observations

Simulated Observations Plot

Our NCA based initial guess on the parameters seem to work well.

Lets change the initial estimate of a couple of the parameters to evaluate the sensitivity.

pkparam = (; init_params(pk_1cmp)..., tvka = 2, tvv = 10)
(tvcl = 3.2, tvv = 10, tvka = 2, Ω = [0.04 0.0 0.0; 0.0 0.04 0.0; 0.0 0.0 0.04], σ_p = 0.2)
simpk_changedpars = simobs(pk_1cmp, pkpain_noplb, pkparam, etas)
Simulated population (Vector{<:Subject})
  Simulated subjects: 120
  Simulated variables: Conc
sim_plot(
    pk_1cmp,
    simpk_changedpars;
    observations = [:Conc],
    figure = (; fontsize = 18),
    axis = (
        xlabel = "Time (hr)",
        ylabel = "Observed/Predicted \n CTMx Concentration (ng/mL)",
    ),
)

A simulated observations versus time plot overlaid with the scatter plot of the observed observations

Simulated Observations Plot

Changing the tvka and decreasing the tvv seemed to make an impact and observations go through the simulated lines.

To get a quick ballpark estimate of your PK parameters, we can do a NaivePooled analysis.

3.2.2.1 NaivePooled
pkfit_np = fit(pk_1cmp, pkpain_noplb, init_params(pk_1cmp), NaivePooled(); omegas = (:Ω,))
Warning: The `omegas` keyword argument is deprecated, use instead the `constantcoef` keyword argument to fix parameters to values for which the random effect distributions collapse to Dirac measures.
@ Pumas ~/run/_work/PumasTutorials.jl/PumasTutorials.jl/custom_julia_depot/packages/Pumas/qxx5c/src/estimation/likelihoods.jl:5868
[ Info: Checking the initial parameter values.
[ Info: The initial negative log likelihood and its gradient are finite. Check passed.
Iter     Function value   Gradient norm 
     0     7.744356e+02     3.715711e+03
 * time: 0.05847787857055664
     1     2.343899e+02     1.747348e+03
 * time: 2.548849105834961
     2     9.696232e+01     1.198088e+03
 * time: 2.5532519817352295
     3    -7.818699e+01     5.538151e+02
 * time: 2.556318998336792
     4    -1.234803e+02     2.462514e+02
 * time: 2.559623956680298
     5    -1.372888e+02     2.067458e+02
 * time: 2.5626699924468994
     6    -1.410579e+02     1.162950e+02
 * time: 2.565701961517334
     7    -1.434754e+02     5.632816e+01
 * time: 2.5687930583953857
     8    -1.453401e+02     7.859270e+01
 * time: 2.5719308853149414
     9    -1.498185e+02     1.455606e+02
 * time: 2.5747900009155273
    10    -1.534371e+02     1.303682e+02
 * time: 2.577686071395874
    11    -1.563557e+02     5.975474e+01
 * time: 2.580605983734131
    12    -1.575052e+02     9.308611e+00
 * time: 2.5836570262908936
    13    -1.579357e+02     1.234484e+01
 * time: 2.586484909057617
    14    -1.581874e+02     7.478196e+00
 * time: 2.5894479751586914
    15    -1.582981e+02     2.027162e+00
 * time: 2.5924899578094482
    16    -1.583375e+02     5.578262e+00
 * time: 2.595649003982544
    17    -1.583556e+02     4.727050e+00
 * time: 2.5988481044769287
    18    -1.583644e+02     2.340173e+00
 * time: 2.6017770767211914
    19    -1.583680e+02     7.738100e-01
 * time: 2.6047871112823486
    20    -1.583696e+02     3.300689e-01
 * time: 2.607938051223755
    21    -1.583704e+02     3.641985e-01
 * time: 2.6109659671783447
    22    -1.583707e+02     4.365901e-01
 * time: 2.613940954208374
    23    -1.583709e+02     3.887800e-01
 * time: 2.6168060302734375
    24    -1.583710e+02     2.766977e-01
 * time: 2.6198689937591553
    25    -1.583710e+02     1.758029e-01
 * time: 2.622728109359741
    26    -1.583710e+02     1.133947e-01
 * time: 2.625714063644409
    27    -1.583710e+02     7.922544e-02
 * time: 2.628567934036255
    28    -1.583710e+02     5.954998e-02
 * time: 2.631582021713257
    29    -1.583710e+02     4.157080e-02
 * time: 2.6344919204711914
    30    -1.583710e+02     4.295446e-02
 * time: 2.6374130249023438
    31    -1.583710e+02     5.170752e-02
 * time: 2.6402928829193115
    32    -1.583710e+02     2.644382e-02
 * time: 2.644141912460327
    33    -1.583710e+02     4.548987e-03
 * time: 2.6479361057281494
    34    -1.583710e+02     2.501805e-02
 * time: 2.6516740322113037
    35    -1.583710e+02     3.763439e-02
 * time: 2.6545040607452393
    36    -1.583710e+02     3.206027e-02
 * time: 2.6573400497436523
    37    -1.583710e+02     1.003700e-02
 * time: 2.6603760719299316
    38    -1.583710e+02     2.209084e-02
 * time: 2.663209915161133
    39    -1.583710e+02     4.954136e-03
 * time: 2.666029930114746
    40    -1.583710e+02     1.609366e-02
 * time: 2.669965982437134
    41    -1.583710e+02     1.579810e-02
 * time: 2.6728620529174805
    42    -1.583710e+02     1.014156e-03
 * time: 2.675676107406616
    43    -1.583710e+02     6.050792e-03
 * time: 2.6795730590820312
    44    -1.583710e+02     1.354381e-02
 * time: 2.682497024536133
    45    -1.583710e+02     4.473216e-03
 * time: 2.686980962753296
    46    -1.583710e+02     4.645458e-03
 * time: 2.689847946166992
    47    -1.583710e+02     9.828063e-03
 * time: 2.6929259300231934
    48    -1.583710e+02     1.047215e-03
 * time: 2.69602108001709
    49    -1.583710e+02     8.374104e-03
 * time: 2.6992640495300293
    50    -1.583710e+02     7.841995e-04
 * time: 2.7023138999938965
FittedPumasModel

