AI-PACE Framework is Transforming Medical Education with Generative AI

AI-PACE Framework is Transforming Medical Education with Generative AI
AI-PACE Framework is Transforming Medical Education with Generative AI

In the era of generative AI tools like ChatGPT, which handle 230 million weekly health queries, medical education faces a critical gap. The AI-PACE Framework is a groundbreaking model from researchers Scott P. McGrath, Katherine K. Kim, Karnjit Johl, Haibo Wang, and Nick Anderson. It provides a structured roadmap for embedding generative AI literacy across all training stages. 


This framework ensures physicians master AI from basics to leadership, revolutionizing AI in medical education.

What is the AI-PACE Framework? 

The AI-PACE Framework provides a structured approach to integrating artificial intelligence, including generative AI, into medical education across the full training continuum. 

AI-PACE expands Bloom’s Taxonomy into four pillars: Psychomotor, Affective, Cognitive, and Embedded (PACE), tailored for generative AI applications in healthcare.

 Key Features Explained: 

  • Cognitive Domain: Builds foundational knowledge in generative AI algorithms, large language models (LLMs), and probabilistic reasoning—essential for interpreting AI outputs in diagnostics and treatment planning.​
  • Psychomotor Domain: Hands-on skills like validating generative AI-generated reports during clinical workflows, using “human-in-the-loop” verification.​
  • Affective Domain: Cultivates trust calibration, ethical decision-making, and bias awareness through generative AI failure case studies.​
  • Embedded Domain: Delivers spiral learning from undergraduate medical education (UME) to continuing medical education (CME), avoiding one-off workshops.​

This generative AI-optimized medical education framework aligns with Harden’s integration ladder, making AI a core competency for every physician, not just specialists.​

AI-PACE Implementation: Stage-by-Stage Generative AI Training Guide

The framework maps generative AI skills to training milestones, using practical tools such as OSCEs, simulations, and AI ethics projects.

Training Stage:

  • UME (Preclinical)- AI Basics & Ethics. LLM prompt engineering in evidence-based medicine modules; bias detection exercises.​
  • GME (Residency)- Clinical Integration. Real-time generative AI validation in rotations; “AI-Fail” case debriefs.​
  • CME (Ongoing)- Leadership & Oversight. Selecting/auditing generative AI tools; developing institutional policy.​

Pro Tip: Start with generative AI pilots in med school curricula to boost student AI readiness by 40%, per early adopters.​

Why AI-PACE Matters for Generative AI in Healthcare Education

As technology changes medical education, it will reshape healthcare from drafting patient notes to predicting outcomes; traditional curricula lag behind. AI-PACE addresses this by prioritizing:

  • Generalist Skills: Equips all doctors to evaluate generative AI, beyond radiology or pathology.​
  • Ethical Guardrails: Tackles hallucinations and inequities in LLMs.​
  • Longitudinal Learning: Ensures lifelong AI proficiency amid rapid advancements.​

Pioneering med schools are already adopting similar models, signaling a shift to AI-augmented medical training.​

Future of Generative AI Medical Education with AI-PACE

Researchers urge the development of faculty programs and rigorous pilots to scale AI-PACE globally. By fostering patient-centered, HIPAA-compliant, and ethical use of AI, this framework positions medical education for the generative AI revolution in healthcare.

Ready to implement? Download the full AI-PACE paper:  arxiv.org/abs/2602.10527

Share your thoughts on generative AI in med ed below!​

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By Hanna Mae Rico

I have over 5 years of experience as a Healthcare and Lifestyle Content Writer. With a keen focus on SEO, and healthcare & patient-centric communication, I create content that not only informs but also resonates with patients. My goal is to help healthcare teams improve collaboration and improve patient outcomes.

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