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The impact of artificial intelligence-assisted teaching on medical students’ learning outcomes: an integrated model based on the ARCS model and constructivist theory

Xinyu Pang, Jinyan Zou, Xiaopeng Zhang, Yingying Li, Hao Zhang, Fu‐Dong Wang, Yuanyuan Zhang, Xiyi Chen

2025BMC Medical Education7 citationsDOIOpen Access PDF

Abstract

BACKGROUND: Artificial intelligence-assisted teaching, as an innovative model that combines intelligent technology and personalized education, is increasingly being emphasized in higher medical education. METHODS: This study included 523 participants, with a valid response rate of 87.2%. An integrated model based on the ARCS motivation model and constructivist theory was developed to explore the factors influencing medical students' learning outcomes in the context of AI-assisted instruction. Descriptive statistics were conducted using SPSS 23.0, and a structural equation model was constructed and validated using Amos 23.0. Mediation analysis was performed with Process (version 3.3.1). RESULTS: The study confirmed that teaching quality had a positive effect on learning motivation (β = 0.645, P < 0.001) and learning outcomes (β = 0.128, P = 0.032). Learning motivation positively influenced learning attitude (β = 0.822, P < 0.001) and learning satisfaction (β = 0.350, P < 0.001). Learning attitude had a positive impact on both learning satisfaction (β = 0.530, P < 0.001) and learning outcomes (β = 0.232, P = 0.020). Learning satisfaction was also positively associated with learning outcomes (β = 0.415, P < 0.001). The external environment had a positive effect on learning motivation (β = 0.449, P < 0.001) and learning outcomes (β = 0.101, P = 0.033). Moreover, learning motivation played a significant mediating role in the relationships between teaching quality and learning outcomes (β_inmedia = 0.343, 95% CI [0.273, 0.414]), as well as between the external environment and learning outcomes (β_inmedia = 0.287, 95% CI [0.218, 0.355]). CONCLUSION: Teaching quality and external environment indirectly enhance medical learning outcomes by strengthening learning motivation. Learning motivation plays a key role in shaping learning attitude, satisfaction, and outcomes, confirming the positive value of AI-assisted teaching in optimizing learning mechanisms. This study contributes to the application of AI-assisted teaching in medical education and provides empirical support for improving medical students' learning performance.

Topics & Concepts

Constructivist teaching methodsComputer scienceExperiential learningTeaching and learning centerValue (mathematics)Quality (philosophy)Mathematics educationKey (lock)Problem-based learningKnowledge managementActive learning (machine learning)Teaching methodOpen learningEmpirical researchLearning sciencesLearning theoryMedical educationPsychologyLearning environmentConstructivism (international relations)Educational technologyPersonalized learningPedagogyHigher educationLearning effectProfessional learning communityAction learningArtificial Intelligence in Healthcare and EducationBiomedical and Engineering EducationInnovations in Medical Education
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