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培养未来人工智能领域的医生:一项综合综述及建议变革

Educating Future Physicians in Artificial Intelligence (AI): An Integrative Review and Proposed Changes.

作者信息

Grunhut Joel, Wyatt Adam Tm, Marques Oge

机构信息

Charles E. Schmidt College of Medicine, Florida Atlantic University, USA.

College of Engineering and Computer Science, Florida Atlantic University, USA.

出版信息

J Med Educ Curric Dev. 2021 Sep 6;8:23821205211036836. doi: 10.1177/23821205211036836. eCollection 2021 Jan-Dec.

Abstract

BACKGROUND

As medicine and the delivery of healthcare enters the age of Artificial Intelligence (AI), the need for competent human-machine interaction to aid clinical decisions will rise. Medical students need to be sufficiently proficient in AI, its advantages to improve healthcare's expenses, quality, and access. Similarly, students must be educated about the shortfalls of AI such as bias, transparency, and liability. Overlooking a technology that will be transformative for the foreseeable future would place medical students at a disadvantage. However, there has been little interest in researching a proper method to implement AI in the medical education curriculum. This study aims to review the current literature that covers the attitudes of medical students towards AI, implementation of AI in the medical curriculum, and describe the need for more research in this area.

METHODS

An integrative review was performed to combine data from various research designs and literature. Pubmed, Medline (Ovid), GoogleScholar, and Web of Science articles between 2010 and 2020 were all searched with particular inclusion and exclusion criteria. Full text of the selected articles was analyzed using the Extension of Technology Acceptance Model and the Diffusions of Innovations theory. Data were successively pooled together, recorded, and analyzed quantitatively using a modified Hawkings evaluation form. The Preferred Reporting Items for Systematic Reviews and Meta-Analyses was utilized to help improve reporting.

RESULTS

A total of 39 articles meeting inclusion criteria were identified. Primary assessments of medical students attitudes were identified (n = 5). Plans to implement AI in the curriculum for the purpose of teaching students about AI (n = 6) and articles reporting actual implemented changes (n = 2) were assessed. Finally, 26 articles described the need for more research on this topic or calling for the need of change in medical curriculum to anticipate AI in healthcare.

CONCLUSIONS

There are few plans or implementations reported on how to incorporate AI in the medical curriculum. Medical schools must work together to create a longitudinal study and initiative on how to successfully equip medical students with knowledge in AI.

摘要

背景

随着医学和医疗保健服务进入人工智能(AI)时代,对有助于临床决策的有效人机交互的需求将会增加。医学生需要充分精通人工智能,了解其在改善医疗保健费用、质量和可及性方面的优势。同样,学生必须接受关于人工智能缺点的教育,如偏见、透明度和责任问题。忽视一项在可预见的未来将具有变革性的技术会使医学生处于不利地位。然而,对于研究在医学教育课程中实施人工智能的恰当方法,人们兴趣寥寥。本研究旨在综述当前涵盖医学生对人工智能的态度、人工智能在医学课程中的实施情况的文献,并描述在该领域进行更多研究的必要性。

方法

进行了一项综合综述,以整合来自各种研究设计和文献的数据。对2010年至2020年间的PubMed、Medline(Ovid)、谷歌学术和科学网文章进行了搜索,有特定的纳入和排除标准。使用技术接受模型扩展和创新扩散理论对所选文章的全文进行了分析。数据被相继汇总在一起,记录下来,并使用改良的霍金评估表进行定量分析。采用系统评价和荟萃分析的首选报告项目来帮助改进报告。

结果

共确定了39篇符合纳入标准的文章。确定了对医学生态度的初步评估(n = 5)。评估了为向学生传授人工智能知识而在课程中实施人工智能的计划(n = 6)以及报告实际实施变化的文章(n = 2)。最后,26篇文章描述了对该主题进行更多研究的必要性,或呼吁改变医学课程以应对医疗保健领域的人工智能。

结论

关于如何将人工智能纳入医学课程的计划或实施报告很少。医学院校必须共同努力,开展一项关于如何成功让医学生掌握人工智能知识的纵向研究和倡议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2c4f/8580487/7c13d5c94bdf/10.1177_23821205211036836-fig1.jpg

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