Dynamical system type:                 Closed form

Number of subjects:                            120

Observation records:         Active        Missing
    Conc:                      1320              0
    Total:                     1320              0

Number of parameters:      Constant      Optimized
                                  1              6

Likelihood approximation:              NaivePooled
Likelihood optimizer:                         BFGS

Termination Reason:                   GradientNorm
Log-likelihood value:                    158.37103

------------------
         Estimate
------------------
  tvcl    3.0054
  tvv    14.089
  tvka   44.227
† Ω₁,₁    0.0
† Ω₂,₂    0.0
† Ω₃,₃    0.0
  σ_p     0.32999
------------------
† indicates constant parameters
coefficients_table(pkfit_np)
7×4 DataFrame
Row Parameter Description Constant Estimate
String SubStrin… Bool Float64
1 tvcl Clearance (L/hr) false 3.005
2 tvv Volume (L) false 14.089
3 tvka Absorption rate constant (h-1) false 44.227
4 Ω₁,₁ ΩCL true 0.0
5 Ω₂,₂ ΩVc true 0.0
6 Ω₃,₃ ΩKa true 0.0
7 σ_p Proportional RUV false 0.33

The final estimates from the NaivePooled approach seem reasonably close to our initial guess from NCA, except for the tvka parameter. We will stick with our initial guess.

One way to be cautious before going into a complete fitting routine is to evaluate the likelihood of the individual subjects given the initial parameter values and see if any subject(s) pops out as unreasonable. There are a few ways of doing this:

  • check the loglikelihood subject wise
  • check if there any influential subjects

Below, we are basically checking if the initial estimates for any subject are way off that we are unable to compute the initial loglikelihood.

lls = [loglikelihood(pk_1cmp, subj, pkparam, FOCE()) for subj in pkpain_noplb]
# the plot below is using native CairoMakie `hist`
hist(lls; bins = 10, normalization = :none, color = (:black, 0.5))

A histogram of the individual loglikelihoods

Histogram of Loglikelihoods

The distribution of the loglikelihood’s suggest no extreme outliers.

A more convenient way is to use the findinfluential function that provides a list of k top influential subjects by showing the normalized (minus) loglikelihood for each subject. As you can see below, the minus loglikelihood in the range of 16 agrees with the histogram plotted above.

influential_subjects = findinfluential(pk_1cmp, pkpain_noplb, pkparam, FOCE())
120-element Vector{@NamedTuple{id::String, nll::Float64}}:
 (id = "148", nll = 16.659658856844782)
 (id = "135", nll = 16.648985190076324)
 (id = "156", nll = 15.9590695566075)
 (id = "159", nll = 15.441218240496484)
 (id = "149", nll = 14.715134644119514)
 (id = "88", nll = 13.09709837464614)
 (id = "16", nll = 12.982280521931417)
 (id = "61", nll = 12.652182902303675)
 (id = "71", nll = 12.500330088085486)
 (id = "59", nll = 12.241510254805224)
 ⋮
 (id = "57", nll = -22.797674232534305)
 (id = "93", nll = -22.836900711478222)
 (id = "12", nll = -23.007742339519236)
 (id = "123", nll = -23.292751843079227)
 (id = "41", nll = -23.425412534960515)
 (id = "99", nll = -23.53521484190102)
 (id = "29", nll = -24.025959868383097)
 (id = "52", nll = -24.164757842493685)
 (id = "24", nll = -25.572092325658446)
3.2.2.2 FOCE

