Download presentation
1
Right the First Time Program Office
Utilizing RM in a Submission for Developing Critical Process Parameters and Critical to Quality Attributes Kelly Canter, PhD Right the First Time Program Office Pfizer Inc., Groton, CT FDA/Industry Statistics Workshop September 2006
2
Outline QbD Terminology and Value Proposition
Risk Assessment Process (Case Study) Experiments, PAT and Prioritization Creation of Design Space
3
Alignment of ICH Q(8) Enhanced knowledge of product performance . . .
Establish range of material attributes, processing options & process parameters Demonstrated product/process understanding Results from PAT, DOE, Science of Scaling Appropriate application of risk management principles Establish Design Space Flexible regulatory approaches Risk based regulatory decisions Mfg. process improvements w/in approved design space Real time quality control Reduce product release tests
4
Quality by Design – “Right First Time”
Process Understanding Continuous Improvement Process Control Process Control Strategy Process Capability Monitoring Commercializable Manufacturing Process (API or DP) e.g. Cpk Change Control Strategy and Implementation Continuous Improvement (Process Changes) Risk Assessment Prioritized Experimental Plans Prioritized PAT Plans Regulatory Filing/Approval Experimentation /Method Dev/Documentation Design Space Definition Launch
5
Why Do QbD? (Value Proposition)
Getting at the Right Process Knowledge = Value to Pfizer, FDA and Patients Work Impact During Development Decrease ICH re-do’s Decrease Validation re-do’s Decrease Clinical Batch re-do’s Transparent assessment of risk Prioritization Improvements to our Products and Processes Decrease Variability Assure market supply Faster change implementation Science support Quality investigtations Reduce COG Streamline regulatory reviews (S&E) Framework for decreased regulatory burden Standardization
6
Process Parameters Quality Attributes
Process Understanding Process Parameters People Quality Attributes Inputs to the process control variability of the Output I N P U T S (X) Equipment y = ƒ(x) Measurement y Process OUTPUT Materials Environment J. Scott, ASTM, London 2004
7
What is a Quality Attribute?
Definitions Quality Attribute A physical, chemical or micorbiological property or characteristic of a material. Key Quality Attribute (KQA) Potential to impact product quality or process effectiveness Evaluated by an associated analytical method. Critical Quality Attribute (CQA) impacts the safety or efficacy of a drug products
8
What is a Process Parameter?
Definitions Process Parameters Broadly defined as machines, materials, people, processes, measurements and environments Key Process Parameter (KPP) Influences product quality or process effectiveness Critical Process Parameter (CPP) Influences a CQA and that must be controlled within predefined limits to ensure the API or product meets its pre-defined limits
9
Risk Assessment Work Process
10
Risk Assessment and Prioritization Decide what’s important to evaluate
Quality Attributes Process Parameters Many Y’s Many X’s Process Consensus decisions Use process experience Use project process knowledge Focus on the “Voice of the Customer” Process Cause and Effect Matrix with “Effects” focused on KQAs Vital Few Y’s: Key Quality Attributes Vital Few X’s: Key Process Parameters
11
The QbD Work Process at a “High Level”
Experimentation Prioritization Risk Assessment Experimental Planning Process Understanding
12
Risk Assessment Case Study
Dry Granulation Tablet
13
Risk Assessment Objectives
Gain agreement on process scope Decide what’s important to evaluate Prioritize parameters based on risk Gain agreement on high level experimental strategy Identify and prioritize PAT applications
14
Risk Assessment Work Process
15
Risk Assessment Meeting Participants
R&D Co-Facilitator API Analytical Formulation* Chemical DP Formulation Chemical* Ext. Subject matter experts PAT R&D Statistician Scribe (workbook) Line management Team Co-Leader Pfizer Global Manufacturing Co-Facilitator API Tech Services DP Tech Services Manufacturing Supervisor QC QA Team Co-Leader Subject matter experts PAT PGM Line management
16
Risk Assessment Work Flow
Create a Process Map with Focus Areas Identify all Quality Attributes and Determine How To Measure Identify and Prioritize all Process Parameters (KPPs) Group KPPs into Experiments Create PAT Prioritization Matrix Document Yellow font =Pre-work required.
