AI-enabled Alkaline-resistant Evolution of Protein to Apply in Mass Production

Liqi Kang, Banghao Wu, Bingxin Zhou, Pan Tan, Yun (Kenneth) Kang, Yongzhen Yan, Yi Zong, Shuang Li, Zhuo Liu, Liang Hong
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Abstract

Artificial intelligence (AI) models have been used to study the compositional regularities of proteins in nature, enabling it to assist in protein design to improve the efficiency of protein engineering and reduce manufacturing cost. However, in industrial settings, proteins are often required to work in extreme environments where they are relatively scarce or even non-existent in nature. Since such proteins are almost absent in the training datasets, it is uncertain whether AI model possesses the capability of evolving the protein to adapt extreme conditions. Antibodies are crucial components of affinity chromatography, and they are hoped to remain active at the extreme environments where most proteins cannot tolerate. In this study, we applied an advanced large language model (LLM), the Pro-PRIME model, to improve the alkali resistance of a representative antibody, a VHH antibody capable of binding to growth hormone. Through two rounds of design, we ensured that the selected mutant has enhanced functionality, including higher thermal stability, extreme pH resistance and stronger affinity, thereby validating the generalized capability of the LLM in meeting specific demands. To the best of our knowledge, this is the first LLM-designed protein product, which is successfully applied in mass production.
人工智能驱动蛋白质耐碱性进化并应用于大规模生产
人工智能(AI)模型已被用于研究自然界中蛋白质的组成规律,使其能够辅助蛋白质设计,从而提高蛋白质工程的效率并降低制造成本。然而,在工业环境中,蛋白质往往需要在极端环境中工作,而自然界中的蛋白质相对稀缺,甚至根本不存在。由于训练数据集中几乎不存在此类蛋白质,因此人工智能模型是否具备进化蛋白质以适应极端条件的能力尚不确定。抗体是亲和层析的重要组成部分,人们希望它们能在大多数蛋白质无法忍受的极端环境中保持活性。在这项研究中,我们应用了一种先进的大语言模型(LLM)--Pro-PRIME 模型--来提高具有代表性的抗体(一种能与生长激素结合的 VHH 抗体)的耐碱性。通过两轮设计,我们确保了所选突变体具有更强的功能性,包括更高的热稳定性、极强的耐碱性和更强的亲和力,从而验证了 LLM 在满足特定需求方面的通用能力。据我们所知,这是首个由 LLM 设计并成功应用于大规模生产的蛋白质产品。
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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