Leveraging Datathons to Teach AI in Undergraduate Medical Education: Case Study.

IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES
Michael Steven Yao, Lawrence Huang, Emily Leventhal, Clara Sun, Steve J Stephen, Lathan Liou
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引用次数: 0

Abstract

Background: As artificial intelligence and machine learning become increasingly influential in clinical practice, it is critical for future physicians to understand how such novel technologies will impact the delivery of patient care.

Objective: We describe 2 trainee-led, multi-institutional datathons as an effective means of teaching key data science and machine learning skills to medical trainees. We offer key insights on the practical implementation of such datathons and analyze experiences gained and lessons learned for future datathon initiatives.

Methods: We detail 2 recent datathons organized by MDplus, a national trainee-led nonprofit organization. To assess the efficacy of the datathon as an educational experience, an opt-in postdatathon survey was sent to all registered participants. Survey responses were deidentified and anonymized before downstream analysis to assess the quality of datathon experiences and areas for future work.

Results: Our digital datathons between 2023 and 2024 were attended by approximately 200 medical trainees across the United States. A diverse array of medical specialty interests was represented among participants, with 43% (21/49) of survey participants expressing an interest in internal medicine, 35% (17/49) in surgery, and 22% (11/49) in radiology. Participant skills in leveraging Python for analyzing medical datasets improved after the datathon, and survey respondents enjoyed participating in the datathon.

Conclusions: The datathon proved to be an effective and cost-effective means of providing medical trainees the opportunity to collaborate on data-driven projects in health care. Participants agreed that datathons improved their ability to generate clinically meaningful insights from data. Our results suggest that datathons can serve as valuable and effective educational experiences for medical trainees to become better skilled in leveraging data science and artificial intelligence for patient care.

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利用数据马拉松在本科医学教育中教授人工智能:案例研究。
背景:随着人工智能和机器学习在临床实践中的影响力越来越大,对于未来的医生来说,了解这些新技术将如何影响患者护理的提供至关重要。目的:我们描述了2个由实习生领导的多机构数据马拉松,作为向医学实习生教授关键数据科学和机器学习技能的有效手段。我们对此类数据马拉松的实际实施提供了关键见解,并分析了为未来数据马拉松计划所获得的经验和教训。方法:我们详细介绍了MDplus(一个由国家培训生领导的非营利组织)最近组织的两次数据马拉松。为了评估数据马拉松作为一种教育经验的有效性,数据马拉松后的选择调查被发送给所有注册的参与者。在下游分析之前,对调查结果进行去识别和匿名化处理,以评估数据马拉松体验的质量和未来工作的领域。结果:我们在2023年至2024年期间的数字数据马拉松有大约200名来自美国各地的医学实习生参加。参与者对医学专业有不同的兴趣,43%(21/49)的调查参与者对内科感兴趣,35%(17/49)的调查参与者对外科感兴趣,22%(11/49)的调查参与者对放射学感兴趣。在数据马拉松之后,参与者利用Python分析医疗数据集的技能得到了提高,调查受访者喜欢参与数据马拉松。结论:数据马拉松被证明是一种有效和具有成本效益的手段,为医疗培训人员提供了在数据驱动的卫生保健项目上进行协作的机会。参与者一致认为,数据马拉松提高了他们从数据中获得有临床意义的见解的能力。我们的研究结果表明,数据马拉松可以为医疗学员提供宝贵而有效的教育经验,使他们能够更好地利用数据科学和人工智能来护理患者。
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来源期刊
JMIR Medical Education
JMIR Medical Education Social Sciences-Education
CiteScore
6.90
自引率
5.60%
发文量
54
审稿时长
8 weeks
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