BMC Medical Education (Nov 2024)
Assessing clinical medicine students’ acceptance of large language model: based on technology acceptance model
Abstract
Abstract While large language models (LLMs) have demonstrated significant potential in medical education, there is limited understanding of medical students’ acceptance of LLMs and the factors influencing their use. This study explores medical students’ acceptance of LLMs in learning and examines the factors influencing this acceptance through the lens of the Technology Acceptance Model (TAM). A questionnaire survey conducted among Chinese medical students revealed a high willingness to use LLMs in their studies. The findings suggest that attitudes play a crucial role in predicting medical students’ behavioral intentions to use LLMs, mediating the effects of perceived usefulness, perceived ease of use, and perceived risk. Additionally, perceived risk and social influence directly impact behavioral intentions. This study provides compelling evidence supporting the applicability of the TAM to the acceptance of LLMs in medical education, highlighting the necessity for medical students to utilize LLMs as an auxiliary tool in their learning process.
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