What Have We Learned from Design of Function in Large Proteins?

Q2 Agricultural and Biological Sciences
生物设计研究(英文) Pub Date : 2022-03-08 eCollection Date: 2022-01-01 DOI:10.34133/2022/9787581
Olga Khersonsky, Sarel J Fleishman
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引用次数: 4

Abstract

The overarching goal of computational protein design is to gain complete control over protein structure and function. The majority of sophisticated binders and enzymes, however, are large and exhibit diverse and complex folds that defy atomistic design calculations. Encouragingly, recent strategies that combine evolutionary constraints from natural homologs with atomistic calculations have significantly improved design accuracy. In these approaches, evolutionary constraints mitigate the risk from misfolding and aggregation, focusing atomistic design calculations on a small but highly enriched sequence subspace. Such methods have dramatically optimized diverse proteins, including vaccine immunogens, enzymes for sustainable chemistry, and proteins with therapeutic potential. The new generation of deep learning-based ab initio structure predictors can be combined with these methods to extend the scope of protein design, in principle, to any natural protein of known sequence. We envision that protein engineering will come to rely on completely computational methods to efficiently discover and optimize biomolecular activities.

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我们从大蛋白质的功能设计中学到了什么?
计算蛋白质设计的首要目标是获得对蛋白质结构和功能的完全控制。然而,大多数复杂的粘合剂和酶都很大,并且表现出多样化和复杂的折叠,这与原子设计计算背道而驰。令人鼓舞的是,最近的策略将自然同源物的进化约束与原子计算相结合,显著提高了设计精度。在这些方法中,进化约束减轻了错误折叠和聚合的风险,将原子设计计算集中在小但高度丰富的序列子空间上。这些方法极大地优化了各种蛋白质,包括疫苗免疫原、用于可持续化学的酶以及具有治疗潜力的蛋白质。新一代基于深度学习的从头计算结构预测因子可以与这些方法相结合,原则上将蛋白质设计的范围扩展到任何已知序列的天然蛋白质。我们设想蛋白质工程将完全依赖于计算方法来有效地发现和优化生物分子活性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.90
自引率
0.00%
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0
审稿时长
12 weeks
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