17
Risk Assessment Step 1. Create a Process Map Describes the composition and boundaries of each focus area. Process Step Commercial Manufacture Boundaries Raw Material Dispensing CP-526, , Cellulose microcr, PH200, Calcium Hydrogrenphosphate (amhydrous), colloidal Silicon dioxide, Croscarmellose Sodium Raw Material Dispensing Focus Area 1 Preblending 300 L bin 15 minutes Initial Blend Initial Blend Focus Area 2 Comil 0.8 mm sieve Sieving De-lumped Unlubed Blend Focus Area 3 300 L bin 2 minutes De-lumped Unlubed Blend Lube Blend Lubed Blend Dry Granulation and Blend Bepex K 200/50 Roll: Deep Pocket Screen Size: 0.8 mm Lubed Blend Focus Area 4 Blending 300 L bin 3 minutes Unlubed Granulation Unlubed Granulation Focus Area 5 300 L bin 3 minutes Lube Blend Final Blend Final Blend Focus Area 6 Compression IMA Comprima 300 Tablet Cores Focus Area 7 Tablet Cores Film Coating Glatt GC 1250 Film Coated Tablets
18
Particle Size Distribution Content Uniformity (Focus Area 6)
Risk Assessment Step 2. Identify QAs and How Measured Step 3. Identify and Prioritize PPs Focus Area 4 - Dry Granulate + Blend Key Attribute Y N Rank 7 5 10 Process Parameter Sieve Cut Potency Blend Uniformity Particle Size Distribution Mill Choking Surface Area Hardness (Focus Area 6) Content Uniformity (Focus Area 6) Score Exp./ Approach Operator Training Procedures 840 FMEA Roll Force 1 777 DOE Screen Size 632 Gap Width 585 Material Throughput 437 Roller Compaction Calibration 427 Sampling Size 421 MSA Roll Speed 370 Equipment Aging 286 Transfer Distance into Roller 278
19
Risk Assessment Step 4. Group Key PPs by Experiments Focus Area 4 - Dry Granulate + Blend
Raw Materials Unit Op1 Unit Op2 Define Process Flowchart … KQA1 KQA2 KQA3 KQA4 KQA5 Define Focus Areas … KPP1 KPP2 KPP3 KPP4 KPP5 Identify KQAs and Associated Measurement … Experiment1 Experiment3 Experiment2 Identify and Prioritize KPPs Define Experiments … Prioritize Experiments Next step:
20
Risk Assessment Step 5. Create PAT Prioritization Matrix Focus Area 4 - Dry Granulate and Blend
Quality Attributes Metric/ Unit Measurement System Probability of Success (H/M/L) Criticality/ Benefit (H/M/L) Cost (H/M/L) Key Attribute (Y/N) 4 Sieve cut potency % Intent HPLC M L Y Flowability H Blend Uniformity % rsd Segregation Index J&J Tester Particle Size Distribution Size Sieve Analysis
21
Risk Assessment Step 6. Document the Process Understanding
Experimental Strategy Protocols Primary Data Scientific Reports Global Document Management System
22
Initial Risk Assessment Complete
23
The Work Process Experimental Planning Risk Assessment
24
Particle Size Distribution Content Uniformity (Focus Area 6)
Experimental Planning “Example DOE” Focus Area 4 - Dry Granulate + Blend Key Attribute Y N Rank 7 5 10 Parameter Sieve Cut Potency Blend Uniformity Particle Size Distribution Mill choking Surfac e Area Hardness (Focus Area 6) Content Uniformity (Focus Area 6) Score Exp. Strategy Operator Training Procedures 840 FMEA Roll Force 1 777 DOE Screen Size 632 Gap Width 585 Material Throughput 437 Roller Compaction Calibration 427 Sampling Size 421 MSA Roll Speed 370 Equipment Aging 286 Transfer Distance into Roller 278
25
Experimental Design for Gerteis Study
