Computational design of therapeutic antibodies with improved developability: efficient traversal of binder landscapes and rescue of escape mutations

  • Frederic A. Dreyer
  • , Constantin Schneider
  • , Aleksandr Kovaltsuk
  • , Daniel Cutting
  • , Matthew J. Byrne
  • , Daniel A. Nissley
  • , Henry Kenlay
  • , Claire Marks
  • , David Errington
  • , Richard J. Gildea
  • , David Damerell
  • , Pedro Tizei
  • , Wilawan Bunjobpol
  • , John F. Darby
  • , Ieva Drulyte
  • , Daniel L. Hurdiss
  • , Sachin Surade
  • , Newton Wahome
  • , Douglas E. V. Pires
  • , Charlotte M. Deane

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

Developing therapeutic antibodies is a challenging endeavor, often requiring large-scale screening to produce initial binders, that still often require optimization for developability. We present a computational pipeline for the discovery and design of therapeutic antibody candidates, which incorporates physics- and AI-based methods for the generation, assessment, and validation of candidate antibodies with improved developability against diverse epitopes, via efficient few-shot experimental screens. We demonstrate that these orthogonal methods can lead to promising designs. We evaluated our approach by experimentally testing a small number of candidates against multiple SARS-CoV-2 variants in three different tasks: (i) traversing sequence landscapes of binders, we identify highly sequence dissimilar antibodies that retain binding to the Wuhan strain, (ii) rescuing binding from escape mutations, we show up to 54% of designs gain binding affinity to a new subvariant and (iii) improving developability characteristics of antibodies while retaining binding properties. These results together demonstrate an end-to-end antibody design pipeline with applicability across a wide range of antibody design tasks. We experimentally characterized binding against different antigen targets, developability profiles, and cryo-EM structures of designed antibodies. Our work demonstrates how combined AI and physics computational methods improve productivity and viability of antibody designs.
Original languageEnglish
Article number2511220
Pages (from-to)1-18
Number of pages1
JournalmAbs
Volume17
Issue number1
DOIs
Publication statusPublished - 3 Jun 2025

Bibliographical note

Publisher Copyright:
© 2025 The Author(s). Published with license by Taylor & Francis Group, LLC.

Keywords

  • Antibody design
  • Artificial intelligence
  • Immunology
  • Mab
  • Structural biology

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