Sebastian Swanson, Venkatesh Sivaraman, Gevorg Grigoryan, Amy E Keating
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We found that TERM-based seeds can describe known binding structures with high resolution: the vast majority of peptide binders from 486 peptide-protein complexes can be covered by seeds generated from single-chain structures. Furthermore, we demonstrate that known peptide structures can be reconstructed with high accuracy from peptide-covering seeds. As a proof of concept, we used our method to design 100 peptide binders of TRAF6, seven of which were predicted by Rosetta to form higher-quality interfaces than a native binder. The designed peptides interact with distinct sites on TRAF6, including the native peptide-binding site. These results demonstrate that known peptide-binding structures can be constructed from TERMs in single-chain structures and suggest that TERM information can be applied to efficiently design novel target-complementing binders.</p>","PeriodicalId":42121,"journal":{"name":"Revolutionary Russia","volume":"32 1","pages":"e4322"},"PeriodicalIF":0.2000,"publicationDate":"2022-06-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9088223/pdf/","citationCount":"0","resultStr":"{\"title\":\"Tertiary motifs as building blocks for the design of protein-binding peptides.\",\"authors\":\"Sebastian Swanson, Venkatesh Sivaraman, Gevorg Grigoryan, Amy E Keating\",\"doi\":\"10.1002/pro.4322\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><p>Despite advances in protein engineering, the de novo design of small proteins or peptides that bind to a desired target remains a difficult task. Most computational methods search for binder structures in a library of candidate scaffolds, which can lead to designs with poor target complementarity and low success rates. Instead of choosing from pre-defined scaffolds, we propose that custom peptide structures can be constructed to complement a target surface. Our method mines tertiary motifs (TERMs) from known structures to identify surface-complementing fragments or \\\"seeds.\\\" We combine seeds that satisfy geometric overlap criteria to generate peptide backbones and score the backbones to identify the most likely binding structures. We found that TERM-based seeds can describe known binding structures with high resolution: the vast majority of peptide binders from 486 peptide-protein complexes can be covered by seeds generated from single-chain structures. Furthermore, we demonstrate that known peptide structures can be reconstructed with high accuracy from peptide-covering seeds. As a proof of concept, we used our method to design 100 peptide binders of TRAF6, seven of which were predicted by Rosetta to form higher-quality interfaces than a native binder. The designed peptides interact with distinct sites on TRAF6, including the native peptide-binding site. 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引用次数: 0
摘要
尽管蛋白质工程技术不断进步,但从头设计能与所需靶点结合的小分子蛋白质或肽仍然是一项艰巨的任务。大多数计算方法都是在候选支架库中搜索结合体结构,这可能导致设计的目标互补性差、成功率低。我们建议,与其从预定义的支架中进行选择,不如构建定制的多肽结构来补充靶标表面。我们的方法从已知结构中挖掘三级主题(TERM),以识别表面互补片段或 "种子"。我们将符合几何重叠标准的种子结合起来,生成肽骨架,并对骨架进行评分,以确定最有可能的结合结构。我们发现,基于 TERM 的种子能以高分辨率描述已知的结合结构:单链结构生成的种子能覆盖 486 个肽-蛋白质复合物中的绝大多数肽结合体。此外,我们还证明了已知的肽结构可以通过肽覆盖种子高精度地重建。作为概念验证,我们用我们的方法设计了 100 个 TRAF6 的多肽结合体,其中 7 个被 Rosetta 预测为能形成比原生结合体更高质量的界面。设计的多肽与 TRAF6 上的不同位点相互作用,包括本机多肽结合位点。这些结果表明,已知的多肽结合结构可以通过单链结构中的 TERMs 构建,并表明 TERM 信息可用于有效设计新型目标互补结合体。
Tertiary motifs as building blocks for the design of protein-binding peptides.
Despite advances in protein engineering, the de novo design of small proteins or peptides that bind to a desired target remains a difficult task. Most computational methods search for binder structures in a library of candidate scaffolds, which can lead to designs with poor target complementarity and low success rates. Instead of choosing from pre-defined scaffolds, we propose that custom peptide structures can be constructed to complement a target surface. Our method mines tertiary motifs (TERMs) from known structures to identify surface-complementing fragments or "seeds." We combine seeds that satisfy geometric overlap criteria to generate peptide backbones and score the backbones to identify the most likely binding structures. We found that TERM-based seeds can describe known binding structures with high resolution: the vast majority of peptide binders from 486 peptide-protein complexes can be covered by seeds generated from single-chain structures. Furthermore, we demonstrate that known peptide structures can be reconstructed with high accuracy from peptide-covering seeds. As a proof of concept, we used our method to design 100 peptide binders of TRAF6, seven of which were predicted by Rosetta to form higher-quality interfaces than a native binder. The designed peptides interact with distinct sites on TRAF6, including the native peptide-binding site. These results demonstrate that known peptide-binding structures can be constructed from TERMs in single-chain structures and suggest that TERM information can be applied to efficiently design novel target-complementing binders.