Now that we have a good handle on our data, lets go ahead and fit a population model with FOCE:

pkfit_1cmp = fit(pk_1cmp, pkpain_noplb, pkparam, FOCE(); constantcoef = (; tvka = 2))
[ Info: Checking the initial parameter values.
[ Info: The initial negative log likelihood and its gradient are finite. Check passed.
Iter     Function value   Gradient norm 
     0    -5.935351e+02     5.597318e+02
 * time: 2.5033950805664062e-5
     1    -7.022088e+02     1.707063e+02
 * time: 0.7596111297607422
     2    -7.314067e+02     2.903269e+02
 * time: 1.8447060585021973
     3    -8.520591e+02     2.285888e+02
 * time: 2.1373469829559326
     4    -1.120191e+03     3.795410e+02
 * time: 2.474898099899292
     5    -1.178784e+03     2.323978e+02
 * time: 2.6116750240325928
     6    -1.218320e+03     9.699907e+01
 * time: 2.824363946914673
     7    -1.223641e+03     5.862105e+01
 * time: 2.949517011642456
     8    -1.227620e+03     1.831402e+01
 * time: 3.0958690643310547
     9    -1.228381e+03     2.132323e+01
 * time: 3.211419105529785
    10    -1.230098e+03     2.921228e+01
 * time: 3.3863439559936523
    11    -1.230854e+03     2.029661e+01
 * time: 3.5006630420684814
    12    -1.231116e+03     5.229098e+00
 * time: 3.6245639324188232
    13    -1.231179e+03     1.689232e+00
 * time: 3.816879987716675
    14    -1.231187e+03     1.215379e+00
 * time: 3.958785057067871
    15    -1.231188e+03     2.770378e-01
 * time: 4.129499912261963
    16    -1.231188e+03     1.636651e-01
 * time: 4.298337936401367
    17    -1.231188e+03     2.701140e-01
 * time: 4.5186240673065186
    18    -1.231188e+03     3.163344e-01
 * time: 4.62663197517395
    19    -1.231188e+03     1.505255e-01
 * time: 4.725805997848511
    20    -1.231188e+03     2.483984e-02
 * time: 4.851361036300659
    21    -1.231188e+03     8.344378e-04
 * time: 4.9513020515441895
FittedPumasModel

Dynamical system type:                 Closed form

Number of subjects:                            120

Observation records:         Active        Missing
    Conc:                      1320              0
    Total:                     1320              0

Number of parameters:      Constant      Optimized
                                  1              6

Likelihood approximation:                     FOCE
Likelihood optimizer:                         BFGS

Termination Reason:                   GradientNorm
Log-likelihood value:                     1231.188

-------------------
         Estimate
-------------------
  tvcl    3.1642
  tvv    13.288
† tvka    2.0
  Ω₁,₁    0.08494
  Ω₂,₂    0.048568
  Ω₃,₃    5.5811
  σ_p     0.10093
-------------------
† indicates constant parameters
infer(pkfit_1cmp)
[ Info: Calculating: variance-covariance matrix.
[ Info: Done.
Asymptotic inference results using sandwich estimator

Dynamical system type:                 Closed form

Number of subjects:                            120

Observation records:         Active        Missing
    Conc:                      1320              0
    Total:                     1320              0

Number of parameters:      Constant      Optimized
                                  1              6

Likelihood approximation:                     FOCE
Likelihood optimizer:                         BFGS

Termination Reason:                   GradientNorm
Log-likelihood value:                     1231.188

---------------------------------------------------------
         Estimate    SE          95.0% C.I.
---------------------------------------------------------
  tvcl    3.1642     0.08662     [  2.9944  ;  3.334   ]
  tvv    13.288      0.27481     [ 12.749   ; 13.827   ]
† tvka    2.0        NaN         [  NaN     ;  NaN     ]
  Ω₁,₁    0.08494    0.011022    [  0.063338;  0.10654 ]
  Ω₂,₂    0.048568   0.0063502   [  0.036122;  0.061014]
  Ω₃,₃    5.5811     1.2189      [  3.1922  ;  7.97    ]
  σ_p     0.10093    0.0057196   [  0.089718;  0.11214 ]
---------------------------------------------------------
† indicates constant parameters

Notice that tvka is fixed to 2 as we don’t have a lot of information before tmax. From the results above, we see that the parameter precision for this model is reasonable.

