AntBO: Towards Real-World Automated Antibody Design with Combinatorial Bayesian Optimisation
Asif Khan, Alexander I. Cowen-Rivers, Antoine Grosnit, Derrick-Goh-Xin, Deik, Philippe A. Robert, Victor Greiff, Eva Smorodina, Puneet Rawat, Kamil, Dreczkowski, Rahmad Akbar, Rasul Tutunov, Dany Bou-Ammar, Jun Wang, Amos, Storkey, Haitham Bou-Ammar

TL;DR
AntBO is a Bayesian optimisation framework that efficiently designs antibody CDRH3 regions with high specificity and developability, outperforming existing methods in in silico tests with minimal evaluations.
Contribution
The paper introduces AntBO, a novel combinatorial Bayesian optimisation method for antibody CDRH3 design, incorporating a trust region for developability, and demonstrates its effectiveness over existing approaches.
Findings
AntBO outperforms baseline methods in designing high-affinity antibodies.
It requires fewer than 200 oracle calls to find optimal sequences.
AntBO finds high-affinity sequences in only 38 designs without domain knowledge.
Abstract
Antibodies are canonically Y-shaped multimeric proteins capable of highly specific molecular recognition. The CDRH3 region located at the tip of variable chains of an antibody dominates antigen-binding specificity. Therefore, it is a priority to design optimal antigen-specific CDRH3 regions to develop therapeutic antibodies. However, the combinatorial nature of CDRH3 sequence space makes it impossible to search for an optimal binding sequence exhaustively and efficiently using computational approaches. Here, we present \texttt{AntBO}: a combinatorial Bayesian optimisation framework enabling efficient \textit{in silico} design of the CDRH3 region. Ideally, antibodies are expected to have high target specificity and developability. We introduce a CDRH3 trust region that restricts the search to sequences with favourable developability scores to achieve this goal. For benchmarking,…
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