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免疫信息学在表位疫苗研发中的应用与研究进展* |
冯宏盛1,2,金行1,2,高永宇3,鲜钰涵1,2,李海洋1,2,杨思宇1,2,贾爱明4,**(),高凤山1,2,**() |
1 大连大学生命健康学院 大连 116622 2 大连市基因和蛋白质工程药物筛选及研发重点实验室 大连 116622);(3 吉林农业大学动物医学院 长春 130118 3 大连医科大学附属第二医院 大连 116027 |
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Application of Immunoinformatics in Epitope Vaccine Development |
Hong-sheng FENG1,2,Hang JIN1,2,Yong-yu GAO3,Yu-han XIAN1,2,Hai-yang LI1,2,Si-yu YANG1,2,Ai-ming JIA4,**(),Feng-shan GAO1,2,**() |
1 College of Life and Health, Dalian University, Dalian 116622, China 2 The Dalian Gene and Protein Engineering for Drug Screening Key Laboratory, Dalian 116622, China 3 College of Veterinary Medicine, Jilin Agricultural University, Changchun 130118, China 4 The Second Hospital of Dalian Medical University, Dalian 116027, China |
引用本文:
冯宏盛, 金行, 高永宇, 鲜钰涵, 李海洋, 杨思宇, 贾爱明, 高凤山. 免疫信息学在表位疫苗研发中的应用与研究进展*[J]. 中国生物工程杂志, 2023, 43(7): 88-100.
Hong-sheng FENG, Hang JIN, Yong-yu GAO, Yu-han XIAN, Hai-yang LI, Si-yu YANG, Ai-ming JIA, Feng-shan GAO. Application of Immunoinformatics in Epitope Vaccine Development. China Biotechnology, 2023, 43(7): 88-100.
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https://manu60.magtech.com.cn/biotech/CN/Y2023/V43/I7/88
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