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Accurate prediction of CDR-H3 loop structures of antibodies with deep learning.

Hedi ChenXiaoyu FanShuqian ZhuYuchan PeiXiaochun ZhangXiaonan ZhangLihang LiuFeng QianBo-Xue Tian
Published in: eLife (2024)
Accurate prediction of the structurally diverse complementarity determining region heavy chain 3 (CDR-H3) loop structure remains a primary and long-standing challenge for antibody modeling. Here, we present the H3-OPT toolkit for predicting the 3D structures of monoclonal antibodies and nanobodies. H3-OPT combines the strengths of AlphaFold2 with a pre-trained protein language model and provides a 2.24 Å average RMSD Cα between predicted and experimentally determined CDR-H3 loops, thus outperforming other current computational methods in our non-redundant high-quality dataset. The model was validated by experimentally solving three structures of anti-VEGF nanobodies predicted by H3-OPT. We examined the potential applications of H3-OPT through analyzing antibody surface properties and antibody-antigen interactions. This structural prediction tool can be used to optimize antibody-antigen binding and engineer therapeutic antibodies with biophysical properties for specialized drug administration route.
Keyphrases
  • high resolution
  • deep learning
  • drug administration
  • palliative care
  • autism spectrum disorder
  • vascular endothelial growth factor
  • mass spectrometry
  • convolutional neural network
  • resistance training
  • protein protein