3.2.3 Two-compartment model

Just to be sure, let’s fit a 2-compartment model and evaluate:

pk_2cmp = @model begin

    @param begin
        """
        Clearance (L/hr)
        """
        tvcl  RealDomain(; lower = 0, init = 3.2)
        """
        Central Volume (L)
        """
        tvv  RealDomain(; lower = 0, init = 16.4)
        """
        Peripheral Volume (L)
        """
        tvvp  RealDomain(; lower = 0, init = 10)
        """
        Distributional Clearance (L/hr)
        """
        tvq  RealDomain(; lower = 0, init = 2)
        """
        Absorption rate constant (h-1)
        """
        tvka  RealDomain(; lower = 0, init = 1.3)
        """
          - ΩCL
          - ΩVc
          - ΩKa
          - ΩVp
          - ΩQ
        """
        Ω  PDiagDomain(init = [0.04, 0.04, 0.04, 0.04, 0.04])
        """
        Proportional RUV
        """
        σ_p  RealDomain(; lower = 0.0001, init = 0.2)
    end

    @random begin
        η ~ MvNormal(Ω)
    end

    @covariates begin
        """
        Dose (mg)
        """
        Dose
    end

    @pre begin
        CL = tvcl * exp(η[1])
        Vc = tvv * exp(η[2])
        Ka = tvka * exp(η[3])
        Vp = tvvp * exp(η[4])
        Q = tvq * exp(η[5])
    end

    @dynamics Depots1Central1Periph1

    @derived begin
        cp := @. Central / Vc
        """
        CTMx Concentration (ng/mL)
        """
        Conc ~ @. ProportionalNormal(cp, σ_p)
    end
end
Warning: Covariate Dose is not used in the model.
@ Pumas ~/run/_work/PumasTutorials.jl/PumasTutorials.jl/custom_julia_depot/packages/Pumas/qxx5c/src/dsl/model_macro.jl:3399
PumasModel
  Parameters: tvcl, tvv, tvvp, tvq, tvka, Ω, σ_p
  Random effects: η
  Covariates: Dose
  Dynamical system variables: Depot, Central, Peripheral
  Dynamical system type: Closed form
  Derived: Conc
  Observed: Conc
3.2.3.1 FOCE
pkfit_2cmp =
    fit(pk_2cmp, pkpain_noplb, init_params(pk_2cmp), FOCE(); constantcoef = (; tvka = 2))
[ Info: Checking the initial parameter values.
[ Info: The initial negative log likelihood and its gradient are finite. Check passed.
Iter     Function value   Gradient norm 
     0    -6.302369e+02     1.021050e+03
 * time: 3.0994415283203125e-5
     1    -9.197817e+02     9.927951e+02
 * time: 1.5425379276275635
     2    -1.372640e+03     2.054986e+02
 * time: 1.876384973526001
     3    -1.446326e+03     1.543987e+02
 * time: 2.196737051010132
     4    -1.545570e+03     1.855028e+02
 * time: 2.5119059085845947
     5    -1.581449e+03     1.713157e+02
 * time: 2.914141893386841
     6    -1.639433e+03     1.257382e+02
 * time: 3.197417974472046
     7    -1.695964e+03     7.450539e+01
 * time: 3.475191116333008
     8    -1.722243e+03     5.961044e+01
 * time: 3.7582290172576904
     9    -1.736883e+03     7.320921e+01
 * time: 4.037923097610474
    10    -1.753547e+03     7.501938e+01
 * time: 4.323484897613525
    11    -1.764053e+03     6.185661e+01
 * time: 4.615663051605225
    12    -1.778991e+03     4.831033e+01
 * time: 4.919928073883057
    13    -1.791492e+03     4.943278e+01
 * time: 5.23445200920105
    14    -1.799847e+03     2.871410e+01
 * time: 5.647458076477051
    15    -1.805374e+03     7.520790e+01
 * time: 6.034950017929077
    16    -1.816260e+03     2.990621e+01
 * time: 6.371522903442383
    17    -1.818252e+03     2.401915e+01
 * time: 6.670742034912109
    18    -1.822988e+03     2.587225e+01
 * time: 6.973051071166992
    19    -1.824653e+03     1.550517e+01
 * time: 7.263144016265869
    20    -1.826074e+03     1.788927e+01
 * time: 7.542484998703003
    21    -1.826821e+03     1.888389e+01
 * time: 7.787806987762451
    22    -1.827900e+03     1.432840e+01
 * time: 8.035577058792114
    23    -1.828511e+03     9.422040e+00
 * time: 8.291120052337646
    24    -1.828754e+03     5.363445e+00
 * time: 8.551244974136353
    25    -1.828862e+03     4.916168e+00
 * time: 8.802757024765015
    26    -1.829007e+03     4.695750e+00
 * time: 9.058438062667847
    27    -1.829358e+03     1.090244e+01
 * time: 9.322493076324463
    28    -1.829830e+03     1.451320e+01
 * time: 9.592745065689087
    29    -1.830201e+03     1.108695e+01
 * time: 9.950222969055176
    30    -1.830360e+03     2.892317e+00
 * time: 10.385570049285889
    31    -1.830390e+03     1.699267e+00
 * time: 10.761224031448364
    32    -1.830404e+03     1.602222e+00
 * time: 11.058763027191162
    33    -1.830432e+03     2.823304e+00
 * time: 11.35127305984497
    34    -1.830475e+03     4.117188e+00
 * time: 11.651657104492188
    35    -1.830527e+03     5.083753e+00
 * time: 11.959084033966064
    36    -1.830591e+03     2.670227e+00
 * time: 12.269340991973877
    37    -1.830615e+03     3.508079e+00
 * time: 12.577236890792847
    38    -1.830623e+03     2.313741e+00
 * time: 12.885963916778564
    39    -1.830625e+03     1.681301e+00
 * time: 13.179666996002197
    40    -1.830627e+03     9.723876e-01
 * time: 13.463012933731079
    41    -1.830628e+03     9.410007e-01
 * time: 13.755944967269897
    42    -1.830628e+03     3.486773e-01
 * time: 13.999456882476807
    43    -1.830629e+03     4.526039e-01
 * time: 14.214864015579224
    44    -1.830630e+03     6.846533e-01
 * time: 14.457966089248657
    45    -1.830630e+03     4.526146e-01
 * time: 14.70970106124878
    46    -1.830630e+03     8.729710e-02
 * time: 14.947016954421997
    47    -1.830630e+03     5.368952e-03
 * time: 15.164999961853027
    48    -1.830630e+03     2.370727e-03
 * time: 15.37197494506836
    49    -1.830630e+03     9.048753e-04
 * time: 15.585478067398071
FittedPumasModel

