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面向医学生的人工智能新型混合式学习:定性访谈研究

Novel Blended Learning on Artificial Intelligence for Medical Students: Qualitative Interview Study.

作者信息

Oftring Zoe S, Deutsch Kim, Tolks Daniel, Jungmann Florian, Kuhn Sebastian

机构信息

Institute for Digital Medicine, Philipps University Marburg and University Clinic Giessen & Marburg, Baldingerstrasse 1, Marburg, 35042, Germany, 49 (0)6421 ext 58.

Department of Paediatrics, University Clinic Giessen & Marburg, Marburg, Germany.

出版信息

JMIR Med Educ. 2025 May 26;11:e65220. doi: 10.2196/65220.

Abstract

BACKGROUND

Artificial intelligence (AI) systems are becoming increasingly relevant in everyday clinical practice, with Food and Drug Administration-approved AI solutions now available in many specialties. This development has far-reaching implications for doctors and the future medical profession, highlighting the need for both practicing physicians and medical students to acquire the knowledge, skills, and attitudes necessary to effectively use and evaluate these technologies. Currently, however, there is limited experience with AI-focused curricular training and continuing education.

OBJECTIVE

This paper first introduces a novel blended learning curriculum including one module on AI for medical students in Germany. Second, this paper presents findings from a qualitative postcourse evaluation of students' knowledge and attitudes toward AI and their overall perception of the course.

METHODS

Clinical-year medical students can attend a 5-day elective course called "Medicine in the Digital Age," which includes one dedicated AI module alongside 4 others on digital doctor-patient communication; digital health applications and smart devices; telemedicine; and virtual/augmented reality and robotics. After course completion, participants were interviewed in semistructured small group interviews. The interview guide was developed deductively from existing evidence and research questions compiled by our group. A subset of interview questions focused on students' knowledge, skills, and attitudes regarding medical AI, and their overall course assessment. Responses were analyzed using Mayring's qualitative content analysis. This paper reports on the subset of students' statements about their perception and attitudes toward AI and the elective's general evaluation.

RESULTS

We conducted a total of 18 group interviews, in which all 35 (100%) participants (female=11, male=24) from 3 consecutive course runs participated. This produced a total of 214 statements on AI, which were assigned to the 3 main categories "Areas of Application," "Future Work," and "Critical Reflection." The findings indicate that students have a nuanced and differentiated understanding of AI. Additionally, 610 statements concerned the elective's overall assessment, demonstrating great learning benefits and high levels of acceptance of the teaching concept. All 35 students would recommend the elective to peers.

CONCLUSIONS

The evaluation demonstrated that the AI module effectively generates competences regarding AI technology, fosters a critical perspective, and prepares medical students to engage with the technology in a differentiated manner. The curriculum is feasible, beneficial, and highly accepted among students, suggesting it could serve as a teaching model for other medical institutions. Given the growing number and impact of medical AI applications, there is a pressing need for more AI-focused curricula and further research on their educational impact.

摘要

背景

人工智能(AI)系统在日常临床实践中变得越来越重要,现在许多专业都有美国食品药品监督管理局批准的人工智能解决方案。这一发展对医生和未来的医学专业有着深远的影响,凸显了执业医师和医学生都需要掌握有效使用和评估这些技术所需的知识、技能和态度。然而,目前以人工智能为重点的课程培训和继续教育经验有限。

目的

本文首先介绍一种新颖的混合学习课程,其中包括为德国医学生开设的一个人工智能模块。其次,本文展示了对学生关于人工智能的知识和态度以及他们对该课程的总体看法进行的定性课程后评估的结果。

方法

临床年级的医学生可以参加一门为期5天的选修课程“数字时代的医学”,其中包括一个专门的人工智能模块以及另外4个关于数字医患沟通、数字健康应用和智能设备、远程医疗以及虚拟/增强现实和机器人技术的模块。课程结束后,参与者参加了半结构化小组访谈。访谈指南是根据我们小组汇编的现有证据和研究问题演绎制定的。一部分访谈问题聚焦于学生关于医学人工智能的知识、技能和态度以及他们对课程的总体评价。使用梅林的定性内容分析法对回答进行分析。本文报告了学生关于他们对人工智能的看法和态度以及对该选修课程总体评价的陈述子集。

结果

我们总共进行了18次小组访谈,来自连续3期课程的所有35名(100%)参与者(女性11名,男性24名)都参加了。这产生了总共214条关于人工智能的陈述,这些陈述被归入“应用领域”“未来工作”和“批判性反思”这3个主要类别。结果表明学生对人工智能有细致入微且有差异的理解。此外,610条陈述涉及对该选修课程的总体评价,显示出巨大的学习益处和对教学理念的高度接受度。所有35名学生都愿意向同龄人推荐该选修课程。

结论

评估表明,人工智能模块有效地培养了关于人工智能技术的能力,培养了批判性视角,并使医学生做好准备以有差异的方式与该技术互动。该课程是可行的、有益的,并且在学生中高度被接受,表明它可以作为其他医疗机构的教学模式。鉴于医学人工智能应用的数量不断增加及其影响,迫切需要更多以人工智能为重点的课程以及对其教育影响的进一步研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e43a/12149464/7c8b9fc18595/mededu-v11-e65220-g001.jpg

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