酰胺酶
合理设计
催化作用
计算机科学
组合化学
化学
计算生物学
人工智能
机器学习
生物化学
生物
遗传学
酶
作者
Zi-Lin Li,Shuxin Pei,Ziying Chen,Teng-Yu Huang,Xudong Wang,Lin Shen,Xuebo Chen,Qi‐Qiang Wang,De‐Xian Wang,Yu‐Fei Ao
标识
DOI:10.1038/s41467-024-53048-0
摘要
Biocatalysis is an attractive approach for the synthesis of chiral pharmaceuticals and fine chemicals, but assessing and/or improving the enantioselectivity of biocatalyst towards target substrates is often time and resource intensive. Although machine learning has been used to reveal the underlying relationship between protein sequences and biocatalytic enantioselectivity, the establishment of substrate fitness space is usually disregarded by chemists and is still a challenge. Using 240 datasets collected in our previous works, we adopt chemistry and geometry descriptors and build random forest classification models for predicting the enantioselectivity of amidase towards new substrates. We further propose a heuristic strategy based on these models, by which the rational protein engineering can be efficiently performed to synthesize chiral compounds with higher ee values, and the optimized variant results in a 53-fold higher E-value comparing to the wild-type amidase. This data-driven methodology is expected to broaden the application of machine learning in biocatalysis research.
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