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具有原子水平精度的非天然氨基酸依赖性金属蛋白的计算设计。

Computational design of an unnatural amino acid dependent metalloprotein with atomic level accuracy.

作者信息

Mills Jeremy H, Khare Sagar D, Bolduc Jill M, Forouhar Farhad, Mulligan Vikram Khipple, Lew Scott, Seetharaman Jayaraman, Tong Liang, Stoddard Barry L, Baker David

机构信息

Department of Biochemistry and ⊥Biomolecular Structure and Design Program, University of Washington , Seattle, Washington, United States.

出版信息

J Am Chem Soc. 2013 Sep 11;135(36):13393-9. doi: 10.1021/ja403503m. Epub 2013 Aug 29.

Abstract

Genetically encoded unnatural amino acids could facilitate the design of proteins and enzymes of novel function, but correctly specifying sites of incorporation and the identities and orientations of surrounding residues represents a formidable challenge. Computational design methods have been used to identify optimal locations for functional sites in proteins and design the surrounding residues but have not incorporated unnatural amino acids in this process. We extended the Rosetta design methodology to design metalloproteins in which the amino acid (2,2'-bipyridin-5yl)alanine (Bpy-Ala) is a primary ligand of a bound metal ion. Following initial results that indicated the importance of buttressing the Bpy-Ala amino acid, we designed a buried metal binding site with octahedral coordination geometry consisting of Bpy-Ala, two protein-based metal ligands, and two metal-bound water molecules. Experimental characterization revealed a Bpy-Ala-mediated metalloprotein with the ability to bind divalent cations including Co(2+), Zn(2+), Fe(2+), and Ni(2+), with a Kd for Zn(2+) of ∼40 pM. X-ray crystal structures of the designed protein bound to Co(2+) and Ni(2+) have RMSDs to the design model of 0.9 and 1.0 Å respectively over all atoms in the binding site.

摘要

基因编码的非天然氨基酸有助于设计具有新功能的蛋白质和酶,但准确指定掺入位点以及周围残基的身份和取向是一项艰巨的挑战。计算设计方法已被用于确定蛋白质中功能位点的最佳位置并设计周围的残基,但在此过程中尚未纳入非天然氨基酸。我们扩展了Rosetta设计方法,以设计其中氨基酸(2,2'-联吡啶-5基)丙氨酸(Bpy-Ala)是结合金属离子的主要配体的金属蛋白。根据初步结果表明支撑Bpy-Ala氨基酸的重要性,我们设计了一个具有八面体配位几何结构的埋藏金属结合位点,该位点由Bpy-Ala、两个基于蛋白质的金属配体和两个与金属结合的水分子组成。实验表征揭示了一种由Bpy-Ala介导的金属蛋白,它能够结合包括Co(2+)、Zn(2+)、Fe(2+)和Ni(2+)在内的二价阳离子,对Zn(2+)的解离常数Kd约为40 pM。与Co(2+)和Ni(2+)结合的设计蛋白的X射线晶体结构在结合位点的所有原子上与设计模型的均方根偏差(RMSD)分别为0.9 Å和1.0 Å。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/65bc/3863684/ee1d9b581516/nihms-520019-f0001.jpg

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