Regulatory Perspectives for AI/ML Implementation in Pharmaceutical GMP Environments
Abstract
1. Introduction
2. Regulatory Frameworks and Guidance
2.1. The United States Food and Drug Administration (FDA)
2.2. European Medicines Agency (EMA)
2.3. The Medicines and Healthcare Products Regulatory Agency (MHRA)
2.4. International Council for Harmonisation (ICH)
2.5. The Pharmaceutical Inspection Co-Operation Scheme (PIC/S)
3. Key Regulatory Challenges
3.1. Validation and Verification
3.2. Data Integrity
3.3. Explainability and Transparency
3.4. Change Management and Lifecycle Control
3.5. Ethical and Legal Considerations
4. Implementation Strategies for Compliance
4.1. Risk-Based Approach
4.2. Documentation and Traceability
4.3. Human Oversight
4.4. Model Governance Frameworks
5. Verified Case Studies and Pilot Programs
5.1. Janssen’s Continuous Manufacturing with AI Support
5.2. GSK’s Digital Twin Implementation
5.3. Pfizer’s Vox AI Platform
5.4. MilliporeSigma’s AIDDISON AI Platform
5.5. Novartis Digital Lighthouse Projects
6. Future Directions and Recommendations
6.1. Regulatory Harmonization
6.2. Development of AI-Specific Guidance
6.3. Building Regulatory Capacity
6.4. Promoting Transparency and Trust
6.5. FDA Regulatory Dossier Evaluation Program
7. Conclusions
Funding
Conflicts of Interest
References
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Year | Initiative/Document | Key Focus | Impact |
---|---|---|---|
2014 | Emerging Technology Program (ETP) Launch | Advanced manufacturing technologies | Assessment framework for novel technologies |
2019 | AI/ML-Based SaMD Framework | Total product lifecycle approach | Foundation for manufacturing applications |
2021 | FRAME Program Expansion | AI in manufacturing evaluation | Structured assessment of AI/ML in manufacturing |
2023 | AI Manufacturing Discussion Paper | Manufacturing-specific AI guidance | Public feedback on AI implementation |
2024 | CDER AI Council Establishment | Oversight and coordination | Consolidated AI activities across CDER |
2025 | AI-Assisted Review Pilot Completion | Scientific review efficiency | Agency-wide AI implementation by June 2025 |
Year | Initiative/Document | Key Provisions | Regulatory Impact |
---|---|---|---|
2021 | AI Reflection Paper | GMP compliance requirements | Manufacturing standards alignment |
2023 | AI Workplan to 2028 | Coordinated strategy for AI | Harmonized European approach |
2024 | EU AI Act Implementation | High-risk AI classification | Robust risk assessment requirements |
2024 | Final AI Reflection Paper | Updated guidance on AI lifecycle | Enhanced regulatory clarity |
Challenge Area | Primary Issues | Current Solutions | Regulatory Response |
---|---|---|---|
Validation & Verification | Model drift, continuous learning | Dynamic validation methodologies | Enhanced guidance development |
Data Integrity | ALCOA+ compliance, data lineage | Digital thread concepts | Enhanced inspection focus |
Explainability | Black-box algorithms, transparency | XAI techniques (SHAP, LIME) | Industry best practices |
Change Management | Model evolution, version control | Progressive validation approaches | Tiered validation frameworks |
Ethical & Legal | Bias detection, algorithmic accountability | Oversight committees | Transparency requirements |
Requirements | |||
---|---|---|---|
Complexity Level | Low Impact on Product Quality | Medium Impact on Product Quality | High Impact on Product Quality |
High Complexity | MEDIUM | HIGH | CRITICAL |
Medium Complexity | LOW | MEDIUM | HIGH |
Low Complexity | MINIMAL | LOW | MEDIUM |
Risk Category | Requirements | Example Applications | |
MINIMAL | Documentation only, basic oversight | Scheduling optimization, inventory management | |
LOW | Basic validation is required, and routine monitoring | Predictive maintenance alerts, energy optimization | |
MEDIUM | Enhanced validation + continuous monitoring | Process parameter monitoring, trend analysis | |
HIGH | Comprehensive validation + regulatory oversight | Real-time quality control, batch release decisions | |
CRITICAL | Full regulatory pre-approval required | Safety-critical process control, sterile operations |
Company/Program | Implementation Year | Key Technologies | Primary Applications | Regulatory Status |
---|---|---|---|---|
Janssen Pharmaceuticals [50] | 2016 | Continuous manufacturing with AI control | Prezista tablet production | FDA approved |
Pfizer Vox Platform [51] | 2023 | Generative AI, AWS cloud services | Manufacturing optimization, vaccine production | Operational |
GSK Digital Twin [52] | 2019–2020 | CFD modeling, machine learning, Siemens/Atos partnership | Adjuvant production, vaccine development | Proof-of-concept completed |
MilliporeSigma AIDDISON [53] | 2023 | Generative AI, ML, drug design | Drug discovery and synthesis integration | Commercial platform |
Novartis Digital Initiatives [54] | 2019-ongoing | Microsoft AI partnership, ML platforms | Drug discovery, manufacturing optimization | Multiple programs operational |
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Niazi, S.K. Regulatory Perspectives for AI/ML Implementation in Pharmaceutical GMP Environments. Pharmaceuticals 2025, 18, 901. https://doi.org/10.3390/ph18060901
Niazi SK. Regulatory Perspectives for AI/ML Implementation in Pharmaceutical GMP Environments. Pharmaceuticals. 2025; 18(6):901. https://doi.org/10.3390/ph18060901
Chicago/Turabian StyleNiazi, Sarfaraz K. 2025. "Regulatory Perspectives for AI/ML Implementation in Pharmaceutical GMP Environments" Pharmaceuticals 18, no. 6: 901. https://doi.org/10.3390/ph18060901
APA StyleNiazi, S. K. (2025). Regulatory Perspectives for AI/ML Implementation in Pharmaceutical GMP Environments. Pharmaceuticals, 18(6), 901. https://doi.org/10.3390/ph18060901