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美国整骨医学院医学教育中的生成式人工智能——政策与培训:描述性横断面调查

Generative Artificial Intelligence in Medical Education-Policies and Training at US Osteopathic Medical Schools: Descriptive Cross-Sectional Survey.

作者信息

Ichikawa Tsunagu, Olsen Elizabeth, Vinod Arathi, Glenn Noah, Hanna Karim, Lund Gregg C, Pierce-Talsma Stacey

机构信息

College of Osteopathic Medicine, University of New England, 11 Hills Beach Road, Biddeford, ME, 04005, United States, 1 2076022880.

College of Osteopathic Medicine, Rocky Vista University, Parker, CO, United States.

出版信息

JMIR Med Educ. 2025 Feb 11;11:e58766. doi: 10.2196/58766.

Abstract

BACKGROUND

Interest has recently increased in generative artificial intelligence (GenAI), a subset of artificial intelligence that can create new content. Although the publicly available GenAI tools are not specifically trained in the medical domain, they have demonstrated proficiency in a wide range of medical assessments. The future integration of GenAI in medicine remains unknown. However, the rapid availability of GenAI with a chat interface and the potential risks and benefits are the focus of great interest. As with any significant medical advancement or change, medical schools must adapt their curricula to equip students with the skills necessary to become successful physicians. Furthermore, medical schools must ensure that faculty members have the skills to harness these new opportunities to increase their effectiveness as educators. How medical schools currently fulfill their responsibilities is unclear. Colleges of Osteopathic Medicine (COMs) in the United States currently train a significant proportion of the total number of medical students. These COMs are in academic settings ranging from large public research universities to small private institutions. Therefore, studying COMs will offer a representative sample of the current GenAI integration in medical education.

OBJECTIVE

This study aims to describe the policies and training regarding the specific aspect of GenAI in US COMs, targeting students, faculty, and administrators.

METHODS

Web-based surveys were sent to deans and Student Government Association (SGA) presidents of the main campuses of fully accredited US COMs. The dean survey included questions regarding current and planned policies and training related to GenAI for students, faculty, and administrators. The SGA president survey included only those questions related to current student policies and training.

RESULTS

Responses were received from 81% (26/32) of COMs surveyed. This included 47% (15/32) of the deans and 50% (16/32) of the SGA presidents (with 5 COMs represented by both the deans and the SGA presidents). Most COMs did not have a policy on the student use of GenAI, as reported by the dean (14/15, 93%) and the SGA president (14/16, 88%). Of the COMs with no policy, 79% (11/14) had no formal plans for policy development. Only 1 COM had training for students, which focused entirely on the ethics of using GenAI. Most COMs had no formal plans to provide mandatory (11/14, 79%) or elective (11/15, 73%) training. No COM had GenAI policies for faculty or administrators. Eighty percent had no formal plans for policy development. Furthermore, 33.3% (5/15) of COMs had faculty or administrator GenAI training. Except for examination question development, there was no training to increase faculty or administrator capabilities and efficiency or to decrease their workload.

CONCLUSIONS

The survey revealed that most COMs lack GenAI policies and training for students, faculty, and administrators. The few institutions with policies or training were extremely limited in scope. Most institutions without current training or policies had no formal plans for development. The lack of current policies and training initiatives suggests inadequate preparedness for integrating GenAI into the medical school environment, therefore, relegating the responsibility for ethical guidance and training to the individual COM member.

摘要

背景

近年来,生成式人工智能(GenAI)受到越来越多的关注,它是人工智能的一个子集,能够创建新内容。尽管公开可用的GenAI工具并非专门针对医学领域进行训练,但它们在广泛的医学评估中已展现出一定的能力。GenAI在医学领域的未来整合情况尚不明朗。然而,具有聊天界面的GenAI的迅速普及以及其潜在的风险和益处成为了人们极大关注的焦点。与任何重大的医学进展或变革一样,医学院必须调整其课程,以使学生具备成为成功医生所需的技能。此外,医学院必须确保教师具备利用这些新机会提高教育效果的技能。目前医学院如何履行其职责尚不清楚。美国整骨医学院(COMs)目前培养了相当比例的医学生。这些整骨医学院所处的学术环境各不相同,从大型公立研究型大学到小型私立机构都有。因此,研究整骨医学院将为当前GenAI在医学教育中的整合情况提供一个具有代表性的样本。

目的

本研究旨在描述美国整骨医学院针对学生、教师和管理人员在GenAI特定方面的政策和培训情况。

方法

通过网络调查向美国完全认证的整骨医学院主校区的院长和学生政府协会(SGA)主席发送问卷。院长调查问卷包括有关当前和计划中的与GenAI相关的学生、教师和管理人员政策及培训的问题。SGA主席调查问卷仅包括与当前学生政策和培训相关的问题。

结果

在接受调查的整骨医学院中,81%(26/32)回复了问卷。其中包括47%(15/32)的院长和50%(16/32)的SGA主席(有5所整骨医学院同时有院长和SGA主席回复)。如院长(14/15,93%)和SGA主席(14/16,88%)所报告的,大多数整骨医学院没有关于学生使用GenAI的政策。在没有政策的整骨医学院中,79%(11/14)没有制定政策的正式计划。只有1所整骨医学院为学生提供了培训,且完全集中在使用GenAI的伦理方面。大多数整骨医学院没有提供强制性(11/14,79%)或选修性(11/15,73%)培训的正式计划。没有整骨医学院针对教师或管理人员制定GenAI政策。80%没有制定政策的正式计划。此外,33.3%(5/15)的整骨医学院为教师或管理人员提供了GenAI培训。除了考试题目编制外,没有培训用于提高教师或管理人员的能力和效率或减轻他们的工作量。

结论

调查显示,大多数整骨医学院缺乏针对学生、教师和管理人员的GenAI政策和培训。少数有政策或培训的机构在范围上极为有限。大多数目前没有培训或政策的机构没有制定发展的正式计划。当前政策和培训举措的缺乏表明在将GenAI整合到医学院环境方面准备不足,因此,将道德指导和培训的责任留给了各个整骨医学院成员。

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