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Integrative modeling in the age of machine learning: a summary of HADDOCK strategies in CAPRI rounds 47-55
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  • Victor Reys,
  • Marco Giulini,
  • Vlad Cojocaru,
  • Anna Engel,
  • Xiaotong Xu,
  • Jorge Roel,
  • Cunliang Geng,
  • Francesco Ambrosetti,
  • Brian Jimenes-Garcia,
  • Zuzana Jandova,
  • Panagiotis I. Koukos,
  • Charlotte van Noort,
  • João Teixeira,
  • Siri C. van Keulen,
  • Manon Reau,
  • Rodrigo Vargas Honorato,
  • Alexandre M.J.J. Bonvin
Victor Reys
Universiteit Utrecht Departement Scheikunde
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Marco Giulini
Universiteit Utrecht Departement Scheikunde
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Vlad Cojocaru
Universiteit Utrecht Departement Scheikunde
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Anna Engel
Universiteit Utrecht Departement Scheikunde
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Xiaotong Xu
Universiteit Utrecht Departement Scheikunde
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Jorge Roel
Universiteit Utrecht Departement Scheikunde
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Cunliang Geng
Universiteit Utrecht Departement Scheikunde
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Francesco Ambrosetti
Universiteit Utrecht Departement Scheikunde
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Brian Jimenes-Garcia
Universiteit Utrecht Departement Scheikunde
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Zuzana Jandova
Universiteit Utrecht Departement Scheikunde
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Panagiotis I. Koukos
Universiteit Utrecht Departement Scheikunde
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Charlotte van Noort
Universiteit Utrecht Departement Scheikunde
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João Teixeira
Universiteit Utrecht Departement Scheikunde
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Siri C. van Keulen
Universiteit Utrecht Departement Scheikunde
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Manon Reau
Universiteit Utrecht Departement Scheikunde
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Rodrigo Vargas Honorato
Universiteit Utrecht Departement Scheikunde
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Alexandre M.J.J. Bonvin
Universiteit Utrecht Departement Scheikunde

Corresponding Author:[email protected]

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Abstract

The HADDOCK team participated in CAPRI rounds 47-55 as both server, manual predictor, and scorers. Throughout these CAPRI rounds, we used a plethora of computational strategies to predict the structure of protein complexes. Of the 10 targets comprising 24 interfaces, we achieved acceptable or better models for 3 targets in the human category and 1 in the server category. Our performance in the scoring challenge was slightly better, with our simple scoring protocol being the only one capable of identifying an acceptable model for Target 234. This result highlights the robustness of the simple, fully physics-based HADDOCK scoring function, especially when applied to highly flexible antibody-antigen complexes. Inspired by the significant advances in machine learning for structural biology and the dramatic improvement in our success rates after the public release of Alphafold2, we identify the integration of classical approaches like HADDOCK with AI-driven structure prediction methods as a key strategy for improving the accuracy of model generation and scoring.
16 Sep 2024Submitted to PROTEINS: Structure, Function, and Bioinformatics
18 Sep 2024Submission Checks Completed
18 Sep 2024Assigned to Editor
18 Sep 2024Review(s) Completed, Editorial Evaluation Pending
09 Oct 2024Reviewer(s) Assigned