PackPPI: An integrated framework for protein-protein complex side-chain packing and ΔΔG prediction based on diffusion model.

IF 4.5 3区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY
Protein Science Pub Date : 2025-05-01 DOI:10.1002/pro.70110
Jingkai Zhang, Yuanyan Xiong
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引用次数: 0

Abstract

Deep learning methods have played an increasingly pivotal role in advancing side-chain packing and mutation effect prediction (ΔΔG) for protein complexes. Although these two tasks are inherently closely related, they are typically treated separately in practice. Furthermore, the lack of effective post-processing in most approaches results in sub-optimal refinement of generated conformations, limiting the plausibility of the predicted conformations. In this study, we introduce an integrated framework, PackPPI, which employs a diffusion model and a proximal optimization algorithm to improve side-chain prediction for protein complexes while using learned representations to predict ΔΔG. The results demonstrate that PackPPI achieved the lowest atom RMSD (0.9822) on the CASP15 dataset. The proximal optimization algorithm effectively reduces spatial clashes between side-chain atoms while maintaining a low-energy landscape. Furthermore, PackPPI achieves state-of-the-art performance in predicting binding affinity changes induced by multi-point mutations on the SKEMPI v2.0 dataset. These findings underscore the potential of PackPPI as a robust and versatile computational tool for protein design and engineering. The implementation of PackPPI is available at https://github.com/Jackz915/PackPPI.

PackPPI:基于扩散模型的蛋白质复合物侧链包装和ΔΔG预测的集成框架。
深度学习方法在推进蛋白质复合物侧链包装和突变效应预测(ΔΔG)方面发挥着越来越重要的作用。虽然这两项任务本质上是密切相关的,但在实践中通常是分开处理的。此外,在大多数方法中缺乏有效的后处理导致生成的构象的次优细化,限制了预测构象的合理性。在本研究中,我们引入了一个集成框架PackPPI,它采用扩散模型和近端优化算法来改进蛋白质复合物的侧链预测,同时使用学习表征来预测ΔΔG。结果表明,PackPPI在CASP15数据集上的原子RMSD最低(0.9822)。近端优化算法有效地减少了侧链原子之间的空间冲突,同时保持了低能景观。此外,PackPPI在SKEMPI v2.0数据集上预测由多点突变引起的结合亲和力变化方面达到了最先进的性能。这些发现强调了PackPPI作为蛋白质设计和工程的强大和通用计算工具的潜力。PackPPI的实现可以在https://github.com/Jackz915/PackPPI上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Protein Science
Protein Science 生物-生化与分子生物学
CiteScore
12.40
自引率
1.20%
发文量
246
审稿时长
1 months
期刊介绍: Protein Science, the flagship journal of The Protein Society, is a publication that focuses on advancing fundamental knowledge in the field of protein molecules. The journal welcomes original reports and review articles that contribute to our understanding of protein function, structure, folding, design, and evolution. Additionally, Protein Science encourages papers that explore the applications of protein science in various areas such as therapeutics, protein-based biomaterials, bionanotechnology, synthetic biology, and bioelectronics. The journal accepts manuscript submissions in any suitable format for review, with the requirement of converting the manuscript to journal-style format only upon acceptance for publication. Protein Science is indexed and abstracted in numerous databases, including the Agricultural & Environmental Science Database (ProQuest), Biological Science Database (ProQuest), CAS: Chemical Abstracts Service (ACS), Embase (Elsevier), Health & Medical Collection (ProQuest), Health Research Premium Collection (ProQuest), Materials Science & Engineering Database (ProQuest), MEDLINE/PubMed (NLM), Natural Science Collection (ProQuest), and SciTech Premium Collection (ProQuest).
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