Chinese Journal of Nursing Education ›› 2026, Vol. 23 ›› Issue (3): 286-293.doi: 10.3761/j.issn.1672-9234.2026.03.005
• Simulated Teaching • Previous Articles Next Articles
YAN Xiaoqian(
), WANG Ziyu, CHEN Ou, LI Jing, GUO Yufang*(
)
Received:2025-09-29
Online:2026-03-15
Published:2026-03-17
Contact:
*GUO Yufang,E-mail:cdguoyufang@163.com
Supported by:YAN Xiaoqian, WANG Ziyu, CHEN Ou, LI Jing, GUO Yufang. A scoping review of multimodal learning analytics for students’ teamwork competence in nursing scenario simulation teaching[J].Chinese Journal of Nursing Education, 2026, 23(3): 286-293.
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