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Bayesian Population PharmacokineticPharmacodynamic Modeling

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Title: Bayesian Population PharmacokineticPharmacodynamic Modeling


1
Bayesian Population Pharmacokinetic/Pharmacodynami
c Modeling
  • Steven Kathman
  • GlaxoSmithKline

2
Half of the modern drugs could well be thrown out
of the window, except that the birds might eat
them. Dr. Martin Henry Fischer
3
Outline
  • Introduction
  • Population PK modeling
  • Population PK/PD modeling
  • Modeling the time course of ANC
  • Other examples
  • Conclusions

4
Introduction
  • KSP inhibitor (Ispinesib) being developed for the
    treatment of cancer.
  • Blocks assembly of a functional mitotic spindle
    and leads to G2/M arrest.
  • Causes cell cycle arrest in mitosis and
    subsequent cell death.
  • Leads to a transient reduction in absolute
    neutrophil counts (ANC).

5
Introduction
  • KSP10001 was the FTIH study.
  • Ispinesib dosed once every three weeks.
  • PK data collected after first dose.
  • ANC assessed on Days 1 (pre-dose), 8, 15, and 22
    (C2D1 pre-dose). More frequent assessments done
    if ANC lt 0.75 (109/L).
  • Prolonged Grade 4 neutropenia (gt 5 days) most
    common DLT.

6
Objectives
  • Determine a suitable PK model.
  • - Examine 2 vs 3 compartment models.
  • Determine a suitable model for PD endpoint (i.e.,
    time course of absolute neutrophil counts).
  • - Using Nonlinear mixed models.
  • - Using Bayesian methods.

7
Pharmacokinetics
  • The action of drugs in the body over a period of
    time, including the processes of absorption,
    distribution, localisation in tissues,
    biotransformation and excretion.
  • Simple terms what happens to the drug after it
    enters the body.
  • What is the body doing to the drug over time?

8
R
A2 C2V2
A1 C1V1
k12
k21
k10
dA1/dt R k21A2 k12A1 k10A1
dA2/dt k12A1 k21A2
9
CL k10V1 Q k12V1 k21V2
10
Infusion
k0 zero order infusion rate Tt during
infusion, constant time infusion was stopped
after infusion.
11
PK Model
12
PK Model
µVague MVN prior
R chosen based on CV30
13
If that was painful
In mathematics you don't understand things. You
just get used to them. Johann von Neumann (1903
- 1957)
14
Bayesian Results
  • Typical Bayesian analysis (via MCMC) involves
    estimation of the joint posterior distribution of
    all unobserved stochastic quantities conditional
    on observed data.
  • Generating random samples from the joint
    posterior distribution of the parameters.
  • Marginal distribution of each parameter is
    completely characterized (numerical integration).

P(individual specific PK parameters, population
PK parameters PK data)
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16
R
k12
k13
A1C1V1
A2C2V2
A3C3V3
k31
k21
k10
dA1/dt R k21A2 k31A3 k12 A1 k13A1 k10
A1
dA2/dt k12A1 k21A2
dA3/dt k13A1 k31A3
17
Pharmacodynamics
  • The study of the biochemical and physiological
    effects of drugs and the mechanisms of their
    actions, including the correlation of actions and
    effects of drugs with their chemical structure,
    also, such effects on the actions of a particular
    drug or drugs.
  • What is the drug doing to the body?

18
Modeling the Time Course Absolute Neutrophil
Counts
When you are curious, you find lots of
interesting things to do. The way to get started
is to quit talking and begin doing. Walt
Disney (1901-1966)
19
Model of Myelosuppression
Prol
Circ
Transit 1
Transit 2
Transit 3
ktr
ktr
ktr
ktr
kprol ktr
kcirc ktr
EDrug ß?Conc
20
Features of Model
  • Proliferating compartment sensitive to drug.
  • Three transit compartments represent
    maturation.
  • Compartment of circulating blood cells.
  • System parameters MTT, baseline, and feedback.
  • Drug specific parameter Slope.

21
Feedback
  • Account for rebound phase (overshoot).
  • Negative feedback from circulating cells to
    proliferative cells.
  • G-CSF levels increase when circulating neutrophil
    counts are low.
  • G-CSF stimulates proliferation in bone marrow.

