Ouyang Xingyu, Ran Xinchun, Xu Han, Al-Abssi Runeem, Zhao Yi-Lei, Link A James, Yang Zhongyue J
State Key Laboratory of Microbial Metabolism, Joint International Research Laboratory of Metabolic and Developmental Sciences, School of Life Sciences and Biotechnology, Shanghai Jiao Tong University, Shanghai, People's Republic of China.
Department of Chemistry, Vanderbilt University, Nashville, TN, USA.
Nat Commun. 2025 Jul 1;16(1):5497. doi: 10.1038/s41467-025-60544-4.
Lasso peptides (LaPs), characterized by their entangled slipknot-like structures, are a large class of ribosomally synthesized and post-translationally modified peptides (RiPPs), with examples functioning as antibiotics, enzyme inhibitors, and molecular switches. Despite thousands of LaP sequences predicted by bioinformatics, only around 50 distinct LaPs have been structurally characterized in the past 30 years. Existing computational tools, such as AlphaFold2, AlphaFold3 and ESMfold, fail to accurately predict LaP structures due to their irregular scaffold featuring a lariat knot-like fold and the presence of an isopeptide bond. To address this challenge, we developed LassoPred, designed with a classifier to annotate the ring, loop, and tail of an LaP sequence and a constructor to build a 3D structure. Leveraging LassoPred, we predict the 3D structures for 4749 unique LaP core sequences, creating the largest in silico-predicted lasso peptide structure database to date. LassoPred is publicly available through a web interface ( https://lassopred.accre.vanderbilt.edu/ ) and a command-line tool, supporting future structure-function relationship studies and aiding in the discovery of functional lasso peptides for chemical and biomedical applications.
套索肽(LaP)以其纠缠的活结样结构为特征,是一大类核糖体合成和翻译后修饰的肽(RiPP),有作为抗生素、酶抑制剂和分子开关的实例。尽管通过生物信息学预测了数千个LaP序列,但在过去30年中,只有大约50种不同的LaP在结构上得到了表征。现有的计算工具,如AlphaFold2、AlphaFold3和ESMfold,由于其具有套索结样折叠的不规则支架和异肽键的存在,无法准确预测LaP结构。为应对这一挑战,我们开发了LassoPred,它设计了一个分类器来注释LaP序列的环、环和尾,以及一个构建器来构建三维结构。利用LassoPred,我们预测了4749个独特的LaP核心序列的三维结构,创建了迄今为止最大的计算机预测套索肽结构数据库。LassoPred可通过网络界面(https://lassopred.accre.vanderbilt.edu/)和命令行工具公开获取,支持未来的结构-功能关系研究,并有助于发现用于化学和生物医学应用的功能性套索肽。