International School for Advanced Studies (SISSA), Via Bonomea 265, 34136, Trieste, Italy.
Chem Commun (Camb). 2019 Nov 19;55(93):14043-14046. doi: 10.1039/c9cc06182g.
We present an in silico mutagenetic protocol for improving the binding affinity of single domain antibodies (or nanobodies, VHHs). The method iteratively attempts random mutations in the interacting region of the protein and evaluates the resulting binding affinity towards the target by scoring, with a collection of scoring functions, short explicit solvent molecular dynamics trajectories of the binder-target complexes. The acceptance/rejection of each attempted mutation is carried out by a consensus decision-making algorithm, which considers all individual assessments derived from each scoring function. The method was benchmarked by evolving a single complementary determining region (CDR) of an anti-HER2 VHH hit obtained by direct panning of a phage display library. The optimised VHH mutant showed significantly enhanced experimental affinity with respect to the original VHH it matured from. The protocol can be employed as it is for the optimization of peptides, antibody fragments, and (given enough computational power) larger antibodies.
我们提出了一种改进单域抗体(或纳米抗体,VHH)结合亲和力的计算突变方案。该方法通过评分,在相互作用区域迭代尝试随机突变,并利用一系列评分函数,对结合物-靶复合物的短显式溶剂分子动力学轨迹进行评估,从而评估产生的结合亲和力。每个尝试突变的接受/拒绝是通过共识决策算法进行的,该算法考虑了每个评分函数得出的所有单独评估。该方法通过进化直接从噬菌体展示文库中筛选出的抗 HER2 VHH 命中的单个互补决定区(CDR)进行了基准测试。与它成熟的原始 VHH 相比,优化后的 VHH 突变体显示出明显增强的实验亲和力。该方案可以直接用于优化肽、抗体片段,并且(如果有足够的计算能力)还可以用于优化更大的抗体。