生成式人工智能在住院医师理论及病例分析考核中的应用与挑战

The Applications and Challenges of Generative Artificial Intelligence in Theoretical and Case Analysis Assessment for Resident Physician Education

  • 摘要: 生成式人工智能(generative artificial intelligence,GAI)在医学领域的应用是目前研究的热点,医学教育是其重要方向之一。在个性化教学、考核题目创建、题库更新、智能评分等方面,GAI有助于提升住院医师培训效果。然而,目前GAI在生成内容的准确性、一致性等方面还存在一定局限性。为克服上述局限性,GAI本身需不断升级,同时还需制订GAI使用指南、加强数据质量控制、建立生成内容的人工审核制度等。住院医师应主动学习GAI的使用方法,强化理论知识的实践应用能力。未来,GAI有望成为提高住院医师培养效率和质量的有益工具。

     

    Abstract: Generative artificial intelligence (GAI) represents a prominent research focus in medicine, with medical education being a key application area. GAI demonstrates potential to enhance residency training efficacy through personalized instruction, automated assessment item generation, question bank updating, and intelligent scoring systems. However, current limitations exist regarding output accuracy and content consistency. To address these constraints, strategic measures are required: continuous GAI model refinement, development of standardized usage guidelines, enhanced data quality control, and implementation of human verification protocols for generated content. Concurrently, residents should proactively acquire GAI utilization skills to strengthen the practical application of theoretical knowledge. With these advancements, GAI is anticipated to evolve into a valuable asset for improving the efficiency and quality of residency training programs.

     

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