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加拿大肿瘤学住院医师对人工智能的观点及教育需求调查

A Survey of Perspectives and Educational Needs of Canadian Oncology Residents on Artificial Intelligence.

作者信息

Favorito Fernanda M, Collie Laura, Kennedy Thomas, Nabhen Jacqueline J, Safavi Amir, Cerri Giovanni G, Hopman Wilma, Moraes Fábio Y

机构信息

Faculdade de Ciências Médicas da Santa Casa de São Paulo, São Paulo, Brazil.

Queen's University, Kingston, ON, Canada.

出版信息

J Cancer Educ. 2025 Apr;40(2):273-279. doi: 10.1007/s13187-024-02509-7. Epub 2024 Sep 30.

DOI:10.1007/s13187-024-02509-7
PMID:39349864
Abstract

This study evaluated the perspectives and educational needs of Canadian oncology residents with regard to artificial intelligence (AI) in medicine, exploring the influence of factors such as program of choice, gender, and tech literacy on their attitudes towards AI. An ethics-approved survey collected anonymous responses from Canadian oncology residents from December 2022 to July 2023. Comparisons by demographics were made using Chi-square and Mann-Whitney U tests. A total of 57 residents and fellows responded out of an expected 182, with representation from each oncology training program in Canada. Over half of the participants were male (63.2%), with radiation oncology programs being better represented than medical oncology programs (68.4% vs. 31.6%). There was balanced representation across all years of training. Most trainees (73%) were interested in learning more about AI, and many believed the topic should be formally taught during residency (63%), preferably through workshops (79%). Among evaluated factors, tech literacy showed the most impact over AI perspectives, driving a perception shift towards viewing AI as an improvement tool, rather than as a threat to professionals. In conclusion, Canadian oncology residents anticipate AI's growing influence in medicine but face educational deficiencies. Gender, oncology discipline, and self-reported tech literacy impact attitudes toward AI, highlighting the need for inclusive education.

摘要

本研究评估了加拿大肿瘤学住院医师对医学人工智能(AI)的看法和教育需求,探讨了选择的项目、性别和技术素养等因素对他们对AI态度的影响。一项经伦理批准的调查在2022年12月至2023年7月期间收集了加拿大肿瘤学住院医师的匿名回复。使用卡方检验和曼-惠特尼U检验按人口统计学特征进行比较。在预期的182名受访者中,共有57名住院医师和研究员做出了回应,加拿大各肿瘤学培训项目均有代表。超过一半的参与者为男性(63.2%),放射肿瘤学项目的代表比例高于医学肿瘤学项目(68.4%对31.6%)。各培训年份的代表比例均衡。大多数受训者(73%)有兴趣更多地了解AI,许多人认为该主题应在住院期间正式教授(63%),最好通过研讨会(79%)。在评估的因素中,技术素养对AI观点的影响最大,促使人们将AI视为一种改进工具,而非对专业人员的威胁。总之,加拿大肿瘤学住院医师预计AI在医学中的影响力会不断增强,但面临教育不足的问题。性别、肿瘤学学科和自我报告的技术素养会影响对AI的态度,凸显了包容性教育的必要性。

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