collaborative data resources tipharma pkpd modeling platform

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Collaborative data resources TIPharma PKPD modeling platform Meindert Danhof, PharmD, PhD EFPIA/EMA Workshop 01 December 2010 EFFECT Drug in biophase Target activation Transduction Disease

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Collaborative data resourcesTIPharma PKPD modeling platform

Meindert Danhof, PharmD, PhD

EFPIA/EMA Workshop 01 December 2010

EFFECTDrug in

biophaseTarget

activation Transduction Disease

Drug

● Dosing

Pharmacology

● Exposure● Response

Disease

● Progression

Biological system

Outcome

● Efficacy ● Safety

Species Subject

Between system variation

Stationarity E-factors

Within system variation

Quantitative systems pharmacology utility of collaborative data resources

TI Pharma mechanism-based PKPD modeling platform the objective

Development and implementation of a mechanism-based PKPD modeling platform as the

scientific basis for rational drug discovery and innovation

• Database of ‘biological system specific’ .. …information

• Mechanism-based PKPD model library

• University-industry consortium with 4 academic and 8 industrial partners

• Dedicated infrastructure for data management, data analysis and reporting: sharing of data, models and biological system specific information

• Emphasis on key factors in the discovery/development and the clinical application of novel drugs

– Translational pharmacology (efficacy and safety)

– Developmental pharmacology (pediatrics, elderly)

– Disease system analysis (osteoporosis, COPD)

TI Pharma mechanism-based PKPD modeling platform the organization

• Development of mechanism-based PK-PD models on basis of existing data

• Strict data access restrictions

• Centralized computing network facility for data management and analysis

• Model library interface for users

TI Pharma mechanism-based PKPD modeling platform the operation

Data Data Data

DraftModel

PooledData

Publication

Partner:

Platform:

Manager:

Modeler:

Partner:

Public domain:

FinalModel

TI Pharma mechanism-based PK-PD modeling platform the information flow

Data analysis

TI Pharma mechanism-based PK-PD modeling platform the database system

Drug N Dose Variables used for modelling & simulation and sampling scheme

Moxifloxacin����

4 3, 10, 30 mg/kg Clock time, RR, QT over 24 h

plasma PK from literature

����137 400mg Clock time, RR, QT, plasma PK over

24 h

Sotalol����

4 4, 8 mg/kg Clock time, RR, QT over 48h, plasma PK literature

����30 160 mg Clock time, RR, QT, plasma PK over

24 h

Cisapride����

4 0.6, 2, 6 mg/kg Clock time, RR, QT, plasma PK over 24 h, plasma PK from literature

����24 10, 20, 40, 80 mg Clock time, RR, QT, plasma PK over

24 h

NCE����

4 1.5 μg Clock time, RR, QT, plasma PK over 24 h,

����24 1.5 μg Clock time, RR, QT, plasma PK over

24 h

Prediction of pharmacology in mancardiovascular safety

Animal to human extrapolation of in vivo concentration-effect relations

QTc = QT0 x RRα · (1 + A · cos(2π/24 · (clocktime – φ)) + slope · C)

Translational slope drug effect in conscious dogs vs. clinical studies

QT

c sl

op

e f

or

clin

ica

l st

ud

ies

QTc slope for conscious dog studies

0.08

0.06

0.04

0.02

0.00

0.00 0.02 0.04 0.06 0.08

moxifloxacinsotalolcisapride

Indentifying the animal to human translation function for QTc interval prolongation

other compounds

test compound

“Rotterdam study”

• Baseline = sex; linear increase with age

• Co-morbidities = heart failure, MI, diabetes

• Co-medication = anti-arrhythmics

• Between subject variability

Prediction of cardiovascular risk in real life situations not in trial simulation

QTc = baseline + drug effect + co-morbidities + co-medications + ε

Drug effect

QTc = QT0 x RRα · (1 + A · cos(2π/24 · (clocktime – φ)) + slope · C)

Prediction of cardiovascular risk in real life situations not in trial simulation

Simulated Age/Sex-Dep. Healthy Baseline DistributionSimulated Age/Sex-Dep. Healthy Baseline Distribution

M F

Density

Density

QTc [BAZ] in ms QTc [BAZ] in ms

Density

Density

QTc [BAZ] in ms QTc [BAZ] in ms

M F

Simulated Age/Sex-Dep. Healthy Baseline Distribution Simulated Age/Sex-Dep. Healthy Baseline Distribution

∆QTc = ~33ms ∆QTc = ~29ms

Simulated Healthy Baseline + Sotalol Distribution Simulated Healthy Baseline + Sotalol Distribution

M F

Density

QTc [BAZ] in ms QTc [BAZ] in ms

∆QTc = ~22ms

∆QTc = ~22ms

Density

Simulated Healthy Baseline + Sotalol Distribution Simulated Healthy Baseline + Sotalol Distribution

FM

∆QTc = ~3ms ∆QTc = ~1ms

Simulated Healthy Baseline + Sotalol + Comorb Distribution Simulated Healthy Baseline + Sotalol + Comorb Distribution

Density

Density

QTc [BAZ] in ms QTc [BAZ] in ms

Density

Density

QTc [BAZ] in ms QTc [BAZ] in ms

Between Subject Variability

Simulated Healthy Baseline + Sotalol + Comorb Distribution Simulated Healthy Baseline + Sotalol + Comorb Distribution

FM FM

Density

Density

QTc [BAZ] in ms QTc [BAZ] in ms

Compare Not-In-Trial Simulated Results with Obs Compare Not-In-Trial Simulated Results with Obs

• Not in trial simulation to predict natural variation in QTcin the target population

• Analyze relationship between variation in QTc and cardiovascular risk in the target population

– Delta analysis

– Threshold analysis

• Develop and incorporate cardiovascular risk prediction model

Prediction of cardiovascular riskfrom ECG findings to sudden cardiac death

Prediction of cardiovascular risk

Quantitative Systems Pharmacologyutility of collaborative data resources

Interspecies variation

Time variant changes

Disease progression

Clinical trials

Clinical outcome

Drug treatment

Non-stationarity

Disease progression

Clinical trials

Clinical outcome

The concepts

• Physiologically-based PK modeling

• Mechanism-based PD modeling

• Disease system analysis

• Clinical trial simulation

• Epidemiology

The data

• Public data bases

• Proprietary data bases

• NEW data

Modelling Library

Shared knowledge

Modelling FrameworkA modular platform for integrating andreusing models;

shortening timelinesby removing

barriers

ModelDefinitionLanguage

Systeminterchangestandards

Specificdisease

modelsExamples from

high priority areas

Standards for describing models, data and designs

Education Training

Drug & Disease Model Resource (DDMoRe)vision and deliverables