Chinese Journal of Medical Education ›› 2026, Vol. 46 ›› Issue (4): 269-274.DOI: 10.3760/cma.j.cn115259-20250410-00404

• Educational Technologies • Previous Articles     Next Articles

Application of dynamic cases based on large language models in pediatric medical education

Wei Xiaotong, Wen Deliang   

  1. Institute of Health Professions Education Assessment and Reform, China Medical University, Shenyang 110122, China
  • Received:2025-04-10 Online:2026-04-01 Published:2026-03-27
  • Contact: Wen Deliang, Email: dlwen@cmu.edu.cn
  • Supported by:
    National Natural Science Foundation of China Youth Program (72204267); Liaoning Province Doctoral Research Start-up Fund Program (2025-BS-0604)

Abstract: This study aims to break through the limitations of traditional static case design by constructing a ″dynamic prompt model″ based on large language models and exploring its application and effectiveness in pediatric medical education. The model encompasses disease course progression information (prodromal, acute, and recovery phases), a complete clinical decision-making chain (history taking, physical examination, auxiliary investigations, diagnosis, and treatment), and progressively advanced cognitive objectives (remembering, understanding, applying, analyzing, and evaluating). The disease list includes two categories: common pediatric diseases and rare diseases. The study selected 45 fourth-year pediatric medical students from China Medical University as research participants to conduct a 4-week learning program. The results indicate that after learning with dynamic cases, the virtual case scores significantly increased from (75.31±15.21) to (82.22±11.43). Critical thinking ability improved from (102.67±10.93) to (110.13±12.61), with system analysis skills rising from (42.85±3.91) to (45.13±4.61) and knowledge exploration willingness increasing from (31.55±3.74) to (36.32±5.11), all P<0.05. The realism scores of different cases were relatively high (all>4), and the difficulty ratings were reasonably distributed. In the experience evaluation, the ″enhancing learning″ dimension scored the highest (4.02±0.47). Therefore, the ″dynamic prompt model″ effectively improved medical students′ clinical thinking and critical thinking abilities, providing an efficient and innovative tool for pediatric medical education.

Key words: Pediatrics, Large language models, Dynamic prompts, Virtual diagnosis and treatment, Clinical reasoning ability

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