AI-RADS:面向住院医师的人工智能课程。
AI-RADS: An Artificial Intelligence Curriculum for Residents.
机构信息
Geisel School of Medicine at Dartmouth, 1 Rope Ferry Rd, Hanover, NH 03775.
Dartmouth College, Williamson Translational Research, Lebanon, New Hampshire.
出版信息
Acad Radiol. 2021 Dec;28(12):1810-1816. doi: 10.1016/j.acra.2020.09.017. Epub 2020 Oct 16.
RATIONALE AND OBJECTIVES
Artificial intelligence (AI) has rapidly emerged as a field poised to affect nearly every aspect of medicine, especially radiology. A PubMed search for the terms "artificial intelligence radiology" demonstrates an exponential increase in publications on this topic in recent years. Despite these impending changes, medical education designed for future radiologists have only recently begun. We present our institution's efforts to address this problem as a model for a successful introductory curriculum into artificial intelligence in radiology titled AI-RADS.
MATERIALS AND METHODS
The course was based on a sequence of foundational algorithms in AI; these algorithms were presented as logical extensions of each other and were introduced as familiar examples (spam filters, movie recommendations, etc.). Since most trainees enter residency without computational backgrounds, secondary lessons, such as pixel mathematics, were integrated in this progression. Didactic sessions were reinforced with a concurrent journal club highlighting the algorithm discussed in the previous lecture. To circumvent often intimidating technical descriptions, study guides for these papers were produced. Questionnaires were administered before and after each lecture to assess confidence in the material. Surveys were also submitted at each journal club assessing learner preparedness and appropriateness of the article.
RESULTS
The course received a 9.8/10 rating from residents for overall satisfaction. With the exception of the final lecture, there were significant increases in learner confidence in reading journal articles on AI after each lecture. Residents demonstrated significant increases in perceived understanding of foundational concepts in artificial intelligence across all mastery questions for every lecture.
CONCLUSION
The success of our institution's pilot AI-RADS course demonstrates a workable model of including AI in resident education.
背景与目的
人工智能(AI)已迅速崛起,有望影响医学领域的各个方面,尤其是放射科。通过在 PubMed 上搜索“人工智能放射学”这两个术语,我们可以发现近年来该主题的出版物呈指数级增长。尽管即将发生这些变化,但针对未来放射科医生的医学教育才刚刚开始。我们介绍了本机构在这方面的努力,将其作为成功的放射科人工智能入门课程 AI-RADS 的模型。
材料与方法
该课程基于 AI 的一系列基础算法;这些算法被呈现为彼此的逻辑延伸,并被引入为熟悉的示例(垃圾邮件过滤器、电影推荐等)。由于大多数受训者在进入住院医师实习期时没有计算背景,因此在这个过程中整合了次要课程,如像素数学。讲座通过同期的期刊俱乐部进行强化,突出前一讲中讨论的算法。为了避免通常令人生畏的技术描述,为这些论文制作了学习指南。在每次讲座前后都进行问卷调查,以评估对材料的信心。在每次期刊俱乐部中也提交了调查,评估学习者的准备情况和文章的适当性。
结果
该课程的整体满意度获得了住院医师 9.8/10 的评分。除了最后一讲,在每次讲座后,学员阅读关于 AI 的期刊文章的信心都有显著提高。住院医师在所有讲座的基础概念理解测试中都表现出对人工智能理解的显著提高。
结论
我们机构的 AI-RADS 课程试点的成功证明了将 AI 纳入住院医师教育的可行模式。