Pretrainable geometric graph neural network for antibody affinity maturation

Huiyu Cai(Mila - Quebec Artificial Intelligence Institute), Zuobai Zhang(Mila - Quebec Artificial Intelligence Institute), Mingkai Wang(Shanghai Medical College of Fudan University), Bozitao Zhong(Mila - Quebec Artificial Intelligence Institute), Quanxiao Li(Shanghai Medical College of Fudan University), Yuxuan Zhong(Shanghai Medical College of Fudan University), Yanling Wu(Shanghai Medical College of Fudan University), Tianlei Ying(Shanghai Medical College of Fudan University), Jian Tang(HEC Montréal)
Nature Communications
September 6, 2024
Cited by 42Open Access
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Abstract

Increasing the binding affinity of an antibody to its target antigen is a crucial task in antibody therapeutics development. This paper presents a pretrainable geometric graph neural network, GearBind, and explores its potential in in silico affinity maturation. Leveraging multi-relational graph construction, multi-level geometric message passing and contrastive pretraining on mass-scale, unlabeled protein structural data, GearBind outperforms previous state-of-the-art approaches on SKEMPI and an independent test set. A powerful ensemble model based on GearBind is then derived and used to successfully enhance the binding of two antibodies with distinct formats and target antigens. ELISA EC50 values of the designed antibody mutants are decreased by up to 17 fold, and KD values by up to 6.1 fold. These promising results underscore the utility of geometric deep learning and effective pretraining in macromolecule interaction modeling tasks. Increasing the binding affinity of an antibody to its target antigen is key for antibody therapeutics. Here the authors report a pretrainable geometric graph neural network, GearBind, and explore its potential in in silico antibody affinity maturation.


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