热稳定性
蛋白质工程
酶
贪婪算法
计算生物学
催化效率
立体选择性
计算机科学
组合化学
生物
化学
生物化学
催化作用
算法
作者
Jinyuan Sun,Yinglu Cui,Bian Wu
出处
期刊:Methods in Enzymology
日期:2021-01-01
卷期号:: 207-230
被引量:8
标识
DOI:10.1016/bs.mie.2020.12.026
摘要
Nature harbors fascinating enzymatic catalysts with high efficiency, chemo-, regio- and stereoselectivity. However, the insufficient stability of the enzymes often prevents their widespread utilization for industrial processes. Not content with the finite repertoire of naturally occurring enzymes, protein engineering holds promises to extend the applications of the improved enzymes with desired physical and catalytic properties. Herein, we devised a computational strategy (greedy accumulated strategy for protein engineering, GRAPE) to enhance the thermostability of enzymes. Through scanning of all point mutations of the structural and evolutionary consensus analysis, a library containing fewer than 100 mutations was established for characterization. After preliminary experimental verification, effective mutations are clustered in a multidimensional physical property space and then accumulated via the greedy algorithm to produce the final designed enzyme. Using the recently reported IsPETase from Ideonella sakaiensis that decomposes PET under ambient temperatures as a starting point, we adopted the GRAPE strategy to come up with a DuraPETase (TM = 77 °C, raised by 31 °C) which showed drastically enhanced degradation performance (300-fold) on semicrystalline PET films at 40 °C.
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