4.7 Article

Modeling Antibody-Antigen Complexes by Information-Driven Docking

Journal

STRUCTURE
Volume 28, Issue 1, Pages 119-+

Publisher

CELL PRESS
DOI: 10.1016/j.str.2019.10.011

Keywords

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Funding

  1. European Union Horizon 2020 BioExcel project [675728, 823830]
  2. European Union EOSC-hub project [777536]
  3. Dutch Foundation for Scientific Research (NWO) (TOP-PUNT grant) [718.015.001]
  4. FP7 WeNMR European e-Infrastructure project [261572]
  5. H2020 West-Life European e-Infrastructure project [675858]
  6. EOSC-hub European e-Infrastructure project [777536]
  7. national GRID Initiative of Belgium
  8. national GRID Initiative of France
  9. national GRID Initiative of Italy
  10. national GRID Initiative of Germany
  11. national GRID Initiative of the Netherlands
  12. national GRID Initiative of Poland
  13. national GRID Initiative of Portugal
  14. national GRID Initiative of Spain
  15. national GRID Initiative of UK
  16. national GRID Initiative of Taiwan
  17. US Open Science Grid

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Antibodies are Y-shaped proteins essential for immune response. Their capability to recognize antigens with high specificity makes them excellent therapeutic targets. Understanding the structural basis of antibody-antigen interactions is therefore crucial for improving our ability to design efficient biological drugs. Computational approaches such as molecular docking are providing a valuable and fast alternative to experimental structural characterization for these complexes. We investigate here how information about complementarity-determining regions and binding epitopes can be used to drive the modeling process, and present a comparative study of four different docking software suites (ClusPro, LightDock, ZDOCK, and HADDOCK) providing specific options for antibody-antigen modeling. Their performance on a dataset of 16 complexes is reported. HADDOCK, which includes information to drive the docking, is shown to perform best in terms of both success rate and quality of the generated models in both the presence and absence of information about the epitope on the antigen.

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