AffinityFlow: Guided Flows for Antibody Affinity Maturation
Abstract
Antibodies are widely used as therapeutics, but their development requires costly affinity maturation, involving iterative mutations to enhance binding affinity.This paper explores a sequence-only scenario for affinity maturation, using solely antibody and antigen sequences. Recently AlphaFlow wraps AlphaFold within flow matching to generate diverse protein structures, enabling a sequence-conditioned generative model of structure. Building on this, we propose an alternating optimization framework that (1) fixes the sequence to guide structure generation toward high binding affinity using a structure-based affinity predictor, then (2) applies inverse folding to create sequence mutations, refined by a sequence-based affinity predictor for post selection. A key challenge is the lack of labeled data for training both predictors. To address this, we develop a co-teaching module that incorporates valuable information from noisy biophysical energies into predictor refinement. The sequence-based predictor selects consensus samples to teach the structure-based predictor, and vice versa. Our method, AffinityFlow, achieves state-of-the-art performance in affinity maturation experiments. We plan to open-source our code after acceptance.
Keywords
Cite
@article{arxiv.2502.10365,
title = {AffinityFlow: Guided Flows for Antibody Affinity Maturation},
author = {Can Chen and Karla-Luise Herpoldt and Chenchao Zhao and Zichen Wang and Marcus Collins and Shang Shang and Ron Benson},
journal= {arXiv preprint arXiv:2502.10365},
year = {2025}
}
Comments
14 pages, 5 figures