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AlphaFold 根据从头设计的蛋白质的寡聚状态准确预测其独特构象。

AlphaFold accurately predicts distinct conformations based on the oligomeric state of a de novo designed protein.

机构信息

Department of Pharmacology, University of North Carolina School of Medicine, Chapel Hill, North Carolina, USA.

Department of Bioinformatics and Computational Biology, University of North Carolina School of Medicine, Chapel Hill, North Carolina, USA.

出版信息

Protein Sci. 2022 Jul;31(7):e4368. doi: 10.1002/pro.4368.

DOI:10.1002/pro.4368
PMID:35762713
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC9207892/
Abstract

Using the molecular modeling program Rosetta, we designed a de novo protein, called SEWN0.1, which binds the heterotrimeric G protein Gα The design is helical, well-folded, and primarily monomeric in solution at a concentration of 10 μM. However, when we solved the crystal structure of SEWN0.1 at 1.9 Å, we observed a dimer in a conformation incompatible with binding Gα . Unintentionally, we had designed a protein that adopts alternate conformations depending on its oligomeric state. Recently, there has been tremendous progress in the field of protein structure prediction as new methods in artificial intelligence have been used to predict structures with high accuracy. We were curious if the structure prediction method AlphaFold could predict the structure of SEWN0.1 and if the prediction depended on oligomeric state. When AlphaFold was used to predict the structure of monomeric SEWN0.1, it produced a model that resembles the Rosetta design model and is compatible with binding Gα , but when used to predict the structure of a dimer, it predicted a conformation that closely resembles the SEWN0.1 crystal structure. AlphaFold's ability to predict multiple conformations for a single protein sequence should be useful for engineering protein switches.

摘要

利用分子建模程序 Rosetta,我们设计了一种从头开始的蛋白质,称为 SEWN0.1,它可以与三聚体 G 蛋白 Gα结合。该设计是螺旋状的,在 10 μM 的浓度下在溶液中折叠良好,主要是单体。然而,当我们以 1.9Å 的分辨率解析 SEWN0.1 的晶体结构时,我们观察到一个与 Gα结合不兼容的二聚体构象。我们无意中设计了一种蛋白质,它根据其寡聚状态采用不同的构象。最近,由于人工智能中的新方法被用于以高精度预测结构,蛋白质结构预测领域取得了巨大进展。我们很好奇 AlphaFold 结构预测方法是否可以预测 SEWN0.1 的结构,以及预测是否取决于寡聚状态。当 AlphaFold 用于预测单体 SEWN0.1 的结构时,它生成了一个与 Rosetta 设计模型相似且与 Gα结合兼容的模型,但当用于预测二聚体的结构时,它预测了一个与 SEWN0.1 晶体结构非常相似的构象。AlphaFold 为单个蛋白质序列预测多种构象的能力对于工程蛋白开关应该是有用的。