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Parametric and Nonparametric Population Modeling: a brief Summary

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Title: Parametric and Nonparametric Population Modeling: a brief Summary


1
Parametric and Nonparametric Population Modeling
a brief Summary
  • Roger Jelliffe, M.D.
  • USC Lab of Applied Pharmacokinetics

2
InTER-Individual Variability
  • The variability between subjects in a
    population.
  • Usually a single number (SD, CV) in parametric
    population models
  • But there may be specific subpopulation groups
  • eg, fast, slow metabolizers, etc.
  • How describe all this with one number?
  • What will you DO with it?

3
InTRA-Individual Variability
  • The variability within an individual subject.
  • Assay error pattern, plus
  • Errors in Recording times of samples
  • Errors in Dosage Amounts given
  • Errors in Recording Dosage times
  • Structural Model Mis-specification
  • Unrecognized changes in parameter values during
    data analysis.
  • How describe all this with one number?
  • How describe interoccasional variability
    only with one number?
  • What will you DO with these numbers?

4
Bottom line for researchor for TDM
  • Dont wait for steady state
  • Dont wait for distribution after the dose
  • Start TDM with 1st dose
  • Use D-opt principles

5
Parametric Population Models IT2B, NONMEM, etc
  • Assume shape (normal, lognormal) of param
    distribs. (Describe params parametrically)
  • Get the param param values param means, SDs,
    covariances, etc.
  • Get F from intermixed IVPO dosage
  • Get SEMs, some confidence limits, signif tests.
  • Separate Inter - from Intra - Individual
    from assay Variability
  • But, usually get only summary single values for
    parameter distributions.
  • And also, they are not consistent.

6
SummaryParametric Population Models
  • Single point parameter estimates only.
  • Only one (1) model.
  • Cannot discover unsuspected subpopulations
  • Cannot predict precision of goal achievement
  • Most currently available ones not consistent.
  • Can estimate Parameter ranges

7
A Parametric Population Model Joint Density
8
800 Normally distributed (K,V) points,
correlation 0.6
9
A Population Model, made by Breugel
10
What is the IDEAL Pop Model?
  • The correct structural PK/PD Model.
  • The collection of each subjects exactly known
    parameter values for that model.
  • Therefore, multiple individual models, one for
    each subject.
  • Usual statistical summaries can also be obtained,
    but usually will lose info.
  • How best approach this ideal? NP!

11
An NPML Population Model, made by Mallet
12
800 normal points give 70 NPAG support points
13
Nonparametric Population Models (1)
  • Get the entire ML distribution, a DiscreteJoint
    Density one param set per subject, its prob.
  • Shape of distribution not determined by some
    equation, only by the data itself.
  • Multiple indiv models, up to one per subject.
  • Can discover, locate, unsuspected subpopulations.
  • Get F from intermixed IVPO dosage.

14
Nonparametric Population Models (2)
  • The multiple models permit multiple
    predictions.
  • Can predict precision of goal achievement by a
    dosage regimen.
  • Behavior is consistent.
  • Use IIV /or assay SD, stated ranges.

15
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