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Disease Models Overview and Case Studies Joga Gobburu Pharmacometrics Office Clinical Pharmacology, Office of Translational Sciences, CDER, FDA

Disease Models Overview and Case Studies

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Disease Models Overview and Case Studies. Joga Gobburu Pharmacometrics Office Clinical Pharmacology, Office of Translational Sciences, CDER, FDA. Pharmacometrics Survey. Between 2000-2006, 72 NDAs needed Pharmacometrics Reviews/Analyses - PowerPoint PPT Presentation

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Page 1: Disease Models Overview and Case Studies

Disease Models

Overview and Case Studies

Joga Gobburu

Pharmacometrics

Office Clinical Pharmacology,

Office of Translational Sciences, CDER, FDA

Page 2: Disease Models Overview and Case Studies

Pharmacometrics Survey• Between 2000-2006, 72 NDAs needed

Pharmacometrics Reviews/Analyses• For each of the Pharmacometrics Reviews,

the ‘customers’ were asked to rate the impact on approval related and labeling decisions:– Pivotal: Decision would not have been the same

without Pharmacometrics analysis– Supportive: Decision was well supported by the

Pharmacometrics analysis– No Contribution: No need for the

Pharmacometrics analysis

Page 3: Disease Models Overview and Case Studies

Impact of Pharmacometrics Analyses 2000-2004

Bhattaram et al. AAPS Journal.  2005; 7(3): Article 51. DOI:  10.1208/aapsj070351

Impact Approval Labeling

Pivotal 54% 57%

Supportive 46% 30%

No Contribution 0 14%

Pivotal: Regulatory decision will not be the same without PM reviewSupportive: Regulatory decision is supported by PM review

Page 4: Disease Models Overview and Case Studies

Pivotal: Regulatory decision will not be the same without PM reviewSupportive: Regulatory decision is supported by PM review

Impact →Discipline

Approval Labeling

PM Reviewer 95% 100%

DCP Reviewer 95% 100%

DCP TL 90% 94%

Medical Reviewer 90%@ 90%@

DCP=Division of Clinical Pharmacology@=survey pending in 1 case

Impact of Pharmacometrics Analyses 2005-2006

Page 5: Disease Models Overview and Case Studies

NDA#1: Approval of monotherapy oxcarbazepine in pediatrics for treating partial

seizures using prior clinical data

FDA/Sponsor pursued approaches to best

utilize knowledge from the previous trials to

assess if monotherapy in pediatrics can

be approved without new controlled trials

Page 6: Disease Models Overview and Case Studies

• The sponsor was pursuing an accelerated approval, for drug to prevent a life-threatening disease, based on a biomarker even though clinical endpoint analysis failed in two pivotal trials

NDA#2: Establishment of biomarker-outcome relationship allowed more efficient

future trial design

Page 7: Disease Models Overview and Case Studies

NDA#2: Establishment of biomarker-outcome relationship allowed more efficient

future trial design

0.0 0.5 1.0 1.5 2.0

Ratio of Baseline Anti-dsDNA Levels

01

23

Rel

ativ

e R

isk

of R

enal

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reStudy 09

Estimated RRLL of 95% CLUL of 95% CL

Ratio of biomarker level to baseline

Hazard ratio=10.0 (95% CI 2.5-30.0)

p<0.001Rel

ativ

e ri

sk o

f th

e d

isea

se e

ven

t

0.5

1.6

Page 8: Disease Models Overview and Case Studies

NDA#3: Insights into trial failure reasons will lead to more efficient future trials

0 5 10 15 20 25 30Dose, mg

-40

-20

0

20

40

60

80

Pla

cebo

-Sub

trac

ted

Cha

nge

In

Sco

re A

at W

eek

12

0 5 10 15 20 25 30Dose, mg

-40

-20

0

20

40

60

80

Pla

cebo

-Sub

trac

ted

Cha

nge

In

Sco

re A

at W

eek

12

Mild Baseline DiseaseNon-Responders

Severe Baseline DiseaseResponders

Page 9: Disease Models Overview and Case Studies

Females seem to be more sensitive to QT prolongation

Slo

pe

Slo

pe

Slo

pe

Slo

pe

Page 10: Disease Models Overview and Case Studies

Need/Opportunities for Innovative Quantitative Methods in Drug Development

Optimal design to show ‘disease modifying’ effects?

Good marker(s) of survival benefit in cancer patients?

Maximize the change of success of a 2yr obesity trial?

Given 85% of depression trials fail, how to improve success?

Best dose for a 26wk trial based on 12 wk data?

Providing solutions for these issues callsfor efficient use of prior knowledge

Page 11: Disease Models Overview and Case Studies

Manage and Leverage Knowledge

Knowledge

Placebo & Disease Models

Information• Biomarker-Endpoint • Time course• Drop-out• Inclusion/Exclusion criteria (Trial)

• Parkinson’s• Obesity, Diabetes• Tumor-Survival• Rheumatologic condition• HIV• Epilepsy• Pain

We are referring to such diverse quantitative approach(es) as ‘Disease Modeling’

Page 12: Disease Models Overview and Case Studies

Core Development Strategy for Testosterone Suppressants

Disease Model

Reporter Gene Assay

Preclinical

Clinical Trial

Simulation

Dose optimization

in cancer patients

Pivotal trial

|----*2 mo-----|*Actual execution time.- it does account for time spent accumulating resources.

|----*2 mo-----||----*2 mo-----||----*3 mo-----||---------*12 mo--------------|

- Early screening of compounds based on IC50

value.

