将生成式人工智能整合到医学教育中的技术、机遇、挑战和未来方向:叙述性回顾。

IF 0.2 Q3 MEDICINE, GENERAL & INTERNAL
Junseok Kang, Jihyun Ahn
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引用次数: 0

摘要

生成式人工智能(GenAI),包括像GPT-4这样的大型语言模型和像DALL-E这样的图像生成工具,正在迅速改变医学教育的格局。这些技术为推进个性化学习、临床模拟、评估、课程开发和学术写作提供了有希望的机会。医学院已经开始采用GenAI工具来支持学生的自主学习、设计虚拟病人接触、自动化形成反馈和简化内容创建。初步证据表明,在参与、效率和可扩展性方面有所改善。然而,GenAI集成也带来了实质性的挑战。主要问题包括幻觉或不准确的内容、人工智能(AI)生成材料中的偏见和不公平、与剽窃和作者身份相关的伦理问题、学术诚信风险,以及培训中移情和人文价值观的潜在侵蚀。此外,大多数机构目前缺乏负责任地使用GenAI的正式政策、结构化培训和明确的指导方针。为了充分发挥GenAI在医学教育中的潜力,教育工作者必须采取一种平衡的方法,优先考虑准确性、公平性、透明度和人为监督。教师发展、学习者的人工智能素养、道德框架和基础设施投资对于可持续采用至关重要。随着人工智能在医学中的作用扩大,医学教育必须同步发展,以培养未来的医生,他们不仅是先进技术的熟练使用者,而且是富有同情心、善于反思的从业者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Technologies, opportunities, challenges, and future directions for integrating generative artificial intelligence into medical education: a narrative review.

Generative artificial intelligence (GenAI), including large language models such as GPT-4 and image-generation tools like DALL-E, is rapidly transforming the landscape of medical education. These technologies present promising opportunities for advancing personalized learning, clinical simulation, assessment, curriculum development, and academic writing. Medical schools have begun incorporating GenAI tools to support students' self-directed study, design virtual patient encounters, automate formative feedback, and streamline content creation. Preliminary evidence suggests improvements in engagement, efficiency, and scalability. However, GenAI integration also introduces substantial challenges. Key concerns include hallucinated or inaccurate content, bias and inequity in artificial intelligence (AI)-generated materials, ethical issues related to plagiarism and authorship, risks to academic integrity, and the potential erosion of empathy and humanistic values in training. Furthermore, most institutions currently lack formal policies, structured training, and clear guidelines for responsible GenAI use. To realize the full potential of GenAI in medical education, educators must adopt a balanced approach that prioritizes accuracy, equity, transparency, and human oversight. Faculty development, AI literacy among learners, ethical frameworks, and investment in infrastructure are essential for sustainable adoption. As the role of AI in medicine expands, medical education must evolve in parallel to prepare future physicians who are not only skilled users of advanced technologies but also compassionate, reflective practitioners.

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来源期刊
Ewha Medical Journal
Ewha Medical Journal MEDICINE, GENERAL & INTERNAL-
自引率
33.30%
发文量
28
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