医学生学习人工智能-与人工智能?

IF 4.9 1区 教育学 Q1 EDUCATION, SCIENTIFIC DISCIPLINES Medical Education Pub Date : 2023-09-15 DOI:10.1111/medu.15211
Manuel E. B. Müller, Matthias C. Laupichler
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引用次数: 0

摘要

由于课程要求或对创新的怀疑,突破性的科学发现常常被医学院忽视。人工智能(AI)在医疗保健领域的应用标志着一种范式的转变,给医疗专业人员、医学生和社会带来了挑战。今天的学生是第一代面临这种范式转变的医学实习生,在不久的将来,他们将不得不在实践中应用人工智能。因此,医学生需要知道如何应用人工智能以及如何以适当的方式使用其结果。基于目前的研究状况,目前还无法预见在医疗实践中需要哪些理论和实践的人工智能能力。这带来了风险,因为学生没有做好充分准备来管理和反思应用医学中人工智能的可能性、局限性和伦理法律挑战。在openAI的聊天机器人ChatGPT发布后,我们在我们的AI课程中就伦理方面和潜在的好处以及应用程序的注意事项进行了公开辩论。我们利用围绕ChatGPT的炒作来减少学生对人工智能的担忧,同时说明人工智能的潜在影响。作为我们人工智能课程的最后一个练习,学生们被邀请向聊天机器人询问在医疗保健中使用人工智能的结构性偏见。一个典型的问题涉及人工智能对医疗诊断透明度的影响。然后参与者根据“传统”资源(例如教科书和在线资源)审查ChatGPT答案的准确性。一方面,学生应该获得使用人工智能的实践经验(应用能力),另一方面,学习以批判的方式检查人工智能应用的答案(评估能力)。通过使用这个面向应用程序的最终任务,我们从Bloom分类法的较低层次1转移到了面向评估的元层次。通过对最终练习结果的评估,我们对学生的人工智能反思能力有了独特的认识。例如,对ChatGPT答案的评估一直被认为有潜在的偏见,而传统来源(如在线搜索引擎或研究文献)的选择偏见仍然没有受到质疑。此外,与上一届相比,我们发现学生对期末练习的兴趣更大。这反映在对最后作业的评价上,这次的评价比前几年都要积极。可以说,创新医学技术发展的实际应用可以提高医学生的反思能力。这对于人工智能应用尤其重要,因为这些应用越来越多地进入临床实践,有时会受到不利的偏见的影响,如果未来的医生没有经过培训来应对它们,可能会限制医疗标准。
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Medical students learning about AI – with AI?

Groundbreaking scientific discoveries are often neglected by Medical Schools due to curricular demands or scepticism towards innovations. The use of artificial intelligence (AI) in health care marks a paradigm shift that poses challenges for medical professionals, medical students and society. Today's students are the first generation of medical trainees confronted with this paradigm shift and will have to apply AI in practice in the near future. Therefore, medical students need to know how AI can be applied and how to use its results in an appropriate manner. Based on the current state of research, it is currently unforeseeable which theoretical and practical AI competencies will be required in medical practice. This poses risks, as students are inadequately prepared to administer and reflect on possibilities, limits and ethical-legal challenges of AI in applied medical science.

After the release of openAI's chatbot ChatGPT, we took up the public debate about ethical aspects and potential benefits as well as caveats of the application in our AI course. We used the hype surrounding ChatGPT to reduce students' concerns about AI and at the same time illustrate the potential impact of AI. As a final exercise of our AI course, students were invited to ask the chatbot about structural biases in the use of AI in health care. One exemplary question dealt with the influence of AI on transparency in medical diagnosis. The accuracy of ChatGPT's answers were then reviewed by participants based on ‘traditional’ sources (e.g., textbooks and online sources). Students were supposed to gain practical experience in the use of AI (application competence) on the one hand and learn to examine the answers of AI-applications in a critical manner (appraisal competence) on the other hand. By using this application-oriented final task, we moved away from the lower levels of Bloom's taxonomy1 and reached an evaluation-oriented meta-level.

As a result, we take away two lessons learned: Through the assessment of the final exercise's results, we gained a unique insight into students' AI reflection skills. For instance, evaluation of ChatGPT's answers was consistently seen as potentially biased, whereas the selection bias of traditional sources such as online search engines or research literature remained unquestioned.

In addition, we found greater student interest in the final exercise compared with the previous cohort. This is reflected in the evaluation of the final assignment, which was rated more positively than in the years before.

It can be stated that the actual use of innovative medical-technological developments can increase the reflection competence of medical students. This is particularly important for AI applications, as these are increasingly reaching clinical practice and are sometimes subject to unfavourable biases that could limit the standard of medical treatment if future physicians are not trained to respond to them.

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来源期刊
Medical Education
Medical Education 医学-卫生保健
CiteScore
8.40
自引率
10.00%
发文量
279
审稿时长
4-8 weeks
期刊介绍: Medical Education seeks to be the pre-eminent journal in the field of education for health care professionals, and publishes material of the highest quality, reflecting world wide or provocative issues and perspectives. The journal welcomes high quality papers on all aspects of health professional education including; -undergraduate education -postgraduate training -continuing professional development -interprofessional education
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