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Generative artificial intelligence in graduate medical education

Ravi Janumpally, Suparna Nanua, Andy Ngo, Kenneth Youens

2025Frontiers in Medicine48 citationsDOIOpen Access PDF

Abstract

Generative artificial intelligence (GenAI) is rapidly transforming various sectors, including healthcare and education. This paper explores the potential opportunities and risks of GenAI in graduate medical education (GME). We review the existing literature and provide commentary on how GenAI could impact GME, including five key areas of opportunity: electronic health record (EHR) workload reduction, clinical simulation, individualized education, research and analytics support, and clinical decision support. We then discuss significant risks, including inaccuracy and overreliance on AI-generated content, challenges to authenticity and academic integrity, potential biases in AI outputs, and privacy concerns. As GenAI technology matures, it will likely come to have an important role in the future of GME, but its integration should be guided by a thorough understanding of both its benefits and limitations.

Topics & Concepts

WorkloadAnalyticsGenerative grammarGraduate educationComputer scienceHealth careData scienceMedical educationPsychologyKnowledge managementArtificial intelligenceMedicinePolitical scienceLawOperating systemArtificial Intelligence in Healthcare and EducationClinical Reasoning and Diagnostic SkillsInnovations in Medical Education
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