2024
DOI: 10.1101/2024.11.03.621763
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Antibody Library Design by Seeding Linear Programming with Inverse Folding and Protein Language Models

Conor F. Hayes,
Steven A. Magana-Zook,
Andre Gonçalves
et al.

Abstract: We propose a novel approach for antibody library design that combines deep learning and multi-objective linear programming with diversity constraints. Our method leverages recent advances in sequence and structure-based deep learning for protein engineering to predict the effects of mutations on antibody properties. These predictions are then used to seed a cascade of constrained integer linear programming problems, the solutions of which yield a diverse and high-performing antibody library. Operating in a col… Show more

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