生物信息学
生物催化
计算生物学
合理设计
蛋白质工程
定向进化
蛋白质设计
功能(生物学)
组合化学
药物发现
生物化学
化学
酶
生物
计算机科学
突变体
生物信息学
蛋白质结构
遗传学
催化作用
基因
离子液体
作者
Matthias Höhne,Sebastian Schätzle,Helge Jochens,Karen Robins,Uwe T. Bornscheuer
摘要
Biocatalysis has emerged as a powerful alternative to traditional chemistry, especially for asymmetric synthesis. One key requirement during process development is the discovery of a biocatalyst with an appropriate enantiopreference and enantioselectivity, which can be achieved, for instance, by protein engineering or screening of metagenome libraries. We have developed an in silico strategy for a sequence-based prediction of substrate specificity and enantiopreference. First, we used rational protein design to predict key amino acid substitutions that indicate the desired activity. Then, we searched protein databases for proteins already carrying these mutations instead of constructing the corresponding mutants in the laboratory. This methodology exploits the fact that naturally evolved proteins have undergone selection over millions of years, which has resulted in highly optimized catalysts. Using this in silico approach, we have discovered 17 (R)-selective amine transaminases, which catalyzed the synthesis of several (R)-amines with excellent optical purity up to >99% enantiomeric excess.
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