Zhang Chuanxi, Feng Yinghui, Zhu Yiting, Gong Lei, Wei Hao, Zhang Lujia
Shanghai Engineering Research Center of Molecular Therapeutics & New Drug Development School of Chemistry and Molecular Engineering, East China Normal University Shanghai China.
Department of Micro/Nano Electronics School of Electronic Information and Electrical Engineering, Shanghai Jiao Tong University Shanghai China.
mLife. 2024 Dec 25;3(4):505-514. doi: 10.1002/mlf2.12154. eCollection 2024 Dec.
In silico computational methods have been widely utilized to study enzyme catalytic mechanisms and design enzyme performance, including molecular docking, molecular dynamics, quantum mechanics, and multiscale QM/MM approaches. However, the manual operation associated with these methods poses challenges for simulating enzymes and enzyme variants in a high-throughput manner. We developed the NAC4ED, a high-throughput enzyme mutagenesis computational platform based on the "near-attack conformation" design strategy for enzyme catalysis substrates. This platform circumvents the complex calculations involved in transition-state searching by representing enzyme catalytic mechanisms with parameters derived from near-attack conformations. NAC4ED enables the automated, high-throughput, and systematic computation of enzyme mutants, including protein model construction, complex structure acquisition, molecular dynamics simulation, and analysis of active conformation populations. Validation of the accuracy of NAC4ED demonstrated a prediction accuracy of 92.5% for 40 mutations, showing strong consistency between the computational predictions and experimental results. The time required for automated determination of a single enzyme mutant using NAC4ED is 1/764th of that needed for experimental methods. This has significantly enhanced the efficiency of predicting enzyme mutations, leading to revolutionary breakthroughs in improving the performance of high-throughput screening of enzyme variants. NAC4ED facilitates the efficient generation of a large amount of annotated data, providing high-quality data for statistical modeling and machine learning. NAC4ED is currently available at http://lujialab.org.cn/software/.
计算机模拟计算方法已被广泛用于研究酶的催化机制和设计酶的性能,包括分子对接、分子动力学、量子力学和多尺度量子力学/分子力学方法。然而,与这些方法相关的手动操作给以高通量方式模拟酶和酶变体带来了挑战。我们开发了NAC4ED,这是一个基于“近攻击构象”设计策略的高通量酶诱变计算平台,用于酶催化底物。该平台通过用源自近攻击构象的参数表示酶催化机制,规避了过渡态搜索中涉及的复杂计算。NAC4ED能够对酶突变体进行自动化、高通量和系统的计算,包括蛋白质模型构建、复合物结构获取、分子动力学模拟以及活性构象群体分析。对NAC4ED准确性的验证表明,对于40个突变,预测准确率为92.5%,计算预测与实验结果之间显示出很强的一致性。使用NAC4ED自动确定单个酶突变体所需的时间是实验方法所需时间的1/764。这显著提高了预测酶突变的效率,在提高酶变体高通量筛选性能方面带来了革命性突破。NAC4ED有助于高效生成大量带注释的数据,为统计建模和机器学习提供高质量数据。NAC4ED目前可在http://lujialab.org.cn/software/获取。