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. 2023 Nov 9;23(1):852.
doi: 10.1186/s12909-023-04700-8.

AI in medical education: medical student perception, curriculum recommendations and design suggestions

Affiliations

AI in medical education: medical student perception, curriculum recommendations and design suggestions

Qianying Li et al. BMC Med Educ. .

Abstract

Medical AI has transformed modern medicine and created a new environment for future doctors. However, medical education has failed to keep pace with these advances, and it is essential to provide systematic education on medical AI to current medical undergraduate and postgraduate students. To address this issue, our study utilized the Unified Theory of Acceptance and Use of Technology model to identify key factors that influence the acceptance and intention to use medical AI. We collected data from 1,243 undergraduate and postgraduate students from 13 universities and 33 hospitals, and 54.3% reported prior experience using medical AI. Our findings indicated that medical postgraduate students have a higher level of awareness in using medical AI than undergraduate students. The intention to use medical AI is positively associated with factors such as performance expectancy, habit, hedonic motivation, and trust. Therefore, future medical education should prioritize promoting students' performance in training, and courses should be designed to be both easy to learn and engaging, ensuring that students are equipped with the necessary skills to succeed in their future medical careers.

Keywords: Artificial Intelligence; Medical AI; Medical students; Medical training; UTAUT2.

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Conflict of interest statement

The authors declare no competing interests.

Figures

Fig. 1
Fig. 1
The responses for each measurement scale
Fig. 2
Fig. 2
Path ecoefficiency analysis. ***, P < 0.001

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