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Quantum leap in medical mentorship: exploring ChatGPT’s transition from textbooks to terabytes
6
Zitationen
9
Autoren
2025
Jahr
Abstract
ChatGPT, an advanced AI language model, presents a transformative opportunity in several fields including the medical education. This article examines the integration of ChatGPT into healthcare learning environments, exploring its potential to revolutionize knowledge acquisition, personalize education, support curriculum development, and enhance clinical reasoning. The AI's ability to swiftly access and synthesize medical information across various specialties offers significant value to students and professionals alike. It provides rapid answers to queries on medical theories, treatment guidelines, and diagnostic methods, potentially accelerating the learning curve. The paper emphasizes the necessity of verifying ChatGPT's outputs against authoritative medical sources. A key advantage highlighted is the AI's capacity to tailor learning experiences by assessing individual needs, accommodating diverse learning styles, and offering personalized feedback. The article also considers ChatGPT's role in shaping curricula and assessment techniques, suggesting that educators may need to adapt their methods to incorporate AI-driven learning tools. Additionally, it explores how ChatGPT could bolster clinical problem-solving through AI-powered simulations, fostering critical thinking and diagnostic acumen among students. While recognizing ChatGPT's transformative potential in medical education, the article stresses the importance of thoughtful implementation, continuous validation, and the establishment of protocols to ensure its responsible and effective application in healthcare education settings.
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Autoren
Institutionen
- Chungbuk National University(KR)
- University of Hong Kong - Shenzhen Hospital(CN)
- First Affiliated Hospital of Jinan University(CN)
- University of Hong Kong(HK)
- University of Macau(MO)
- Krirk University(TH)
- Tianjin Medical University(CN)
- Zhuhai People's Hospital(CN)
- Shenzhen Second People's Hospital(CN)
- Shenzhen University Health Science Center(CN)
- Chinese Academy of Medical Sciences & Peking Union Medical College(CN)
- Omar Al-Mukhtar University(LY)
- Chinese PLA General Hospital(CN)
- Jinan University(CN)