Grounding Clinical AI Competency in Human Cognition Through the Clinical World Model and Skill-Mix Framework
Seyed Amir Ahmad Safavi-Naini, Elahe Meftah, Josh Mohess, Pooya Mohammadi Kazaj, Georgios Siontis + 9 more
TLDR
Introduces the Clinical World Model and Skill-Mix Framework to ground clinical AI competency in human cognition, formalizing care and AI's role.
Key contributions
- Introduces Clinical World Model, formalizing care as a tripartite interaction: Patient, Provider, Ecosystem.
- Develops parallel decision architectures for providers, patients, and AI, grounded in clinical cognition.
- Proposes Clinical AI Skill-Mix with 8 dimensions to operationalize AI competency in healthcare.
- Reveals the irreducibility of the competency space, demanding specific validation for each coordinate.
Why it matters
This framework provides a common grammar for specifying, evaluating, and bounding clinical AI across stakeholders. It reframes the field's central question from general efficacy to demonstrating reliability within specific competency coordinates, crucial for safe and effective healthcare AI integration.
Original Abstract
The competency of any intelligent agent is bounded by its formal account of the world in which it operates. Clinical AI lacks such an account. Existing frameworks address evaluation, regulation, or system design in isolation, without a shared model of the clinical world to connect them. We introduce the Clinical World Model, a framework that formalizes care as a tripartite interaction among Patient, Provider, and Ecosystem. To formalize how any agent, whether human or artificial, transforms information into clinical action, we develop parallel decision-making architectures for providers, patients, and AI agents, grounded in validated principles of clinical cognition. The Clinical AI Skill-Mix operationalizes competency through eight dimensions. Five define the clinical competency space (condition, phase, care setting, provider role, and task) and three specify how AI engages human reasoning (assigned authority, agent facing, and anchoring layer). The combinatorial product of these dimensions yields a space of billions of distinct competency coordinates. A central structural implication is that validation within one coordinate provides minimal evidence for performance in another, rendering the competency space irreducible. The framework supplies a common grammar through which clinical AI can be specified, evaluated, and bounded across stakeholders. By making this structure explicit, the Clinical World Model reframes the field's central question from whether AI works to in which competency coordinates reliability has been demonstrated, and for whom.
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