Li Junxin, Liao Linbu, Zhang Chao, Huang Kaifang, Zhang Pengfei, Zhang John Z H, Wan Xiaochun, Zhang Haiping
Center for Protein and Cell-based Drugs, Institute of Biomedicine and Biotechnology, Shenzhen Institutes of Advanced Technology, Chinese Academy of Sciences, 1068 Xueyuan Avenue, Nanshan District, Shenzhen 518055, China.
Department of Computational Biomedicine, Cedars-Sinai Medical Center, 8700 Beverly Blvd, Los Angeles, CA 90048, United States.
Brief Bioinform. 2024 Sep 23;25(6). doi: 10.1093/bib/bbae488.
High affinity is crucial for the efficacy and specificity of antibody. Due to involving high-throughput screens, biological experiments for antibody affinity maturation are time-consuming and have a low success rate. Precise computational-assisted antibody design promises to accelerate this process, but there is still a lack of effective computational methods capable of pinpointing beneficial mutations within the complementarity-determining region (CDR) of antibodies. Moreover, random mutations often lead to challenges in antibody expression and immunogenicity. In this study, to enhance the affinity of a human antibody against avian influenza virus, a CDR library was constructed and evolutionary information was acquired through sequence alignment to restrict the mutation positions and types. Concurrently, a statistical potential methodology was developed based on amino acid interactions between antibodies and antigens to calculate potential affinity-enhanced antibodies, which were further subjected to molecular dynamics simulations. Subsequently, experimental validation confirmed that a point mutation enhancing 2.5-fold affinity was obtained from 10 designs, resulting in the antibody affinity of 2 nM. A predictive model for antibody-antigen interactions based on the binding interface was also developed, achieving an Area Under the Curve (AUC) of 0.83 and a precision of 0.89 on the test set. Lastly, a novel approach involving combinations of affinity-enhancing mutations and an iterative mutation optimization scheme similar to the Monte Carlo method were proposed. This study presents computational methods that rapidly and accurately enhance antibody affinity, addressing issues related to antibody expression and immunogenicity.
高亲和力对于抗体的功效和特异性至关重要。由于涉及高通量筛选,用于抗体亲和力成熟的生物学实验耗时且成功率低。精确的计算辅助抗体设计有望加速这一过程,但仍缺乏能够在抗体互补决定区(CDR)内精准定位有益突变的有效计算方法。此外,随机突变常常导致抗体表达和免疫原性方面的挑战。在本研究中,为提高人源抗禽流感病毒抗体的亲和力,构建了一个CDR文库,并通过序列比对获取进化信息以限制突变位置和类型。同时,基于抗体与抗原之间的氨基酸相互作用开发了一种统计势能方法,用于计算潜在的亲和力增强抗体,并对其进行进一步的分子动力学模拟。随后,实验验证证实从10种设计中获得了一个亲和力提高2.5倍的点突变,使抗体亲和力达到2 nM。还开发了一种基于结合界面的抗体 - 抗原相互作用预测模型,在测试集上的曲线下面积(AUC)为0.83,精度为0.89。最后,提出了一种涉及亲和力增强突变组合和类似于蒙特卡罗方法的迭代突变优化方案的新方法。本研究提出了快速准确提高抗体亲和力的计算方法,解决了与抗体表达和免疫原性相关的问题。