Dynamical system type:                 Closed form

Number of subjects:                            120

Observation records:         Active        Missing
    Conc:                      1320              0
    Total:                     1320              0

Number of parameters:      Constant      Optimized
                                  1             10

Likelihood approximation:                     FOCE
Likelihood optimizer:                         BFGS

Termination Reason:                   GradientNorm
Log-likelihood value:                    1830.6305

-------------------
         Estimate
-------------------
  tvcl    2.8138
  tvv    11.005
  tvvp    5.54
  tvq     1.5159
† tvka    2.0
  Ω₁,₁    0.10267
  Ω₂,₂    0.060776
  Ω₃,₃    1.2012
  Ω₄,₄    0.42349
  Ω₅,₅    0.24473
  σ_p     0.048405
-------------------
† indicates constant parameters

3.3 Comparing One- versus Two-compartment models

The 2-compartment model has a much lower objective function compared to the 1-compartment. Let’s compare the estimates from the 2 models using the compare_estimates function.

compare_estimates(; pkfit_1cmp, pkfit_2cmp)
11×3 DataFrame
Row parameter pkfit_1cmp pkfit_2cmp
String Float64? Float64?
1 tvcl 3.1642 2.81378
2 tvv 13.288 11.0046
3 tvka 2.0 2.0
4 Ω₁,₁ 0.0849405 0.102669
5 Ω₂,₂ 0.0485682 0.0607756
6 Ω₃,₃ 5.58107 1.20116
7 σ_p 0.100928 0.0484049
8 tvvp missing 5.53998
9 tvq missing 1.51591
10 Ω₄,₄ missing 0.423494
11 Ω₅,₅ missing 0.244731

We perform a likelihood ratio test to compare the two nested models. The test statistic and the \(p\)-value clearly indicate that a 2-compartment model should be preferred.

lrtest(pkfit_1cmp, pkfit_2cmp)
Statistic:          1200.0
Degrees of freedom:      4
P-value:               0.0

We should also compare the other metrics and statistics, such ηshrinkage, ϵshrinkage, aic, and bic using the metrics_table function.

@chain metrics_table(pkfit_2cmp) begin
    leftjoin(metrics_table(pkfit_1cmp); on = :Metric, makeunique = true)
    rename!(:Value => :pk2cmp, :Value_1 => :pk1cmp)
end
WARNING: using deprecated binding Distributions.MatrixReshaped in Pumas.
, use Distributions.ReshapedDistribution{2, S, D} where D<:Distributions.Distribution{Distributions.ArrayLikeVariate{1}, S} where S<:Distributions.ValueSupport instead.
20×3 DataFrame
Row Metric pk2cmp pk1cmp
String Any Any
1 Successful true true
2 Estimation Time 15.586 4.952
3 Subjects 120 120
4 Fixed Parameters 1 1
5 Optimized Parameters 10 6
6 Conc Active Observations 1320 1320
7 Conc Missing Observations 0 0
8 Total Active Observations 1320 1320
9 Total Missing Observations 0 0
10 Likelihood Approximation Pumas.FOCE{Optim.NewtonTrustRegion{Float64}, Optim.Options{Float64, Nothing}} Pumas.FOCE{Optim.NewtonTrustRegion{Float64}, Optim.Options{Float64, Nothing}}
11 LogLikelihood (LL) 1830.63 1231.19
12 -2LL -3661.26 -2462.38
13 AIC -3641.26 -2450.38
14 BIC -3589.41 -2419.26
15 (η-shrinkage) η₁ 0.037 0.016
16 (η-shrinkage) η₂ 0.047 0.04
17 (η-shrinkage) η₃ 0.516 0.733
18 (ϵ-shrinkage) Conc 0.185 0.105
19 (η-shrinkage) η₄ 0.287 missing
20 (η-shrinkage) η₅ 0.154 missing

