Gin Brian C, LaForge Kate, Burk-Rafel Jesse, Boscardin Christy K
Acad Med. 2025 Sep 1;100(9S Suppl 1):S22-S29. doi: 10.1097/ACM.0000000000006117. Epub 2025 Jun 4.
Artificial intelligence (AI) promises to significantly impact medical education, yet its implementation raises important questions about educational effectiveness, ethical use, and equity. In the second part of a 2-part innovation report, which was commissioned by the Josiah Macy Jr. Foundation to inform discussions at a conference on AI in medical education, the authors explore the perspectives of innovators actively integrating AI into medical education, examining their perceptions regarding the impacts, opportunities, challenges, and strategies for successful AI adoption and risk mitigation.
Semistructured interviews were conducted with 25 medical education AI innovators-including learners, educators, institutional leaders, and industry representatives-from June to August 2024. Interviews explored participants' perceptions of AI's influence on medical education, challenges to integration, and strategies for mitigating challenges. Transcripts were analyzed using thematic analysis to identify themes and synthesize participants' recommendations for AI integration.
Innovators' responses were synthesized into 2 main thematic areas: (1) AI's impact on teaching, learning, and assessment, and (2) perceived threats and strategies for mitigating them. Participants identified AI's potential to enact precision education through virtual tutors and standardized patients, support active learning formats, enable centralized teaching, and facilitate cognitive offloading. AI-enhanced assessments could automate grading, predict learner trajectories, and integrate performance data from clinical interactions. Yet, innovators expressed concerns over threats to transparency and validity, potential propagation of biases, risks of over-reliance and deskilling, and institutional disparities. Proposed mitigation strategies emphasized validating AI outputs, establishing foundational competencies, fostering collaboration and open-source sharing, enhancing AI literacy, and maintaining robust ethical standards.
AI innovators in medical education envision transformative opportunities for individualized learning and precision education, balanced against critical threats. Realizing these benefits requires proactive, collaborative efforts to establish rigorous validation frameworks; uphold foundational medical competencies; and prioritize ethical, equitable AI integration.
人工智能有望对医学教育产生重大影响,但其应用引发了有关教育效果、伦理使用和公平性的重要问题。在由小约西亚·梅西基金会委托撰写的两部分创新报告的第二部分中,作者探讨了积极将人工智能整合到医学教育中的创新者的观点,审视了他们对人工智能应用的影响、机遇、挑战以及成功采用人工智能和降低风险策略的看法,该报告旨在为医学教育人工智能会议的讨论提供参考。
2024年6月至8月,对25位医学教育人工智能创新者进行了半结构化访谈,其中包括学习者、教育工作者、机构领导和行业代表。访谈探讨了参与者对人工智能对医学教育的影响、整合挑战以及应对挑战的策略的看法。使用主题分析法对访谈记录进行分析,以确定主题并综合参与者对人工智能整合的建议。
创新者的回答被归纳为两个主要主题领域:(1)人工智能对教学、学习和评估的影响,以及(2)感知到的威胁及其缓解策略。参与者认为人工智能有潜力通过虚拟导师和标准化病人实现精准教育,支持主动学习形式,实现集中教学,并促进认知卸载。人工智能增强的评估可以实现评分自动化,预测学习者的轨迹,并整合临床互动中的表现数据。然而,创新者对透明度和有效性受到的威胁、偏差的潜在传播、过度依赖和技能退化的风险以及机构差异表示担忧。提出的缓解策略强调验证人工智能输出、建立基本能力、促进合作和开源共享、提高人工智能素养以及维持严格坚守的道德标准。
医学教育中的人工智能创新者设想了个性化学习和精准教育的变革性机遇,但也面临着重大威胁。要实现这些益处,需要积极主动的合作努力,以建立严格的验证框架;坚持基本的医学能力;并将符合伦理、公平的人工智能整合作为优先事项。