Aaron Diamond AIDS Research Center, Columbia University Vagelos College of Physicians and Surgeons, New York, NY, United States.
Zuckerman Mind Brain Behavior Institute, Columbia University, New York, NY, United States.
Front Immunol. 2023 May 19;14:1190416. doi: 10.3389/fimmu.2023.1190416. eCollection 2023.
Accurate identification of beneficial mutations is central to antibody design. Many knowledge-based (KB) computational approaches have been developed to predict beneficial mutations, but their accuracy leaves room for improvement. Thermodynamic integration (TI) is an alchemical free energy algorithm that offers an alternative technique for identifying beneficial mutations, but its performance has not been evaluated. In this study, we developed an efficient TI protocol with high accuracy for predicting binding free energy changes of antibody mutations. The improved TI method outperforms KB methods at identifying both beneficial and deleterious mutations. We observed that KB methods have higher accuracies in predicting deleterious mutations than beneficial mutations. A pipeline using KB methods to efficiently exclude deleterious mutations and TI to accurately identify beneficial mutations was developed for high-throughput mutation scanning. The pipeline was applied to optimize the binding affinity of a broadly sarbecovirus neutralizing antibody 10-40 against the circulating severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) omicron variant. Three identified beneficial mutations show strong synergy and improve both binding affinity and neutralization potency of antibody 10-40. Molecular dynamics simulation revealed that the three mutations improve the binding affinity of antibody 10-40 through the stabilization of an altered binding mode with increased polar and hydrophobic interactions. Above all, this study presents an accurate and efficient TI-based approach for optimizing antibodies and other biomolecules.
准确识别有益突变是抗体设计的核心。已经开发出许多基于知识(KB)的计算方法来预测有益突变,但它们的准确性仍有改进的空间。热力学积分(TI)是一种无热力学计算的自由能算法,为识别有益突变提供了一种替代技术,但尚未对其性能进行评估。在这项研究中,我们开发了一种高效、高精度的 TI 方案,用于预测抗体突变的结合自由能变化。改进的 TI 方法在识别有益和有害突变方面均优于 KB 方法。我们观察到,KB 方法在预测有害突变方面的准确性高于有益突变。为了高通量突变扫描,我们开发了一个使用 KB 方法有效排除有害突变,然后使用 TI 准确识别有益突变的流水线。该流水线应用于优化广泛的沙贝科病毒中和抗体 10-40 对循环严重急性呼吸综合征冠状病毒 2(SARS-CoV-2)奥密克戎变体的结合亲和力。三个鉴定出的有益突变具有很强的协同作用,提高了抗体 10-40 的结合亲和力和中和效力。分子动力学模拟表明,这三个突变通过稳定改变的结合模式来提高抗体 10-40 的结合亲和力,增加了极性和疏水性相互作用。总而言之,这项研究提出了一种准确高效的基于 TI 的方法,用于优化抗体和其他生物分子。