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In silico proof of principle of machine learning-based antibody design at unconstrained scale

View ORCID ProfileRahmad Akbar, View ORCID ProfilePhilippe A. Robert, View ORCID ProfileCédric R. Weber, View ORCID ProfileMichael Widrich, View ORCID ProfileRobert Frank, View ORCID ProfileMilena Pavlović, View ORCID ProfileLonneke Scheffer, View ORCID ProfileMaria Chernigovskaya, View ORCID ProfileIgor Snapkov, View ORCID ProfileAndrei Slabodkin, View ORCID ProfileBrij Bhushan Mehta, View ORCID ProfileEnkelejda Miho, View ORCID ProfileFridtjof Lund-Johansen, View ORCID ProfileJan Terje Andersen, View ORCID ProfileSepp Hochreiter, Ingrid Hobæk Haff, View ORCID ProfileGünter Klambauer, View ORCID ProfileGeir Kjetil Sandve, View ORCID ProfileVictor Greiff
doi: https://doi.org/10.1101/2021.07.08.451480
Rahmad Akbar
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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  • For correspondence: rahmad.akbar@medisin.uio.no victor.greiff@medisin.uio.no
Philippe A. Robert
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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Cédric R. Weber
2Department of Biosystems Science and Engineering, ETH Zürich, Basel, Switzerland
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Michael Widrich
3ELLIS Unit Linz and LIT AI Lab, Institute for Machine Learning, Johannes Kepler University Linz, Linz, Austria
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Robert Frank
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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Milena Pavlović
4Department of Informatics, University of Oslo, Oslo, Norway
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  • ORCID record for Milena Pavlović
Lonneke Scheffer
4Department of Informatics, University of Oslo, Oslo, Norway
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  • ORCID record for Lonneke Scheffer
Maria Chernigovskaya
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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  • ORCID record for Maria Chernigovskaya
Igor Snapkov
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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Andrei Slabodkin
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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  • ORCID record for Andrei Slabodkin
Brij Bhushan Mehta
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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Enkelejda Miho
6Institute of Medical Engineering and Medical Informatics, School of Life Sciences, FHNW University of Applied Sciences and Arts Northwestern Switzerland, Muttenz, Switzerland
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Fridtjof Lund-Johansen
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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Jan Terje Andersen
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
7Institute of Clinical Medicine, Department of Pharmacology, University of Oslo, Oslo, Norway
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Sepp Hochreiter
3ELLIS Unit Linz and LIT AI Lab, Institute for Machine Learning, Johannes Kepler University Linz, Linz, Austria
8Institute of Advanced Research in Artificial Intelligence (IARAI), Vienna, Austria
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Ingrid Hobæk Haff
5Department of Mathematics, University of Oslo, Oslo, Norway
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Günter Klambauer
3ELLIS Unit Linz and LIT AI Lab, Institute for Machine Learning, Johannes Kepler University Linz, Linz, Austria
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Geir Kjetil Sandve
4Department of Informatics, University of Oslo, Oslo, Norway
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Victor Greiff
1Department of Immunology, Oslo University Hospital Rikshospitalet and University of Oslo, Norway
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  • ORCID record for Victor Greiff
  • For correspondence: rahmad.akbar@medisin.uio.no victor.greiff@medisin.uio.no
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Abstract

Generative machine learning (ML) has been postulated to be a major driver in the computational design of antigen-specific monoclonal antibodies (mAb). However, efforts to confirm this hypothesis have been hindered by the infeasibility of testing arbitrarily large numbers of antibody sequences for their most critical design parameters: paratope, epitope, affinity, and developability. To address this challenge, we leveraged a lattice-based antibody-antigen binding simulation framework, which incorporates a wide range of physiological antibody binding parameters. The simulation framework enables both the computation of antibody-antigen 3D-structures as well as functions as an oracle for unrestricted prospective evaluation of the antigen specificity of ML-generated antibody sequences. We found that a deep generative model, trained exclusively on antibody sequence (1D) data can be used to design native-like conformational (3D) epitope-specific antibodies, matching or exceeding the training dataset in affinity and developability variety. Furthermore, we show that transfer learning enables the generation of high-affinity antibody sequences from low-N training data. Finally, we validated that the antibody design insight gained from simulated antibody-antigen binding data is applicable to experimental real-world data. Our work establishes a priori feasibility and the theoretical foundation of high-throughput ML-based mAb design.

Highlights

  • A large-scale dataset of 70M [3 orders of magnitude larger than the current state of the art] synthetic antibody-antigen complexes, that reflect biological complexity, allows the prospective evaluation of antibody generative deep learning

  • Combination of generative learning, synthetic antibody-antigen binding data, and prospective evaluation shows that deep learning driven antibody design and discovery at an unconstrained level is feasible

  • Transfer learning (low-N learning) coupled to generative learning shows that antibody-binding rules may be transferred across unrelated antibody-antigen complexes

  • Experimental validation of antibody-design conclusions drawn from deep learning on synthetic antibody-antigen binding data

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We leverage large synthetic ground-truth data to demonstrate the (A,B) unconstrained deep generative learning-based generation of native-like antibody sequences, (C) the prospective evaluation of conformational (3D) affinity, paratope-epitope pairs, and developability. (D) Finally, we show increased generation quality of low-N-based machine learning models via transfer learning.

Competing Interest Statement

E.M. declares holding shares in aiNET GmbH. V.G. declares advisory board positions in aiNET GmbH and Enpicom B.V. VG is a consultant for Roche/Genentech.

Copyright 
The copyright holder for this preprint is the author/funder, who has granted bioRxiv a license to display the preprint in perpetuity. It is made available under a CC-BY-NC-ND 4.0 International license.
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Posted July 09, 2021.
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In silico proof of principle of machine learning-based antibody design at unconstrained scale
Rahmad Akbar, Philippe A. Robert, Cédric R. Weber, Michael Widrich, Robert Frank, Milena Pavlović, Lonneke Scheffer, Maria Chernigovskaya, Igor Snapkov, Andrei Slabodkin, Brij Bhushan Mehta, Enkelejda Miho, Fridtjof Lund-Johansen, Jan Terje Andersen, Sepp Hochreiter, Ingrid Hobæk Haff, Günter Klambauer, Geir Kjetil Sandve, Victor Greiff
bioRxiv 2021.07.08.451480; doi: https://doi.org/10.1101/2021.07.08.451480
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In silico proof of principle of machine learning-based antibody design at unconstrained scale
Rahmad Akbar, Philippe A. Robert, Cédric R. Weber, Michael Widrich, Robert Frank, Milena Pavlović, Lonneke Scheffer, Maria Chernigovskaya, Igor Snapkov, Andrei Slabodkin, Brij Bhushan Mehta, Enkelejda Miho, Fridtjof Lund-Johansen, Jan Terje Andersen, Sepp Hochreiter, Ingrid Hobæk Haff, Günter Klambauer, Geir Kjetil Sandve, Victor Greiff
bioRxiv 2021.07.08.451480; doi: https://doi.org/10.1101/2021.07.08.451480

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