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Pro-PRIME: A general Temperature-Guided Language model to engineer enhanced Stability and Activity in Proteins

Authors :
Jiang, Fan
Li, Mingchen
Dong, Jiajun
Yu, Yuanxi
Sun, Xinyu
Wu, Banghao
Huang, Jin
Kang, Liqi
Pei, Yufeng
Zhang, Liang
Wang, Shaojie
Xu, Wenxue
Xin, Jingyao
Ouyang, Wanli
Fan, Guisheng
Zheng, Lirong
Tan, Yang
Hu, Zhiqiang
Xiong, Yi
Feng, Yan
Yang, Guangyu
Liu, Qian
Song, Jie
Liu, Jia
Hong, Liang
Tan, Pan
Publication Year :
2023

Abstract

Designing protein mutants of both high stability and activity is a critical yet challenging task in protein engineering. Here, we introduce PRIME, a deep learning model, which can suggest protein mutants of improved stability and activity without any prior experimental mutagenesis data of the specified protein. Leveraging temperature-aware language modeling, PRIME demonstrated superior predictive power compared to current state-of-the-art models on the public mutagenesis dataset over 283 protein assays. Furthermore, we validated PRIME's predictions on five proteins, examining the top 30-45 single-site mutations' impact on various protein properties, including thermal stability, antigen-antibody binding affinity, and the ability to polymerize non-natural nucleic acid or resilience to extreme alkaline conditions. Remarkably, over 30% of the AI-recommended mutants exhibited superior performance compared to their pre-mutation counterparts across all proteins and desired properties. Moreover, we have developed an efficient, and successful method based on PRIME to rapidly obtain multi-site mutants with enhanced activity and stability. Hence, PRIME demonstrates the general applicability in protein engineering.<br />Comment: arXiv admin note: text overlap with arXiv:2304.03780

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2307.12682
Document Type :
Working Paper