定向进化
计算生物学
功能(生物学)
序列(生物学)
酶
蛋白质工程
计算机科学
生物
遗传学
突变体
生物化学
基因
作者
Richard J. Fox,Sarah C. Davis,Emily C. Mundorff,Lisa M. Newman,Vesna Gavrilovic,K. Steven,Loleta Chung,Charlene Ching,Sarena Tam,Sheela Muley,John H. Grate,J. M. GRUBER,John C Whitman,Roger A. Sheldon,Gjalt W. Huisman
摘要
We describe a directed evolution approach that should find broad application in generating enzymes that meet predefined process-design criteria. It augments recombination-based directed evolution by incorporating a strategy for statistical analysis of protein sequence activity relationships (ProSAR). This combination facilitates mutation-oriented enzyme optimization by permitting the capture of additional information contained in the sequence-activity data. The method thus enables identification of beneficial mutations even in variants with reduced function. We use this hybrid approach to evolve a bacterial halohydrin dehalogenase that improves the volumetric productivity of a cyanation process approximately 4,000-fold. This improvement was required to meet the practical design criteria for a commercially relevant biocatalytic process involved in the synthesis of a cholesterol-lowering drug, atorvastatin (Lipitor), and was obtained by variants that had at least 35 mutations.
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