- High thr’put method to filter thousands of compounds

- Based on prior experience, a few potential entities will be selected for the next phase

IC50

PKPD data

- In vitro IC50 as a guide for preclinical dose selection

- Animal models to measure all possible biomarkers e.g. GnRH, LH, T and Drug conc.

- Invitro and preclinical data for clinical dose and regimen selection

- Clinical development plan

- Pilot study for dose optimization thr’ innovative trial designs

PKPD data

From Pravin Jadhav, VCU/FDA

Page 13: Disease Models Overview and Case Studies

Obesity

• Obesity trials are large, over 1-2 yrs and fraught with challenges due to high drop-out rate

Dr. Jenny J ZhengDr. Wei QiuDr. Hae Young Ahn

Page 14: Disease Models Overview and Case Studies

Obesity

Baseline Body Weight

3000 patients

Model Qualification

Page 15: Disease Models Overview and Case Studies

0

5

10

15

20

25

30

1 2 3 4

Week

Dro

p-o

ut,

%

-3.5

-3

-2.5

-2

-1.5

-1

-0.5

0

0.5

Mean

weig

ht ch

ang

e, kg

0-12 12-24 24-36 36-52

Drop-out patients

Remaining patients

Patients with small weight loss drop-out

Page 16: Disease Models Overview and Case Studies

Obesity: Time Course of Placebo Effect

0.0

0.4

0.8

1.2

1.6

2.0

0 100 200 300 400

Days

Wei

gh

t L

oss

, kg

Page 17: Disease Models Overview and Case Studies

Value to Drug Development

• Effective use of prior data for designing future registration trials

• Might lead to alternative dosing considerations– Titration vs. fixed dose– Could lead to increased trial success

• Allows of designing useful shorter duration trials for future compounds for screening and initial dose range selection

Page 18: Disease Models Overview and Case Studies

Diabetes

• How to reliably select doses for registration trials based on abbreviated dose finding trials

• Need arose from an EOP2A meeting– Work in progress: No patient population and

drop-out models yet.

Drs. Vaidyanathan, Ahn, Yim, Zheng, Wang,

Gobburu, Powell, Sahlroot, Orloff

Page 19: Disease Models Overview and Case Studies

Pivotal Trial Dose Selection: Anti-Diabetic

• Sponsor conducted 12 wk dose ranging trial in diabetics

• Key Regulatory Question– What is a reasonable dose range and

regimen for the pivotal trial(s)?

• Challenge– Estimate of effect size on HbA1c at 26

wks not available. Effect size on FPG available.

Page 20: Disease Models Overview and Case Studies

FPG

HbA1c

)1(50

max

CEC

CEKout

inK

inK ' outK '

cHbAKFPGKdt

cdHbAoutin 1''

1

Hb

Alc

FP GD

rug

Conc.

Time (Week)

FPGCEC

CEKK

dt

dFPGoutin

)1(50

max

Cmt 1 Cmt 2

1st order Oral Absorption

FPG-HbA1c relationshipfrom historic studiesemployed to estimateeffects on HbA1c of thenew compound

Jusko et al

Page 21: Disease Models Overview and Case Studies

Biological relationship between FPG-HbA1c bridged information gap

Week

Ob

serv

ed F

PG

(m

g/d

L)

-10 0 10 20 30 40

100

150

200

250

300

Week

Ob

serv

ed H

bA

1c

(%)

-10 0 10 20 30 40

67

89

10

Week

Ob

serv

ed F

PG

(m

g/d

L)-10 0 10 20 30 40

100

120

140

160

180

200

220

240

260

Week

Ob

serv

ed H

bA

1c

(%)

-10 0 10 20 30 40

67

89

10

11Week

Ob

serv

ed

FP

G (

mg

/dL

)

-10 0 10 20 30 40

10

01

50

20

02

50

30

0

WeekO

bse

rve

d H

bA

1c

(%)

-10 0 10 20 30 40

67

89

10

11

+ =

Drug X (Sponsor) in 72 patients

Drug X (other)in 28 patients

Hybrid datasetin 100 patients

Page 22: Disease Models Overview and Case Studies

Value to Drug Development

• More informed dose/regimen selection– Could lead to increased trial success

• Quantitative analysis was critical

• Effective use of prior data for predictions

• Supports conduct of useful shorter duration trials for future compounds

Page 23: Disease Models Overview and Case Studies

Disease Models: Challenges

• Data Management– How to best maintain an efficient database?

• Analysis– How to best conduct meta-analysis?– Identify and fill gaps (time-varying biomarkers

in survival models)?• Inter-disciplinary collaboration

– Biologists, Pharmacologists, Statisticians, Disease Experts, Quantitative Clinical Pharmacologists, Engineers need to come together to develop these models as a team.