22
Model of Myelosuppression
  • dProl/dt kprolProl(1-EDrug)(Circ0/Circ)?-ktr
    Prol
  • dTransit1/dt ktrProl-ktrTransit1
  • dTransit2/dt ktrTransit1-ktrTransit2
  • dTransit3/dt ktrTransit2-ktrTransit3
  • dCirc/dt ktrTransit3-kcircCirc

23
ANCijt(Meanij(MTTi, Circ0(i),?, ßi Concij),
?ij, 4)
Mean Solution of the differential equation
(Circ) MTTi 4/(ktr(i)) Mean transit time.
Fairly informative priors (Literature).
ln(MTTi)N(?MTT, ?MTT) ln(Circ0(i))N(?circ,
?circ) ln(ßi)N(?ß, ?ß)
Vague prior.
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30
Simulate New Schedule
  • Using mechanistic/semi-physiological models
    allows for simulation of new schedules.
  • Simulate dosing on days 1, 8, and 15 repeated
    every 28 days.
  • PK/PD model accurately predicted the observed
    severity and duration of neutropenia.

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33
Why Bayesian?
  • Incorporate prior information (MTT and baseline).
  • Better integration algorithm (Monte Carlo vs
    Taylor Series or Quadrature).
  • Posterior distribution vs MLE More informative,
    avoids potentially problematic maximization
    algorithms.
  • Better individual estimates Bayesian vs
    Empirical Bayesian (which usually fail to account
    for estimated population parameters?).

34
Tumor Growth Models
  • dC/dt KLC(t) KDC(t)D(t)exp(-?t)
  • where KL Tumor growth rate
  • KD Drug constant kill rate
  • D(t) Dose or PK measure
  • ? rate constant for resistance
  • dC/dt exp(?1t) C(t) KDC(t)D(t)exp(-?2t)

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38
Preclinical PK
  • Concentrations in plasma.
  • Concentrations in a tumor.
  • Relate the two
  • Plasma two-compartment model.
  • Tumor
  • dCT(t)/dt (KP/VT)AP(t)-KTCT(t)

39
More PK
  • Compound given through iv infusion.
  • Should be 1-hr infusion.
  • Reason to believe that the infusion time is less
    for some subjects.
  • Making the infusion times a parameter to be
    estimated, with informative priors.

40
Software
  • WinBugs (Pharmaco and WBDiff)
  • - Pharmaco Built in PK functions.
  • - WBDiff Differential Equation Solver
  • NONMEM
  • SAS macro
  • R nlmeODE library and function

41
Conclusions
  • PK/PD modeling often involves interesting and
    complicated models.
  • Models can serve many useful functions in drug
    development.
  • Bayesian methods help with
  • Better algorithms
  • More flexibility
  • Incorporating outside information

42
General Remarks
  • PK/PD modeling involves different skills coming
    together (medical, pharmacokinetics,
    pharmacology, statistics, etc.).
  • As a statistician, helps to develop knowledge in
    areas outside of statistics.

43
References
Knowledge is of two kinds. We know a subject
ourselves, or we know where we can find
information on it. Samuel Johnson (1709 - 1784),
quoted in Boswell's Life of Johnson
44
References
  • Gibaldi, M. and Perrier, D. (1982)
    Pharmacokinetics.
  • Friberg, L. et. al. (2002). Model of
    Chemotherapy-Induced Myelosuppression with
    Parameter Consistency Across Drugs. JCO
    204713-4721.
  • Friberg, L. et. al. (2003). Mechanistic Models
    for Myelosuppression. Investigational New Drugs
    21183-194.
  • Lunn, D. et. al. (2002). Bayesian Analysis of
    Population PK/PD Models General Concepts and
    Software. Journal of PK and PD 29271-307.
  • PK Bugs User Guide.
  • Christian, R. and Casella, G. (2005) Monte Carlo
    Statistical Methods.
  • Gelman, A. et. al. (2003) Bayesian Data Analysis.
  • Gabrielson, J. and Weiner, D. (2006)
    Pharmacokinetic and Pharmcodynamic Data Analysis
    Concepts and Applications

45
Questions
The outcome of any serious research can only be
to make two questions grow where only one grew
before. Thorstein Veblen (1857 - 1929)
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