We next generate some goodness of fit plots to compare which model is performing better. To do this, we first inspect the diagnostics of our model fit.

res_inspect_1cmp = inspect(pkfit_1cmp)
[ Info: Calculating predictions.
[ Info: Calculating weighted residuals.
[ Info: Calculating empirical bayes.
[ Info: Evaluating dose control parameters.
[ Info: Evaluating individual parameters.
[ Info: Done.
FittedPumasModelInspection

Likelihood approximation used for weighted residuals: FOCE
res_inspect_2cmp = inspect(pkfit_2cmp)
[ Info: Calculating predictions.
[ Info: Calculating weighted residuals.
[ Info: Calculating empirical bayes.
[ Info: Evaluating dose control parameters.
[ Info: Evaluating individual parameters.
[ Info: Done.
FittedPumasModelInspection

Likelihood approximation used for weighted residuals: FOCE
gof_1cmp = goodness_of_fit(
    res_inspect_1cmp;
    figure = (; fontsize = 12),
    legend = (; position = :bottom),
)

A 4-mosaic goodness of fit plot showing the 1-compartment model

Goodness of Fit Plots
gof_2cmp = goodness_of_fit(
    res_inspect_2cmp;
    figure = (; fontsize = 12),
    legend = (; position = :bottom),
)

Trend plot with observations for all individual subjects over time

Subject Fits

These plots clearly indicate that the 2-compartment model is a better fit compared to the 1-compartment model.

We can look at selected sample of individual plots.

fig_subject_fits = subject_fits(
    res_inspect_2cmp;
    separate = true,
    paginate = true,
    figure = (; fontsize = 18),
    axis = (; xlabel = "Time (hr)", ylabel = "CTMx Concentration (ng/mL)"),
)
fig_subject_fits[1]

Trend plot with observations for 9 individual subjects over time

Subject Fits for 9 Individuals

There a lot of important plotting functions you can use for your standard model diagnostics. Please make sure to read the documentation for plotting. Below, we are checking the distribution of the empirical Bayes estimates.

empirical_bayes_dist(res_inspect_2cmp; zeroline_color = :red)

A histogram for the empirical Bayes distribution of all subject-specific parameters

Empirical Bayes Distribution
empirical_bayes_vs_covariates(
    res_inspect_2cmp;
    categorical = [:Dose],
    figure = (; size = (600, 800)),
)

A histogram for the empirical Bayes distribution of all subject-specific parameters stratified by categorical covariates

Empirical Bayes Distribution Stratified by Covariates

Clearly, our guess at tvka seems off-target. Let’s try and estimate tvka instead of fixing it to 2:

