Machine Learning Guided Rational Design of a Non-Heme Iron-Based Lysine Dioxygenase Improves its Total Turnover Number

IF 2.8 4区 生物学 Q3 BIOCHEMISTRY & MOLECULAR BIOLOGY ChemBioChem Pub Date : 2024-10-06 DOI:10.1002/cbic.202400495
R. Hunter Wilson, Daniel J. Diaz, Anoop R. Damodaran, Ambika Bhagi-Damodaran
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Abstract

Highly selective C−H functionalization remains an ongoing challenge in organic synthetic methodologies. Biocatalysts are robust tools for achieving these difficult chemical transformations. Biocatalyst engineering has often required directed evolution or structure-based rational design campaigns to improve their activities. In recent years, machine learning has been integrated into these workflows to improve the discovery of beneficial enzyme variants. In this work, we combine a structure-based self-supervised machine learning framework, MutComputeX, with classical molecular dynamics simulations to down select mutations for rational design of a non-heme iron-dependent lysine dioxygenase, LDO. This approach consistently resulted in functional LDO mutants and circumvents the need for extensive study of mutational activity before-hand. Our rationally designed single mutants purified with up to 2-fold higher expression yields than WT and displayed higher total turnover numbers (TTN). Combining five such single mutations into a pentamutant variant, LPNYI LDO, leads to a 40 % improvement in the TTN (218±3) as compared to WT LDO (TTN=160±2). Overall, this work offers a low-barrier approach for those seeking to synergize machine learning algorithms with pre-existing protein engineering strategies.

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机器学习指导下的非血红素铁基赖氨酸二氧化酶合理设计提高了其总周转次数。
高选择性 C-H 功能化仍然是有机合成方法中的一项持续挑战。生物催化剂是实现这些困难化学转化的有力工具。生物催化剂工程通常需要通过定向进化或基于结构的合理设计来提高其活性。近年来,机器学习已被整合到这些工作流程中,以改进有益酶变体的发现。在这项工作中,我们将基于结构的机器学习算法与经典的分子动力学模拟相结合,向下选择突变来合理设计非血红素铁依赖性赖氨酸二加氧酶 LDO。这种方法能持续产生功能性 LDO 突变体,并避免了事先对突变活性进行广泛研究的需要。我们合理设计的单一突变体的纯化率比 WT 高出 2 倍,并显示出更高的总周转次数(TTN)。与 WT LDO(TTN = 160±2)相比,将五个这样的单突变体组合成一个五突变体变体 LPNYI LDO,可使 TTN(218±3)提高 40%。总之,这项工作为那些寻求将机器学习算法与现有蛋白质工程策略协同作用的人提供了一种低门槛方法。
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来源期刊
ChemBioChem
ChemBioChem 生物-生化与分子生物学
CiteScore
6.10
自引率
3.10%
发文量
407
审稿时长
1 months
期刊介绍: ChemBioChem (Impact Factor 2018: 2.641) publishes important breakthroughs across all areas at the interface of chemistry and biology, including the fields of chemical biology, bioorganic chemistry, bioinorganic chemistry, synthetic biology, biocatalysis, bionanotechnology, and biomaterials. It is published on behalf of Chemistry Europe, an association of 16 European chemical societies, and supported by the Asian Chemical Editorial Society (ACES).
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