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结合抗体计算设计的原则。

Principles for computational design of binding antibodies.

机构信息

Department of Biomolecular Sciences, Weizmann Institute of Science, Rehovot 76100, Israel.

The Israeli Structural Proteomics Center, Weizmann Institute of Science, Rehovot 76100, Israel.

出版信息

Proc Natl Acad Sci U S A. 2017 Oct 10;114(41):10900-10905. doi: 10.1073/pnas.1707171114. Epub 2017 Sep 25.

DOI:10.1073/pnas.1707171114
PMID:28973872
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC5642698/
Abstract

Natural proteins must both fold into a stable conformation and exert their molecular function. To date, computational design has successfully produced stable and atomically accurate proteins by using so-called "ideal" folds rich in regular secondary structures and almost devoid of loops and destabilizing elements, such as cavities. Molecular function, such as binding and catalysis, however, often demands nonideal features, including large and irregular loops and buried polar interaction networks, which have remained challenging for fold design. Through five design/experiment cycles, we learned principles for designing stable and functional antibody variable fragments (Fvs). Specifically, we () used sequence-design constraints derived from antibody multiple-sequence alignments, and () during backbone design, maintained stabilizing interactions observed in natural antibodies between the framework and loops of complementarity-determining regions (CDRs) 1 and 2. Designed Fvs bound their ligands with midnanomolar affinities and were as stable as natural antibodies, despite having >30 mutations from mammalian antibody germlines. Furthermore, crystallographic analysis demonstrated atomic accuracy throughout the framework and in four of six CDRs in one design and atomic accuracy in the entire Fv in another. The principles we learned are general, and can be implemented to design other nonideal folds, generating stable, specific, and precise antibodies and enzymes.

摘要

天然蛋白质必须既能折叠成稳定的构象,又能发挥其分子功能。迄今为止,通过使用富含规则二级结构且几乎不含环和不稳定元件(如空腔)的所谓“理想”折叠,计算设计已成功生产出稳定且原子精确的蛋白质。然而,结合和催化等分子功能通常需要非理想特征,包括大的和不规则的环以及埋藏的极性相互作用网络,这对折叠设计来说仍然具有挑战性。通过五个设计/实验循环,我们了解了设计稳定和功能性抗体可变片段(Fv)的原则。具体来说,我们()使用源自抗体多序列比对的序列设计约束,并且()在骨架设计期间,在框架和互补决定区(CDR)1 和 2 的环之间保持了天然抗体中观察到的稳定相互作用。设计的 Fv 以中纳摩尔亲和力与其配体结合,并且与天然抗体一样稳定,尽管与哺乳动物抗体胚系相比有超过 30 个突变。此外,晶体学分析表明,在一个设计的整个框架和六个 CDR 中的四个中以及在另一个设计的整个 Fv 中具有原子精度。我们所学到的原则是通用的,可以用来设计其他非理想的折叠,产生稳定、特异和精确的抗体和酶。

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本文引用的文献

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Biophysical properties of the clinical-stage antibody landscape.临床阶段抗体格局的生物物理特性。
Proc Natl Acad Sci U S A. 2017 Jan 31;114(5):944-949. doi: 10.1073/pnas.1616408114. Epub 2017 Jan 17.
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One-step design of a stable variant of the malaria invasion protein RH5 for use as a vaccine immunogen.一步设计疟原虫入侵蛋白 RH5 的稳定变体,用作疫苗免疫原。
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De novo design of protein homo-oligomers with modular hydrogen-bond network-mediated specificity.通过模块化氢键网络介导的特异性对蛋白质同源寡聚体进行从头设计。
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