pkfit_2cmp_unfix_ka = fit(pk_2cmp, pkpain_noplb, init_params(pk_2cmp), FOCE())
[ Info: Checking the initial parameter values.
[ Info: The initial negative log likelihood and its gradient are finite. Check passed.
Iter     Function value   Gradient norm 
     0    -3.200734e+02     1.272671e+03
 * time: 1.9788742065429688e-5
     1    -8.682982e+02     1.000199e+03
 * time: 1.3752689361572266
     2    -1.381870e+03     5.008081e+02
 * time: 4.710907936096191
     3    -1.551053e+03     6.833490e+02
 * time: 5.021253824234009
     4    -1.680887e+03     1.834586e+02
 * time: 5.356519937515259
     5    -1.726118e+03     8.870274e+01
 * time: 5.787344932556152
     6    -1.761023e+03     1.162036e+02
 * time: 6.062230825424194
     7    -1.786619e+03     1.114552e+02
 * time: 6.374704837799072
     8    -1.863556e+03     9.914305e+01
 * time: 6.759783983230591
     9    -1.882942e+03     5.342676e+01
 * time: 7.058395862579346
    10    -1.888020e+03     2.010181e+01
 * time: 7.38804292678833
    11    -1.889832e+03     1.867263e+01
 * time: 7.716746807098389
    12    -1.891649e+03     1.668512e+01
 * time: 8.052470922470093
    13    -1.892615e+03     1.820701e+01
 * time: 8.381013870239258
    14    -1.893453e+03     1.745195e+01
 * time: 8.677191972732544
    15    -1.894760e+03     1.850174e+01
 * time: 8.977573871612549
    16    -1.895647e+03     1.773939e+01
 * time: 9.269444942474365
    17    -1.896597e+03     1.143462e+01
 * time: 9.563838005065918
    18    -1.897114e+03     9.720097e+00
 * time: 9.861094951629639
    19    -1.897373e+03     6.054321e+00
 * time: 10.17992877960205
    20    -1.897498e+03     3.985954e+00
 * time: 10.474714994430542
    21    -1.897571e+03     4.262464e+00
 * time: 10.7740159034729
    22    -1.897633e+03     4.010234e+00
 * time: 11.080947875976562
    23    -1.897714e+03     4.805375e+00
 * time: 11.390622854232788
    24    -1.897802e+03     3.508706e+00
 * time: 11.70629596710205
    25    -1.897865e+03     3.691475e+00
 * time: 12.017661809921265
    26    -1.897900e+03     2.982721e+00
 * time: 12.312055826187134
    27    -1.897928e+03     2.563790e+00
 * time: 12.598448991775513
    28    -1.897968e+03     3.261485e+00
 * time: 12.880934000015259
    29    -1.898013e+03     3.064689e+00
 * time: 13.135291814804077
    30    -1.898040e+03     1.636525e+00
 * time: 13.423425912857056
    31    -1.898051e+03     1.439997e+00
 * time: 13.707693815231323
    32    -1.898057e+03     1.436504e+00
 * time: 13.983926773071289
    33    -1.898069e+03     1.881528e+00
 * time: 14.264985799789429
    34    -1.898095e+03     3.253164e+00
 * time: 14.549277782440186
    35    -1.898142e+03     4.257941e+00
 * time: 14.840016841888428
    36    -1.898199e+03     3.685241e+00
 * time: 15.14122200012207
    37    -1.898245e+03     2.567364e+00
 * time: 15.444238901138306
    38    -1.898246e+03     2.561569e+00
 * time: 15.864982843399048
    39    -1.898251e+03     2.530909e+00
 * time: 16.235780954360962
    40    -1.898298e+03     2.673535e+00
 * time: 16.549152851104736
    41    -1.898300e+03     2.796030e+00
 * time: 16.922921895980835
    42    -1.898337e+03     3.655488e+00
 * time: 17.33476686477661
    43    -1.898342e+03     3.774385e+00
 * time: 17.780325889587402
    44    -1.898433e+03     4.521858e+00
 * time: 18.187306880950928
    45    -1.898463e+03     3.637306e+00
 * time: 18.498716831207275
    46    -1.898477e+03     2.417136e+00
 * time: 18.797863960266113
    47    -1.898479e+03     1.837133e+00
 * time: 19.075655937194824
    48    -1.898479e+03     5.285171e-01
 * time: 19.407160997390747
    49    -1.898479e+03     4.637580e-01
 * time: 19.767156839370728
    50    -1.898480e+03     1.403921e+00
 * time: 20.051596879959106
    51    -1.898480e+03     3.206388e+00
 * time: 20.34808588027954
    52    -1.898480e+03     8.490526e-03
 * time: 20.668336868286133
    53    -1.898480e+03     9.592087e-03
 * time: 20.91326594352722
    54    -1.898480e+03     1.163416e-02
 * time: 21.163734912872314
    55    -1.898480e+03     8.048338e-03
 * time: 21.412750005722046
    56    -1.898480e+03     6.842725e-03
 * time: 21.68645477294922
    57    -1.898480e+03     1.556896e-02
 * time: 21.947558879852295
    58    -1.898480e+03     1.556896e-02
 * time: 22.23923087120056
    59    -1.898480e+03     2.222981e-02
 * time: 22.490635871887207
    60    -1.898480e+03     2.226260e-02
 * time: 22.76900887489319
    61    -1.898480e+03     2.226073e-02
 * time: 23.05666995048523
    62    -1.898480e+03     2.225956e-02
 * time: 23.381205797195435
    63    -1.898480e+03     2.225954e-02
 * time: 23.72714877128601
    64    -1.898480e+03     2.225953e-02
 * time: 24.103964805603027
    65    -1.898480e+03     2.225952e-02
 * time: 24.448258876800537
    66    -1.898480e+03     2.225952e-02
 * time: 24.808435916900635
    67    -1.898480e+03     2.225952e-02
 * time: 25.172363996505737
    68    -1.898480e+03     2.225952e-02
 * time: 25.531762838363647
    69    -1.898480e+03     2.225952e-02
 * time: 25.87802791595459
    70    -1.898480e+03     2.225952e-02
 * time: 26.248551845550537
    71    -1.898480e+03     2.225951e-02
 * time: 26.588859796524048
    72    -1.898480e+03     2.225951e-02
 * time: 26.944074869155884
    73    -1.898480e+03     2.225951e-02
 * time: 27.30164384841919
    74    -1.898480e+03     2.225951e-02
 * time: 27.66710591316223
    75    -1.898480e+03     2.225951e-02
 * time: 28.069926977157593
    76    -1.898480e+03     2.225951e-02
 * time: 28.442469835281372
    77    -1.898480e+03     2.225951e-02
 * time: 28.8099308013916
    78    -1.898480e+03     2.225951e-02
 * time: 29.153974771499634
    79    -1.898480e+03     2.225951e-02
 * time: 29.498966932296753
    80    -1.898480e+03     2.225951e-02
 * time: 29.87049889564514
    81    -1.898480e+03     2.225951e-02
 * time: 30.233165979385376
FittedPumasModel

