1.Current applications and future prospects of artificial intelligence in personalized medical learning
Bao′an HONG ; Xuezhou ZHANG ; Ning ZHANG ; Xiaotian WEN ; Zihao YANG ; Tianxia QIN ; Wen CHENG ; Leyuan QI
Chinese Journal of General Practitioners 2025;24(10):1285-1289
With the advancement of the "New Medical Science" reform, the "Medicine+X" model has emerged as a key direction for the future development of medical education. Multidisciplinary integration places higher demands on both educators and students. Emerging technologies, such as intelligent tutoring systems, adaptive learning platforms, intelligent campus management systems, and ChatGPT, have made personalized learning possible. Such approaches offer notable advantages, including improving learning efficiency, enhancing motivation, eliminating the spatiotemporal constraints of clinical education, and alleviating teachers′ workloads. Nevertheless, the application of artificial intelligence in personalized medical education still faces multiple challenges, such as issues of data quality and reliability, the need for faculty development, shifts in educational paradigms, and ethical considerations. This study explored the current status of artificial intelligence in personalized medical education and offered recommendations to promote its development, including strengthening the integration of technology and education, enhancing the digital literacy of educators, establishing ethical guidelines, and fostering multi-stakeholder collaboration.
2.Application and benefits of virtual standardized patients in clinical teaching
Bao′an HONG ; Xuezhou ZHANG ; Ning ZHANG ; Xiaotian WEN ; Leyuan QI ; Tianxia QIN ; Wen CHENG ; Zihao YANG
Chinese Journal of General Practitioners 2025;24(11):1421-1424
In traditional teaching, medical students have limited opportunities to interact with patients, which constrains the development of their clinical skills. Virtual standardized patients offer a potential solution to this limitation. This article analyzes the advantages of virtual standardized patients and their application in clinical teaching.
3.3D printing technology combined with problem-based learning pedagogy in medical teaching
Bao′an HONG ; Xuezhou ZHANG ; Ning ZHANG ; Leyuan QI ; Zihao YANG ; Tianxia QIN ; Wen CHENG ; Xiaotian WEN
Chinese Journal of General Practitioners 2025;24(9):1159-1162
Medical students often struggle to understand and master the relevant knowledge and skills in teaching, especially in surgical teaching. Emerging 3D printing technology can help students to understand and master surgical techniques. The problem-based learning (PBL) teaching method helps students to develop their independent thinking and teamwork skills. The combination of these methods has already achieved significant success. Therefore, this article discusses the application and combining 3D printing technology with the PBL teaching method in medical teaching, particularly in urological surgery education, and provides new ideas and references for future, more diverse, and high-tech medical education.
4.Current applications and future prospects of artificial intelligence in personalized medical learning
Bao′an HONG ; Xuezhou ZHANG ; Ning ZHANG ; Xiaotian WEN ; Zihao YANG ; Tianxia QIN ; Wen CHENG ; Leyuan QI
Chinese Journal of General Practitioners 2025;24(10):1285-1289
With the advancement of the "New Medical Science" reform, the "Medicine+X" model has emerged as a key direction for the future development of medical education. Multidisciplinary integration places higher demands on both educators and students. Emerging technologies, such as intelligent tutoring systems, adaptive learning platforms, intelligent campus management systems, and ChatGPT, have made personalized learning possible. Such approaches offer notable advantages, including improving learning efficiency, enhancing motivation, eliminating the spatiotemporal constraints of clinical education, and alleviating teachers′ workloads. Nevertheless, the application of artificial intelligence in personalized medical education still faces multiple challenges, such as issues of data quality and reliability, the need for faculty development, shifts in educational paradigms, and ethical considerations. This study explored the current status of artificial intelligence in personalized medical education and offered recommendations to promote its development, including strengthening the integration of technology and education, enhancing the digital literacy of educators, establishing ethical guidelines, and fostering multi-stakeholder collaboration.
5.Application and benefits of virtual standardized patients in clinical teaching
Bao′an HONG ; Xuezhou ZHANG ; Ning ZHANG ; Xiaotian WEN ; Leyuan QI ; Tianxia QIN ; Wen CHENG ; Zihao YANG
Chinese Journal of General Practitioners 2025;24(11):1421-1424
In traditional teaching, medical students have limited opportunities to interact with patients, which constrains the development of their clinical skills. Virtual standardized patients offer a potential solution to this limitation. This article analyzes the advantages of virtual standardized patients and their application in clinical teaching.
6.3D printing technology combined with problem-based learning pedagogy in medical teaching
Bao′an HONG ; Xuezhou ZHANG ; Ning ZHANG ; Leyuan QI ; Zihao YANG ; Tianxia QIN ; Wen CHENG ; Xiaotian WEN
Chinese Journal of General Practitioners 2025;24(9):1159-1162
Medical students often struggle to understand and master the relevant knowledge and skills in teaching, especially in surgical teaching. Emerging 3D printing technology can help students to understand and master surgical techniques. The problem-based learning (PBL) teaching method helps students to develop their independent thinking and teamwork skills. The combination of these methods has already achieved significant success. Therefore, this article discusses the application and combining 3D printing technology with the PBL teaching method in medical teaching, particularly in urological surgery education, and provides new ideas and references for future, more diverse, and high-tech medical education.
7.Construction of eukaryotic expression vector of EGFRi-IL-24 recombinant gene.
Jianling WANG ; Xinying FAN ; Leyuan BAO ; Lianxiang DU
Journal of Biomedical Engineering 2010;27(2):395-399
The epithelial growth factor receptor interference (EGFRi) was obtained by synthetic primers. Overlapping PCR was used to produce EGFRi-IL-24 fusion gene, which is linked by Gly4Ser3. After sequence analysis, EGFRi-IL-24 was cloned into expression vector pPIC9k; EGFRi-IL-24/pPIC9k was linearized with SacI,and then transformed to electroporated pastoris GS115. Subsequently, positive clone was selected by G418 and PCR, and its phenotype was determined by SDS-PAGE and MTT assay. The results demonstrated that EGFRi-IL-24 protein was expressed and shown to have the potential for use in researches of its biological function and in clinical application.
Antineoplastic Agents
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pharmacology
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Genetic Vectors
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genetics
;
Humans
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Interleukins
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biosynthesis
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genetics
;
Pichia
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genetics
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metabolism
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Receptor, Epidermal Growth Factor
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antagonists & inhibitors
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biosynthesis
;
genetics
;
Recombinant Fusion Proteins
;
biosynthesis
;
genetics
;
pharmacology

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