About the Consortium
The DIA Artificial Intelligence Consortium is a global, multi-stakeholder initiative uniting regulators, industry, academia, and technology innovators to tackle the practical challenges of AI in drug development. Organized into three working groups—Use Case Definition and Classification, Model Validation, and Regulatory Frameworks, Governance and Terminology Alignment—the consortium develops actionable frameworks, tools, and guidance.
In its first year, the consortium is focused on:
Defining a structured AI use case definition and classification framework
Creating practical AI/ML model validation guidance to evaluate quality, reliability, and fitness-for-purpose
Harmonizing regulatory terminology and frameworks to support cross-jurisdictional alignment
Why It Matters
This work benefits the life sciences community by establishing shared frameworks and standards, ensuring AI can be implemented safely, effectively, and responsibly.
Supporting regulatory and organizational decision-making grounded in validated evidence and structured AI classification frameworks.
Promoting harmonized global practices for AI in life sciences across regulators, regions, and disciplines to reduce friction and improve alignment.
Driving collaboration among regulators, industry, and academia to advance innovation and ultimately improve scientific rigor and patient outcomes.
Working Groups
The Consortium delivers coordinated outputs across three working groups.
Develops a structured, stage-based framework that categorizes AI use cases across the biopharma R&D–Manufacturing–Regulatory lifecycle.
Develops a practical checklist and reference framework covering performance metrics, data quality, reproducibility, and regulatory expectations to evaluate AI systems.
Harmonizes key definitions, terminology, and frameworks used by global regulators to improve clarity in regulatory submissions and cross-regional collaboration.
Key Activities and Status
From formation to publication — a structured pathway from expert insight to measurable global impact.
Establishing the consortium structure, onboarding of global members, and scoping of core workstreams. Working groups are formed around Use Cases, Model Validation, and Regulatory Terminology to define objectives and initial framework outlines.
Working groups build the core components of the AI Use Case Classification Framework, Model Validation & Valuation guidance, and harmonized regulatory terminology. Cross-group discussions ensure alignment across lifecycle stages, terminology, and evaluation considerations.
Working groups integrate concepts, refine frameworks, and harmonize terminology to support coherent cross-consortium outputs. Activities include peer review, stakeholder input sessions, and preparation for public dissemination.
Consortium outputs will be shared at the DIA Global Annual Meeting 2026, alongside publications and presentations through DIA channels to support global adoption and stakeholder engagement.
Participating Organizations
Representatives from regulators, industry, academia, and technology sectors working collaboratively toward shared frameworks for trustworthy AI in medicine.
Steering Committee & Project Leads
Governance emphasizes transparency, inclusivity, and the cross-sector collaboration required to responsibly advance AI innovation in regulated environments.
Deliverables
Outputs will serve as foundational resources for organizations implementing AI in clinical, regulatory, and operational contexts.
AI use case classification resources that organize and clearly describe how AI is applied across research, development, manufacturing, and regulatory domains
Model validation and evaluation guidance to support consistent approaches for assessing reliability, appropriateness, and fit-for-purpose
Terminology and framework alignment tools that harmonize key concepts across regions, disciplines, and regulatory authorities
Cross-stakeholder publications and summaries that synthesize insights and recommendations
Benefits of Membership
Participation is open to partner organizations dedicated to advancing trustworthy AI in the life sciences.
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