Antibody design is valuable for therapeutic usage and biological research. Existing deep-learning-based methods encounter several key issues: 1) incomplete context for Complementarity-Determining Regions (CDRs) generation; 2) incapability of capturing the entire 3D geometry of the input structure; 3) inefficient prediction of the CDR sequences in an autoregressive manner. In this paper, we propose Multi-channel Equivariant Attention Network (MEAN) to co-design 1D sequences and 3D structures of CDRs. To be specific, MEAN formulates antibody design as a conditional graph translation problem by importing extra components including the target antigen and the light chain of the antibody. Then, MEAN resorts to E(3)-equivariant message passing along with a proposed attention mechanism to better capture the geometrical correlation between different components. Finally, it outputs both the 1D sequences and 3D structure via a multi-round progressive full-shot scheme, which enjoys more efficiency and precision against previous autoregressive approaches. Our method significantly surpasses state-of-the-art models in sequence and structure modeling, antigen-binding CDR design, and binding affinity optimization. Specifically, the relative improvement to baselines is about 23% in antigen-binding CDR design and 34% for affinity optimization.
翻译:抗体设计对于治疗和生物研究具有重要价值。现有的基于深度学习的方法遇到了几个关键问题:1)生成互补决定区(CDR)的上下文不完整;2)无法捕获输入结构的整个三维几何形状;3)不能有效地通过自回归的方式预测CDR序列。在本文中,我们提出了多通道等变注意力网络(MEAN),通过引入额外的组件,包括目标抗原和抗体的轻链,将抗体设计制定为条件图形翻译问题。然后,MEAN采用E(3)等变消息传递及其提出的注意机制,以更好地捕获不同组件之间的几何相关性。最后,它通过多回合的递进式全扫描方案输出1D序列和3D结构,相对于以前的自回归方法,在序列和结构建模、抗原结合CDR设计和结合亲和力优化方面具有更高的效率和精度。我们的方法在抗原结合CDR设计和亲和力优化方面显著优于现有的最先进模型。具体而言,在抗原结合CDR设计方面,相对于基线的提高约为23%,在亲和力优化方面为34%。