D-Optimal Design Process Parameters Quality Attributes Granulation particle size Sieve cut uniformity Blend potency & uniformity Tablet potency & uniformity Hardness at 7 kP compress. force Friability at 7 kP compression force Roll force Gap width Granulating sieve size Granulator speed
26
DOE Regression Models Model Coefficients (p - values)
Main Effects Interactions Quad. Quality Attributes (Intercept) Roll Force Gap Width Mill Screen Size Mill Speed Roll Force x Gap Width Roll Force x Mill Screen Size Mill Screen Size 2 Gran Particle Size (216) 51 (<0.0001) --- 68 (<0.0001) 38 (0.0006) Sieve Cut RSD (41.4) -6.4 (<0.0001) 1.2 (0.2650) (<0.0001) Log (Gran RSD) (-0.07) 0.10 (0.0758) 0.17 (0.0051) Log (Tablet Potency RSD) (-0.15) (0.0025) (0.0308) 0.06 (0.0180) Tablet Hard. = 7 kP (6.8) 2.0 (<0.0001) -0.6 (<0.0001) -0.5 (0.0002) Tablet Hard. = 7 kP (0.06) 0.02 (0.0320)
27
Requirements to Map Design Space
Boundary Conditions Process Parameters Gap Width 1.7 – 3.5 mm Mill Screen 0.8 – 1.5 mm Quality Attributes Sieve Cut Variability (% RSD) <35% % Bypass <15% Compression Force at 7 kP Hardness <8.5 kN Tablet Uniformity <1.0%
28
Yellow Region: Acceptable combinations of process parameters.
Rationale for Process Ranges within Design Space (0.8 mm Mill Screen Size and 50 rpm Granulator Speed) Yellow Region: Acceptable combinations of process parameters. Unacceptable space
29
Coefficient (p-value) Coefficient (p-value)
Rationale for Process Ranges within Design Space Contour Map – Bypass Weight % Bypass weight loss is highest in upper left quadrant of Roll Force vs Gap Width 3.8 Statistics and Model 3.2 Response (intercept) RF Coefficient (p-value) GW Coefficient (p-value) RF*GW Ln [Bypass Wt%] (0.70) (0.0045) 0.37 (0.0479) (0.0046) 2.6 Gap Width (mm) 2.0 1.4 4 6 8 10 12 Roll Force Unacceptable space
30
Conclusions from DOE (D-Optimal)
Increasing roll force improved (lowered RSD) granulation and tablet uniformity. Increasing roll force also reduced % bypass However, increasing roll force increased the tablet compressional force required (Safety Margin 8.5 kN) Acceptable process range for roll force is 5-9 kN (see Design Space)
31
The Work Process Prioritization Risk Assessment Experimental Planning
32
Full Factorial w/center
Experimental Strategy & Prioritization Example Fractional Factorial (Focus Areas1&2) Central Composite Focus Areas 1&2) 1 Full Factorial w/center Add axial points to Full Factorial 2 Gage R&R (Focus Area 3) 3 FMEA (Focus Areas 2&3) 4 Etc…
33
The Work Process Experimentation Risk Assessment Prioritization
Experimental Planning
34
Building Models: KQA = f (KPP1, KPP2, …KPPi) Conclusions:
Operating target and ranges were identified for each of the following key parameters, key attributes: Roll force (KPP1) Impacts particle size, blend uniformity, tablet uniformity (KQA1, KQA2, KQA3) Gap width (KPP2) Impacts tablet uniformity (KQA3) Screen size (KPP3) Impacts sieve cut uniformity (KQA4) Granulator speed (KPP4) Not significant for KQAs investigated
35
Control-, Design- and Knowledge space
Design Space Control Space Proven Acceptable Range Normal Operating Range
36
Design Space
37
Acknowledgements Chris Sinko Roger Nosal Jim Spavins Vince McCurdy
Tom Garcia Christina Grillo Mary Am Ende Dan O’Connell
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.