College of Life Science and Technology, Beijing University of Chemical Technology, Beijing 100029, China.
Department of Chemical Engineering, Tsinghua University, Beijing 100084, China.
J Chem Inf Model. 2023 Feb 27;63(4):1323-1337. doi: 10.1021/acs.jcim.3c00002. Epub 2023 Feb 13.
Computational enzyme design has been successfully applied to identify new alternatives to natural enzymes for the biosynthesis of important compounds. However, the moderate catalytic activities of de novo designed enzymes indicate that the modeling accuracy of current computational enzyme design methods should be improved. Here, high-throughput molecular dynamics simulations were used to enhance computational enzyme design, thus allowing the identification of variants with higher activities in silico. Different time schemes of high-throughput molecular dynamics simulations were tested to identify the catalytic features of evolved Kemp eliminases. The 20 × 1 ns molecular dynamics simulation scheme was sufficiently accurate and computationally viable to screen the computationally designed massive variants of Kemp elimination enzymes. The developed hybrid computational strategy was used to redesign the most active Kemp eliminase, HG3.17, and five variants were generated and experimentally confirmed to afford higher catalytic efficiencies than that of HG3.17, with one double variant (D52Q/A53S) exhibiting a 55% increase. The hybrid computational enzyme design strategy is general and computationally economical, with which we anticipate the efficient creation of practical enzymes for industrial biocatalysis.
计算酶设计已成功应用于鉴定用于重要化合物生物合成的天然酶的新替代物。然而,从头设计的酶的中等催化活性表明,当前计算酶设计方法的建模准确性应得到提高。在这里,使用高通量分子动力学模拟来增强计算酶设计,从而能够在计算机上鉴定具有更高活性的变体。测试了不同的高通量分子动力学模拟时间方案,以鉴定进化的 Kemp 消除酶的催化特征。20×1 ns 分子动力学模拟方案足够准确且在计算上可行,可筛选 Kemp 消除酶的大量计算设计变体。开发的混合计算策略用于重新设计最活跃的 Kemp 消除酶 HG3.17,并生成了五个变体,并通过实验证实其提供的催化效率高于 HG3.17,其中一个双变体(D52Q/A53S)的增幅为 55%。该混合计算酶设计策略具有通用性和经济性,预计可有效地为工业生物催化创造实用酶。