评估人工智能意识并确定基本能力:将人工智能融入医学教育的主要利益相关者的见解。

IF 3.2 Q1 EDUCATION, SCIENTIFIC DISCIPLINES JMIR Medical Education Pub Date : 2024-06-12 DOI:10.2196/58355
Julia-Astrid Moldt, Teresa Festl-Wietek, Wolfgang Fuhl, Susanne Zabel, Manfred Claassen, Samuel Wagner, Kay Nieselt, Anne Herrmann-Werner
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引用次数: 0

摘要

背景:人工智能(AI)在医疗保健领域的重要性与日俱增,医疗保健专业人员越来越需要全面了解人工智能技术,这就要求医学教育做出相应调整:本文探讨了利益相关者对医学中人工智能的看法和期望,并研究了其对医学课程的潜在影响。本研究项目旨在评估不同利益相关者的人工智能经验和意识,并确定医学教育中与人工智能相关的基本主题,从而为学生定义必要的能力:作为 TüKITZMed 项目的一部分,我们在 2022 年 8 月至 2023 年 3 月期间采用半结构化定性访谈的方式收集了经验数据。这些访谈针对不同的利益相关者,以探讨他们对医学人工智能的经验和观点。使用 MAXQDA 软件对收集到的数据进行了定性内容分析:对 38 名参与者(6 名讲师、9 名临床医生、10 名学生、6 名人工智能专家和 7 名机构利益相关者)进行了半结构式访谈。定性内容分析揭示了 6 个主要类别,共 24 个子类别,以回答研究问题。对利益相关者陈述的评估显示了他们对人工智能理解的一些共同点和不同点。根据主要类别确定的人工智能关键主题如下:可能的课程内容、技能和能力;编程技能;课程范围;课程结构:分析强调将人工智能纳入医学课程,以确保学生熟练掌握临床应用。标准化的人工智能理解对于定义和教授相关内容至关重要。在实施过程中考虑不同的观点对于在医学背景下全面定义人工智能、弥补差距以及促进未来人工智能在医学研究中应用的有效解决方案至关重要。研究结果为潜在的课程内容和结构(包括医学中的人工智能方面)提供了启示。
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Assessing AI Awareness and Identifying Essential Competencies: Insights From Key Stakeholders in Integrating AI Into Medical Education.

Background: The increasing importance of artificial intelligence (AI) in health care has generated a growing need for health care professionals to possess a comprehensive understanding of AI technologies, requiring an adaptation in medical education.

Objective: This paper explores stakeholder perceptions and expectations regarding AI in medicine and examines their potential impact on the medical curriculum. This study project aims to assess the AI experiences and awareness of different stakeholders and identify essential AI-related topics in medical education to define necessary competencies for students.

Methods: The empirical data were collected as part of the TüKITZMed project between August 2022 and March 2023, using a semistructured qualitative interview. These interviews were administered to a diverse group of stakeholders to explore their experiences and perspectives of AI in medicine. A qualitative content analysis of the collected data was conducted using MAXQDA software.

Results: Semistructured interviews were conducted with 38 participants (6 lecturers, 9 clinicians, 10 students, 6 AI experts, and 7 institutional stakeholders). The qualitative content analysis revealed 6 primary categories with a total of 24 subcategories to answer the research questions. The evaluation of the stakeholders' statements revealed several commonalities and differences regarding their understanding of AI. Crucial identified AI themes based on the main categories were as follows: possible curriculum contents, skills, and competencies; programming skills; curriculum scope; and curriculum structure.

Conclusions: The analysis emphasizes integrating AI into medical curricula to ensure students' proficiency in clinical applications. Standardized AI comprehension is crucial for defining and teaching relevant content. Considering diverse perspectives in implementation is essential to comprehensively define AI in the medical context, addressing gaps and facilitating effective solutions for future AI use in medical studies. The results provide insights into potential curriculum content and structure, including aspects of AI in medicine.

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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
期刊最新文献
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