Dynamical system type:                 Closed form

Number of subjects:                            120

Observation records:         Active        Missing
    Conc:                      1320              0
    Total:                     1320              0

Number of parameters:      Constant      Optimized
                                  0             11

Likelihood approximation:                     FOCE
Likelihood optimizer:                         BFGS

Termination Reason:              NoObjectiveChange
Log-likelihood value:                    1898.4797

-----------------
       Estimate
-----------------
tvcl    2.6191
tvv    11.378
tvvp    8.4529
tvq     1.3164
tvka    4.8925
Ω₁,₁    0.13243
Ω₂,₂    0.05967
Ω₃,₃    0.41581
Ω₄,₄    0.080678
Ω₅,₅    0.24996
σ_p     0.049098
-----------------
compare_estimates(; pkfit_2cmp, pkfit_2cmp_unfix_ka)
11×3 DataFrame
Row parameter pkfit_2cmp pkfit_2cmp_unfix_ka
String Float64? Float64?
1 tvcl 2.81378 2.61912
2 tvv 11.0046 11.3783
3 tvvp 5.53998 8.45295
4 tvq 1.51591 1.31636
5 tvka 2.0 4.89252
6 Ω₁,₁ 0.102669 0.132433
7 Ω₂,₂ 0.0607756 0.05967
8 Ω₃,₃ 1.20116 0.415807
9 Ω₄,₄ 0.423494 0.0806779
10 Ω₅,₅ 0.244731 0.249961
11 σ_p 0.0484049 0.0490976

Let’s revaluate the goodness of fits and η distribution plots.

Not much change in the general gof plots

res_inspect_2cmp_unfix_ka = inspect(pkfit_2cmp_unfix_ka)
[ Info: Calculating predictions.
[ Info: Calculating weighted residuals.
[ Info: Calculating empirical bayes.
[ Info: Evaluating dose control parameters.
[ Info: Evaluating individual parameters.
[ Info: Done.
FittedPumasModelInspection

Likelihood approximation used for weighted residuals: FOCE
goodness_of_fit(
    res_inspect_2cmp_unfix_ka;
    figure = (; fontsize = 12),
    legend = (; position = :bottom),
)

A 4-mosaic goodness of fit plot showing the 2-compartment model

Goodness of Fit Plots

But you can see a huge improvement in the ηka, (η₃) distribution which is now centered around zero

empirical_bayes_vs_covariates(
    res_inspect_2cmp_unfix_ka;
    categorical = [:Dose],
    ebes = [:η₃],
    figure = (; size = (600, 800)),
)

A histogram for the empirical Bayes distribution of all subject-specific parameters stratified by categorical covariates

Empirical Bayes Distribution Stratified by Covariates

Finally looking at some individual plots for the same subjects as earlier:

fig_subject_fits2 = subject_fits(
    res_inspect_2cmp_unfix_ka;
    separate = true,
    paginate = true,
    facet = (; linkyaxes = false),
    figure = (; fontsize = 18),
    axis = (; xlabel = "Time (hr)", ylabel = "CTMx Concentration (ng/mL)"),
)
fig_subject_fits2[6]

Trend plot with observations for 9 individual subjects over time

Subject Fits for 9 Individuals

The randomly sampled individual fits don’t seem good in some individuals, but we can evaluate this via a vpc to see how to go about.

3.4 Visual Predictive Checks (VPC)

We can now perform a vpc to check. The default plots provide a 80% prediction interval and a 95% simulated CI (shaded area) around each of the quantiles

pk_vpc = vpc(pkfit_2cmp_unfix_ka, 200; observations = [:Conc], stratify_by = [:Dose])
[ Info: Continuous VPC
Visual Predictive Check
  Type of VPC: Continuous VPC
  Simulated populations: 200
  Subjects in data: 120
  Stratification variable(s): [:Dose]
  Confidence level: 0.95
  VPC lines: quantiles ([0.1, 0.5, 0.9])
vpc_plot(
    pk_2cmp,
    pk_vpc;
    rows = 1,
    columns = 3,
    figure = (; size = (1400, 1000), fontsize = 22),
    axis = (;
        xlabel = "Time (hr)",
        ylabel = "Observed/Predicted\n CTMx Concentration (ng/mL)",
    ),
    facet = (; combinelabels = true),
)

A visual predictive plot stratified by dose group

Visual Predictive Plots

The visual predictive check suggests that the model captures the data well across all dose levels.

4 Additional Help

If you have questions regarding this tutorial, please post them on our discourse site.