酶动力学
化学
酶
定向进化
动力学
催化作用
活动站点
分子动力学
立体化学
结晶学
计算化学
突变体
物理
有机化学
生物化学
量子力学
基因
作者
Rojo V. Rakotoharisoa,Behnoush Seifinoferest,Niayesh Zarifi,J. Miller,Joshua M. Rodriguez,Michael C. Thompson,Roberto A. Chica
摘要
The ability to create efficient artificial enzymes for any chemical reaction is of great interest. Here, we describe a computational design method for increasing the catalytic efficiency of de novo enzymes by several orders of magnitude without relying on directed evolution and high-throughput screening. Using structural ensembles generated from dynamics-based refinement against X-ray diffraction data collected from crystals of Kemp eliminases HG3 (kcat/KM 125 M–1 s–1) and KE70 (kcat/KM 57 M–1 s–1), we design from each enzyme ≤10 sequences predicted to catalyze this reaction more efficiently. The most active designs display kcat/KM values improved by 100–250-fold, comparable to mutants obtained after screening thousands of variants in multiple rounds of directed evolution. Crystal structures show excellent agreement with computational models, with catalytic contacts present as designed and transition-state root-mean-square deviations of ≤0.65 Å. Our work shows how ensemble-based design can generate efficient artificial enzymes by exploiting the true conformational ensemble to design improved active sites.
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