Grounded in reality: artificial intelligence in medical education.

IF 2.5 Q2 HEALTH CARE SCIENCES & SERVICES
Jacob Krive, Miriam Isola, Linda Chang, Tushar Patel, Max Anderson, Radhika Sreedhar
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引用次数: 6

Abstract

Background: In a recent survey, medical students expressed eagerness to acquire competencies in the use of artificial intelligence (AI) in medicine. It is time that undergraduate medical education takes the lead in helping students develop these competencies. We propose a solution that integrates competency-driven AI instruction in medical school curriculum.

Methods: We applied constructivist and backwards design principles to design online learning assignments simulating the real-world work done in the healthcare industry. Our innovative approach assumed no technical background for students, yet addressed the need for training clinicians to be ready to practice in the new digital patient care environment. This modular 4-week AI course was implemented in 2019, integrating AI with evidence-based medicine, pathology, pharmacology, tele-monitoring, quality improvement, value-based care, and patient safety.

Results: This educational innovation was tested in 2 cohorts of fourth year medical students who demonstrated an improvement in knowledge with an average quiz score of 97% and in skills with an average application assignment score of 89%. Weekly reflections revealed how students learned to transition from theory to practice of AI and how these concepts might apply to their upcoming residency training programs and future medical practice.

Conclusions: We present an innovative product that achieves the objective of competency-based education of students regarding the role of AI in medicine. This course can be integrated in the preclinical years with a focus on foundational knowledge, vocabulary, and concepts, and in clinical years with a focus on application of core knowledge to real-world scenarios.

Abstract Image

Abstract Image

立足现实:医学教育中的人工智能。
背景:在最近的一项调查中,医学生表示渴望获得在医学中使用人工智能(AI)的能力。现在是时候让本科医学教育带头帮助学生培养这些能力了。我们提出了一个解决方案,将能力驱动的人工智能教学整合到医学院的课程中。方法:我们应用建构主义和逆向设计原则来设计在线学习作业,模拟医疗保健行业的实际工作。我们的创新方法假设学生没有技术背景,但解决了培训临床医生准备在新的数字患者护理环境中实践的需要。这个为期4周的模块化人工智能课程于2019年实施,将人工智能与循证医学、病理学、药理学、远程监控、质量改进、基于价值的护理和患者安全相结合。结果:这一教育创新在两组四年级医学生中进行了测试,这些学生在知识方面的平均测验分数为97%,在技能方面的平均应用作业分数为89%。每周的反思揭示了学生如何学会将人工智能从理论过渡到实践,以及这些概念如何应用于他们即将到来的住院医师培训计划和未来的医疗实践。结论:我们提出了一个创新的产品,实现了学生关于人工智能在医学中的作用的能力为基础的教育目标。本课程可以整合到临床前几年,重点是基础知识、词汇和概念,以及临床年,重点是核心知识在实际情况中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
JAMIA Open
JAMIA Open Medicine-Health Informatics
CiteScore
4.10
自引率
4.80%
发文量
102
审稿时长
16 weeks
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