Boscardin Christy K, Abdulnour Raja-Elie E, Gin Brian C
Acad Med. 2025 Sep 1;100(9S Suppl 1):S15-S21. doi: 10.1097/ACM.0000000000006107. Epub 2025 Jun 2.
The rapid emergence of artificial intelligence (AI), including generative large language models, offers transformative opportunities in medical education. This proliferation has generated numerous speculative discussions about AI's promise but has been limited in delivering a comprehensive analysis to distinguish evidence-based utility from hype while identifying context-specific limitations.In this first part of a 2-part innovation report, commissioned by the Josiah Macy Jr. Foundation to inform the discussions at a conference on AI in medical education, the authors synthesize the landscape of AI in medical education, underscoring both its potential advantages and inherent challenges. To map the AI landscape, they reviewed 455 articles that targeted 5 medical education domains: (1) admissions, (2) classroom-based learning and teaching, (3) workplace-based learning and teaching, (4) assessment, feedback, and certification, and (5) program evaluation and research.In admissions, AI-driven strategies facilitated holistic applicant reviews through predictive modeling, natural language processing, and large language model-based chatbots. Preclinical learning benefited from AI-powered virtual patients and curriculum design tools that managed expanding medical knowledge and supported robust student practice. Within clinical learning, AI aided diagnostic and interpretive processes, prompting medical education curricula to demand relevant AI competency and literacy frameworks. A few studies reported that assessment and feedback processes became more efficient through automated grading and advanced analytics, which reduced faculty workload and offered timely, targeted feedback. Program evaluation and research gained additional insights using AI on careers, diversity, and performance metrics of faculty and learners, improving resource allocations and guiding evidence-based approaches.Despite these possibilities, bias in AI algorithms, concerns about transparency, inadequate ethical guidelines, and risks of over-reliance highlighted the need for cautious, informed AI implementation. By mapping AI tasks to medical education applications, the authors provide a framework for understanding and leveraging AI's potential while addressing technical, ethical, and human-factor complexities in this evolving field.
包括生成式大语言模型在内的人工智能(AI)的迅速崛起,为医学教育带来了变革性机遇。这种快速发展引发了众多关于AI前景的猜测性讨论,但在进行全面分析以区分基于证据的实用性与炒作内容、同时识别特定背景下的局限性方面却很有限。在这份由小约西亚·梅西基金会委托撰写的两部分创新报告的第一部分中,作者旨在为医学教育中的AI会议讨论提供信息,他们综合了医学教育中AI的情况,强调了其潜在优势和内在挑战。为了描绘AI的全景,他们审查了针对五个医学教育领域的455篇文章:(1)招生,(2)基于课堂的学习与教学,(3)基于工作场所的学习与教学,(4)评估、反馈与认证,以及(5)项目评估与研究。在招生方面,AI驱动的策略通过预测建模、自然语言处理和基于大语言模型的聊天机器人促进了对申请人的全面评估。临床前学习受益于由AI驱动的虚拟患者和课程设计工具,这些工具管理着不断扩展的医学知识并支持学生进行充分的实践。在临床学习中,AI辅助诊断和解释过程,促使医学教育课程要求具备相关的AI能力和素养框架。一些研究报告称,通过自动评分和高级分析,评估和反馈过程变得更加高效,这减轻了教师的工作量并提供了及时、有针对性的反馈。项目评估与研究通过使用AI对教师和学习者的职业、多样性和绩效指标有了更多见解,改善了资源分配并指导了基于证据的方法。尽管有这些可能性,但AI算法中的偏差、对透明度的担忧、道德准则不足以及过度依赖的风险凸显了谨慎、明智地实施AI的必要性。通过将AI任务映射到医学教育应用中,作者提供了一个框架,用于理解和利用AI的潜力,同时应对这一不断发展领域中的技术、道德和人为因素复杂性。