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Generative AI in healthcare education: How AI literacy gaps could compromise learning and patient safety
22
Zitationen
6
Autoren
2025
Jahr
Abstract
AIM: To examine the challenges and opportunities presented by generative artificial intelligence in healthcare education and explore how it can be used ethically to enhance rather than compromise future healthcare workforce competence. BACKGROUND: Generative artificial intelligence is fundamentally changing healthcare education, yet many universities and healthcare educators have failed to keep pace with its rapid development. DESIGN: A discussion paper. METHODS: Discussion and analysis of the challenges and opportunities presented by students' increasing use of generative artificial intelligence in healthcare education, with particular focus on assessment approaches, critical thinking development and artificial intelligence literacy. RESULTS: Students' widespread use of generative artificial intelligence threatens assessment integrity and may inhibit critical thinking, problem-solving skills and knowledge acquisition. Without adequate artificial intelligence literacy there is a risk of eroding future healthcare workforce competence and compromising patient safety and professional integrity. CONCLUSION: While generative artificial intelligence presents significant challenges to healthcare education, it offers great promise if used carefully with awareness of its limitations. The development of artificial intelligence literacy is crucial for maintaining professional standards and ensuring patient safety and mitigating its potentially negative impact on the formation of critical thinking skills.
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