A roadmap for exploring the untouched protein space for biology and medicine

hLife Pub Date : 2023-12-01 DOI:10.1016/j.hlife.2023.06.001
Jun Wang
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Abstract

Proteins are the major carriers of biological processes and extant proteome contains tremendous diversity. However, the theoretical diversity of proteins greatly outnumbered the currently known, largely due to evolutionary constraints. Here, we propose that untouched protein space, either extant yet with unknown function, or unnatural proteins could have many proteins of desired functions, and outlined a roadmap for exploring such protein space with artificial intelligence. Particularly with the methods developed in natural language processing (NLP), we can first identify a large number of functional proteins and peptides encrypted in biological big data, for instance microbiome and virome data. Secondly, larger scale mutations and directed evolution can be carried out and facilitated by NLP, to achieve improved function based on known proteins. Lastly, sampling random sequences and applying NLP might reveal the more complete landscape of protein functions and enable de novo protein design.

探索生物学和医学未触及的蛋白质空间的路线图
蛋白质是生物过程的主要载体,现存的蛋白质组包含巨大的多样性。然而,主要由于进化的限制,蛋白质的理论多样性大大超过了目前已知的多样性。在此,我们提出,未触及的蛋白质空间,无论是现存但功能未知的蛋白质,还是非天然蛋白质,都可能有许多具有所需功能的蛋白质,并勾勒出了用人工智能探索此类蛋白质空间的路线图。特别是利用自然语言处理(NLP)中开发的方法,我们首先可以识别大量加密在生物大数据(如微生物组和病毒组数据)中的功能蛋白质和多肽。其次,在 NLP 的推动下,可以进行更大规模的突变和定向进化,从而在已知蛋白质的基础上实现功能改进。最后,随机序列采样和 NLP 的应用可能会揭示蛋白质功能的更完整面貌,从而实现蛋白质的全新设计。
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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