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Artificial intelligence in medical education: Potential and pitfalls
0
Zitationen
1
Autoren
2025
Jahr
Abstract
AI enhances medical education through personalised learning, simulations and efficient assessments, improving both content delivery and student outcomes. However, ethical concerns, data privacy and over-reliance on technology pose challenges. By addressing these issues through robust governance, human oversight and balanced integration, AI can complement traditional methods, fostering a more innovative and inclusive learning environment for future healthcare professionals.
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