CYAIJul 10, 2024

Promoting AI Competencies for Medical Students: A Scoping Review on Frameworks, Programs, and Tools

arXiv:2407.18939v112 citationsh-index: 58
Originality Synthesis-oriented
AI Analysis

This work addresses the need for AI competencies in medical education to ensure safe and ethical AI-enabled patient care, though it is incremental as it builds on existing review and framework efforts.

The authors conducted a scoping review of 1,699 articles to assess the integration of AI into medical education, identifying 18 studies with frameworks and 11 with real-world instruction, and proposed a four-dimensional AI literacy framework tailored to medical students' education stages.

As more clinical workflows continue to be augmented by artificial intelligence (AI), AI literacy among physicians will become a critical requirement for ensuring safe and ethical AI-enabled patient care. Despite the evolving importance of AI in healthcare, the extent to which it has been adopted into traditional and often-overloaded medical curricula is currently unknown. In a scoping review of 1,699 articles published between January 2016 and June 2024, we identified 18 studies which propose guiding frameworks, and 11 studies documenting real-world instruction, centered around the integration of AI into medical education. We found that comprehensive guidelines will require greater clinical relevance and personalization to suit medical student interests and career trajectories. Current efforts highlight discrepancies in the teaching guidelines, emphasizing AI evaluation and ethics over technical topics such as data science and coding. Additionally, we identified several challenges associated with integrating AI training into the medical education program, including a lack of guidelines to define medical students AI literacy, a perceived lack of proven clinical value, and a scarcity of qualified instructors. With this knowledge, we propose an AI literacy framework to define competencies for medical students. To prioritize relevant and personalized AI education, we categorize literacy into four dimensions: Foundational, Practical, Experimental, and Ethical, with tailored learning objectives to the pre-clinical, clinical, and clinical research stages of medical education. This review provides a road map for developing practical and relevant education strategies for building an AI-competent healthcare workforce.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes