Challenges and Guidelines in Deep Generative Protein Design: Four Case Studies
Abstract
Deep generative models show promise for protein design, yet reliably producing designs that are geometrically plausible, evolutionarily consistent, functionally relevant, and dynamically stable remains challenging. We present a deep generative modeling pipeline for early design of monomeric proteins, based on Score Matching and Flow Matching. We apply this pipeline to four diverse protein families with an adaptable evaluation protocol. Generated structures display realistic, clash-free conformations enriched with family-specific features, while the designed sequences preserve essential functional residues while retaining variability. Molecular dynamics and binding simulations show dynamic stability, with wild-type-like binding pockets that interact favorably with family-specific ligands. These results provide practical guidelines for integrating generative models into protein design workflows.
Cite
@article{arxiv.2411.18568,
title = {Challenges and Guidelines in Deep Generative Protein Design: Four Case Studies},
author = {Tianyuan Zheng and Alessandro Rondina and Gos Micklem and Pietro Liò},
journal= {arXiv preprint arXiv:2411.18568},
year = {2025}
}
Comments
Proceedings of the ICML 2025 Workshop on Multi-modal Foundation Models and Large Language Models for Life Sciences, Vancouver, Canada. 2025. Copyright 2025 by the author(s)