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DPQR: Advancing Critical Path Research

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Present teams and projects. Current needs related to ... Rakhi Shah et al., Clin. Res. & Reg. Affairs, (In press) 2004 A. Box-Behnken Optimization Design ... – PowerPoint PPT presentation

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Title: DPQR: Advancing Critical Path Research


1
DPQR Advancing Critical Path Research
  • ACPS Meeting, October 19th, 2004
  • Mansoor A. Khan, R.Ph., Ph.D.
  • Director, Division of Product Quality Research

2
Outline
  • DPQR Mission/Vision
  • Present teams and projects
  • Current needs related to critical path and cGMP
    initiatives
  • Future directions
  • Examples for design space
  • Questions

3
Division of Product Quality Research
  • Mission
  • Advance the scientific basis of regulatory
    policy with comprehensive research and
    collaboration focus/identify low and high-risk
    product development and manufacturing practices
    share scientific knowledge with CDER review staff
    and management through laboratory support,
    training programs, seminars and consultations,
    and foster the utilization of innovative
    technology in the development, manufacture and
    regulatory assessment of product development
    Stay aligned with OPS and CDER missions
  • Vision
  • Be recognized leaders in providing support for
    guidance based on science and peer-reviewed data
    well trained staff in state-of-the-art product
    quality laboratories that is capable of providing
    any information sought by reviewers, industry, or
    the FDA leadership.
  • Culture
  • The way we live and act cooperation, mutual
    respect, synergy, professional development with
    life-long learning opportunities

4
Teams
  • 19 scientists divided as follows
  • Pharm./Analytical Chemistry Team
  • Physical Pharmacy Team
  • Biopharmaceutics Team
  • Novel Drug Delivery Systems Team (New)

5
Pharm/Analytical Chemistry Projects (Team Leader
Dr. Patrick Faustino)
  • Prussian Blue (safety, efficacy and product
    quality studies)
  • Shelf-Life Extension Program (collaborative)
  • Isotretinoin (bioanalytical and kinetic studies
    (collaborative)

6
Safety and Efficacy of Prussian Blue
7
Biopharmaceutics Team (Team Leader Dr. Donna
Volpe)
  • Small team (Needs to grow)
  • BCS guidance
  • Levothyroxine Sodium (Stability and
    Bioequivalence issues-Collaborative)
  • Effect of cyclodextrin on permeability
  • Database on permeability of several drugs
  • Variability of permeability in caco2 cells
  • Liposome uptake studies

8
Clinical BA Study-Excipient EffectBCS Class
I-Drug BCS Class III-Drug
9
Physical Pharmacy Team(Deputy Director Dr.
Robbe Lyon Team Leader Everett Jefferson)
Some PAT related activities include
  • Content Determination
  • Blend Uniformity
  • Moisture uptake
  • Polymorphic Form
  • Predicting Dissolution
  • Particle Sizing
  • Powder Flow

10
Content determination with NIR
11
Content Determination with Raman Spectra
785 nm Laser Excitation
12
Blend Uniformity NIR PLS Score Images and
Localized Spectra
Blend C Tablet
API Excipient
13
Final Dosage Hydration
  • Commercial Nitrofurantoin Capsules
  • Brand 1 Capsule contains 2 cores
  • Core A 25 mg nitrofurantoin anhydrous (9)
  • Core B 75 mg nitrofurantoin monohydrate (40)
  • Brand 2 Capsule contains 3 cores
  • Core A 25 mg nitrofurantoin anhydrous (12.5)
  • 2 x Core B each 40 mg nitrofurantoin
  • monohydrate (ea 20)
  • Sensors NIR Spectroscopy/ NIR Imaging

14
API Hydration by Chemical Imaging NIR PLS
Concentration Maps of Brand 1 Capsule Cores
15
PLS Model NIR-Dissolution Correlation
  • NIR Spectra and Dissolution Values of Furosemide
    Tablets
  • 144 Tablets
  • Spectral Range 1100-2300 nm
  • Dependent Variable Dissolution Values at 15 min
  • Preprocessing
  • Savitzky Golay 2nd-Derivative
  • Validation Set (N 72)0
  • Cross-Validation Model
  • 3 samples from each formulation
  • Prediction Set (N 72)
  • Remaining 3 samples from each formulation

16
Predicting Dissolution from NIR SpectraDirect
Compression (Diss at 15 min)
17
The DPQR Today.
Analytical Methods
Characterization
DS
Slep
Cell Culture
DP
Stability
18
Critical Path Science Base
  • The science necessary to evaluate and predict
    safety and efficacy, and to enable manufacture is
    different from the science that generates the new
    idea for a drug, biologic, or device.
  • In general, NIH and academia do not perform
    research in this area
  • Dr. Woodcock, May 2004

19
  • OPS programs and projects will support the
    achievement of the following attributes of drug
    products
  • Drug quality and performance is achieved and
    assured through design of effective and efficient
    development and manufacturing processes
  • Regulatory specifications are based on a
    mechanistic understanding of how product and
    process factors impact product performance
  • Helen Winkle, ACPS, April 2004

20
THE DESIRED STATE/Q8(as agreed by EWG)
  • Product quality and performance achieved and
    assured by design of effective and efficient
    manufacturing processes
  • Product specifications based on mechanistic
    understanding of how formulation and process
    factors impact product performance
  • An ability to effect Continuous Improvement and
    Continuous "real time" assurance of quality
  • John Berridge, Q8 Rapporteur, FDA, July 2004

