English

Guided Generation for Developable Antibodies

Machine Learning 2025-07-04 v1 Biomolecules

Abstract

Therapeutic antibodies require not only high-affinity target engagement, but also favorable manufacturability, stability, and safety profiles for clinical effectiveness. These properties are collectively called `developability'. To enable a computational framework for optimizing antibody sequences for favorable developability, we introduce a guided discrete diffusion model trained on natural paired heavy- and light-chain sequences from the Observed Antibody Space (OAS) and quantitative developability measurements for 246 clinical-stage antibodies. To steer generation toward biophysically viable candidates, we integrate a Soft Value-based Decoding in Diffusion (SVDD) Module that biases sampling without compromising naturalness. In unconstrained sampling, our model reproduces global features of both the natural repertoire and approved therapeutics, and under SVDD guidance we achieve significant enrichment in predicted developability scores over unguided baselines. When combined with high-throughput developability assays, this framework enables an iterative, ML-driven pipeline for designing antibodies that satisfy binding and biophysical criteria in tandem.

Keywords

Cite

@article{arxiv.2507.02670,
  title  = {Guided Generation for Developable Antibodies},
  author = {Siqi Zhao and Joshua Moller and Porfi Quintero-Cadena and Lood van Niekerk},
  journal= {arXiv preprint arXiv:2507.02670},
  year   = {2025}
}

Comments

Published in ICML 2025 GenBio Workshop

R2 v1 2026-07-01T03:45:00.721Z