计算机科学
免疫原性
蛋白质工程
合理设计
计算生物学
可扩展性
纳米技术
生物
抗体
免疫学
生物化学
材料科学
数据库
酶
作者
Ahrum Son,Jongham Park,Woojin Kim,Wonseok Lee,Yoonki Yoon,Jaeho Ji,Hyunsoo Kim
出处
期刊:Biomolecules
[Multidisciplinary Digital Publishing Institute]
日期:2024-08-27
卷期号:14 (9): 1073-1073
被引量:1
摘要
Therapeutic protein engineering has revolutionized medicine by enabling the development of highly specific and potent treatments for a wide range of diseases. This review examines recent advances in computational and experimental approaches for engineering improved protein therapeutics. Key areas of focus include antibody engineering, enzyme replacement therapies, and cytokine-based drugs. Computational methods like structure-based design, machine learning integration, and protein language models have dramatically enhanced our ability to predict protein properties and guide engineering efforts. Experimental techniques such as directed evolution and rational design approaches continue to evolve, with high-throughput methods accelerating the discovery process. Applications of these methods have led to breakthroughs in affinity maturation, bispecific antibodies, enzyme stability enhancement, and the development of conditionally active cytokines. Emerging approaches like intracellular protein delivery, stimulus-responsive proteins, and de novo designed therapeutic proteins offer exciting new possibilities. However, challenges remain in predicting in vivo behavior, scalable manufacturing, immunogenicity mitigation, and targeted delivery. Addressing these challenges will require continued integration of computational and experimental methods, as well as a deeper understanding of protein behavior in complex physiological environments. As the field advances, we can anticipate increasingly sophisticated and effective protein therapeutics for treating human diseases.
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