21
DPQR Vision for Tomorrow..
DS
Analytical Methods
  • Excipients
  • Formulation variables
  • Process variables
  • Mechanistic evaluations
  • Optimization
  • ANN procedures

DP
Cell Culture
Slep
PK/ Bioavailability
Characterization
NDDS
Stability
  • Mixing
  • Milling
  • Granulation
  • Drying
  • Compression
  • Coating
  • Packaging
  • Nanoparticles
  • Liposomes
  • SR/MR
  • TDDS
  • Nasal
  • Pulmonary
  • Fast disintegration
  • Solid dispersion

Chemical
Physical
22
New Projects?
  • Novel Drug Delivery Systems including
    nanoparticulates preparation, characterization,
    development of in-vitro procedures in DPQR
    laboratories
  • Science-based projects with mechanistic
    understanding
  • Process engineering with real time monitoring and
    modeling in-house and with collaborations
  • SLEP/Stability and repackaging issues
  • Generic Drugs In vitro methods for determining
    bioequivalence of locally acting GI drugs
    Stability issues with split tablets Stability
    issues with Repackaging
  • Stents?
  • New CRADAS
  • Permeability of drugs from nanoparticles/bioavaila
    bility studies

Near IR probe
23
Box, Hunter and Hunter, 1978
24
Box, Hunter, and Hunter, 1978
25
Evolutionary Operation
Box, Hunter, and Hunter, 1978
26
Example of design space
Osmotic push-pull system
water
27
Plackett-Burman Screening Design
7-factor 2-level design
Independent factors Levels used X1
orifice size (mm) 0.35 0.64 X2 coating
level () 100 200 X3 amount of NaCl in
osmotic layer (mg) 1 10 X4 amount of Polyox
N10 (mg) in drug layer 40 60 X5 amount of
Polyox N80 (mg) in osmotic layer 60 80 X6
amount of Carbopol 934P (mg) in drug layer 0
3 X7 amount of Carbopol 974P (mg) in osmotic
layer 0 3 Dependent variable Y1 cumulative
sCT released up to 3 hr Constraints Y2 (gt 5 )
tOVM release at 1 hr Y3 (gt 10 ) tOVM
release at 2 hr Y4 (gt 20 ) tOVM release at 3
hr
28
Plackett-Burman Screening Design
Y1 56.033.33X18.65X25.14X39.25X42.26X525.1
6X6- 2.60X7
Dissolution profiles
Rakhi Shah et al., Clin. Res. Reg. Affairs, (In
press) 2004 A
29
Box-Behnken Optimization Design
3-factor 3-level design 15 runs
Independent factors Levels used X1 amount of
NaCl (mg) 0.1 0.5 0.9 X2 coating level
() 100 200 300 X3 amount of Polyox N10
(mg) 40 50 60 Dependent variable Y5
cumulative sCT released up to 3
hr Constraints Y1 (16.65 ? 10 ) cumulative
sCT released up to 0.5 hr Y2 (33.33 ? 10 )
cumulative sCT released up to 1 hr Y3 (49.95 ?
10 ) cumulative sCT released up to 1.5
hr Y4 (66.66 ? 10 ) cumulative sCT released
up to 2 hr
Drug layer sCTtOVMglycyrrhetinic acid
30
Box-Behnken Optimization Design
Y5 89.35 - 2.78X1 - 1.66X2 1.38X3 0.46X1X2
0.41X2X3 2.23X1X3 6.21X21 1.67 X22 2.23 X23
Factors X1 0.2875 X2 -0.9994 X3 1 Responses Y1 6.
65 Y2 31.8 Y3 58.1 Y4 76.6 Y5 93.88
R2 0.94
31
Box-Behnken Optimization Design
Effect of X1(NaCl), X3 (Polyox N10) on Y5 (sCT
release)
Contour plot
Response- surface plot
32
Examples of nanoparticles
  • Studies conducted to characterize and evaluate a
    nanoparticulate formulation
  • Excipient induced recrystallization (excipient
    selection)
  • Droplet size analysis
  • Thermal analysis (DSC)
  • Binary phase diagrams (formation of eutectic
    mixtures)
  • Pseudo ternary phase diagram (area of
    spontaneous emulsion
    formation)
  • FTIR analysis ( for stability evaluation)
  • Liquid crystalline phase determination
  • Dissolution studies
  • Turbidimetry (Time-turbidity profile for
    emulsification rate)

Int. J. Pharm. 2002, 235, 247-265
33
Optimization by Box-Behnken Design
Palamakula et al., AAPS Pharm. Sci. Tech., (2004,
In press)
34
Palamakula et al., 2004, AAPS PharmSciTech
35
Questions to the advisory committee
  • Do you think we are missing anything important
    that needs to be pursued at this time?
  • Does a systematic study with a designed set of
    experiments provide opportunities for reduction
    of PAS documents?
  • Do you agree that the information on design
    space with a designed set of experiments will
    reduce the OOS situations?
  • Do you agree that the research with well-designed
    set of experiments on lab scale will create
    opportunities for continuous improvements and
    innovations in manufacturing?
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