Computer-Aided Technology for Bioactive Protein Design and Clinical Application

IF 4.1 4区 医学 Q2 BIOCHEMISTRY & MOLECULAR BIOLOGY
Chufan Wang, Yeyun Chen, Lei Ren
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引用次数: 0

Abstract

Computer-aided protein design (CAPD) has become a transformative field, harnessing advances in computational power and deep learning to deepen the understanding of protein structure, function, and design. This review provides a comprehensive overview of CAPD techniques, with a focus on their application to protein-based therapeutics such as monoclonal antibodies, protein drugs, antigens, and protein polymers. This review starts with key CAPD methods, particularly those integrating deep learning-based predictions and generative models. These approaches have significantly enhanced protein drug properties, including binding affinity, specificity, and the reduction of immunogenicity. This review also covers CAPD's role in optimizing vaccine antigen design, improving protein stability, and customizing protein polymers for drug delivery applications. Despite considerable progress, CAPD faces challenges such as model overfitting, limited data for rare protein families, and the need for efficient experimental validation. Nevertheless, ongoing advancements in computational methods, coupled with interdisciplinary collaborations, are poised to overcome these obstacles, advancing protein engineering and therapeutic development. In conclusion, this review highlights the future potential of CAPD to transform drug development, personalized medicine, and biotechnology.

Abstract Image

生物活性蛋白设计与临床应用的计算机辅助技术。
计算机辅助蛋白质设计(CAPD)已经成为一个变革性的领域,利用计算能力和深度学习的进步来加深对蛋白质结构、功能和设计的理解。本文对CAPD技术进行了综述,重点介绍了CAPD技术在蛋白质治疗中的应用,如单克隆抗体、蛋白质药物、抗原和蛋白质聚合物。本综述从关键的CAPD方法开始,特别是那些集成了基于深度学习的预测和生成模型的方法。这些方法显著增强了蛋白质药物的特性,包括结合亲和力、特异性和免疫原性的降低。本文还综述了CAPD在优化疫苗抗原设计、提高蛋白质稳定性和定制用于药物递送的蛋白质聚合物方面的作用。尽管取得了相当大的进展,但CAPD仍面临着模型过拟合、罕见蛋白家族数据有限以及需要有效的实验验证等挑战。然而,计算方法的不断进步,加上跨学科的合作,正准备克服这些障碍,推进蛋白质工程和治疗发展。总之,这篇综述强调了CAPD在药物开发、个性化医疗和生物技术方面的未来潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Macromolecular bioscience
Macromolecular bioscience 生物-材料科学:生物材料
CiteScore
7.90
自引率
2.20%
发文量
211
审稿时长
1.5 months
期刊介绍: Macromolecular Bioscience is a leading journal at the intersection of polymer and materials sciences with life science and medicine. With an Impact Factor of 2.895 (2018 Journal Impact Factor, Journal Citation Reports (Clarivate Analytics, 2019)), it is currently ranked among the top biomaterials and polymer journals. Macromolecular Bioscience offers an attractive mixture of high-quality Reviews, Feature Articles, Communications, and Full Papers. With average reviewing times below 30 days, publication times of 2.5 months and listing in all major indices, including Medline, Macromolecular Bioscience is the journal of choice for your best contributions at the intersection of polymer and life sciences.
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