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Main Authors: Ling, Zinan, Shi, Yi, McKinney, Brett, Yan, Da, Zhou, Yang, Hui, Bo
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.18603
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author Ling, Zinan
Shi, Yi
McKinney, Brett
Yan, Da
Zhou, Yang
Hui, Bo
author_facet Ling, Zinan
Shi, Yi
McKinney, Brett
Yan, Da
Zhou, Yang
Hui, Bo
contents Generating novel and functional protein sequences is critical to a wide range of applications in biology. Recent advancements in conditional diffusion models have shown impressive empirical performance in protein generation tasks. However, reliable generations of protein remain an open research question in de novo protein design, especially when it comes to conditional diffusion models. Considering the biological function of a protein is determined by multi-level structures, we propose a novel multi-level conditional diffusion model that integrates both sequence-based and structure-based information for efficient end-to-end protein design guided by specified functions. By generating representations at different levels simultaneously, our framework can effectively model the inherent hierarchical relations between different levels, resulting in an informative and discriminative representation of the generated protein. We also propose a Protein-MMD, a new reliable evaluation metric, to evaluate the quality of generated protein with conditional diffusion models. Our new metric is able to capture both distributional and functional similarities between real and generated protein sequences while ensuring conditional consistency. We experiment with the benchmark datasets, and the results on conditional protein generation tasks demonstrate the efficacy of the proposed generation framework and evaluation metric.
format Preprint
id arxiv_https___arxiv_org_abs_2507_18603
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Demystify Protein Generation with Hierarchical Conditional Diffusion Models
Ling, Zinan
Shi, Yi
McKinney, Brett
Yan, Da
Zhou, Yang
Hui, Bo
Machine Learning
Generating novel and functional protein sequences is critical to a wide range of applications in biology. Recent advancements in conditional diffusion models have shown impressive empirical performance in protein generation tasks. However, reliable generations of protein remain an open research question in de novo protein design, especially when it comes to conditional diffusion models. Considering the biological function of a protein is determined by multi-level structures, we propose a novel multi-level conditional diffusion model that integrates both sequence-based and structure-based information for efficient end-to-end protein design guided by specified functions. By generating representations at different levels simultaneously, our framework can effectively model the inherent hierarchical relations between different levels, resulting in an informative and discriminative representation of the generated protein. We also propose a Protein-MMD, a new reliable evaluation metric, to evaluate the quality of generated protein with conditional diffusion models. Our new metric is able to capture both distributional and functional similarities between real and generated protein sequences while ensuring conditional consistency. We experiment with the benchmark datasets, and the results on conditional protein generation tasks demonstrate the efficacy of the proposed generation framework and evaluation metric.
title Demystify Protein Generation with Hierarchical Conditional Diffusion Models
topic Machine Learning
url https://arxiv.org/abs/2507.18603