Laboratory of Computational Systems Biology, School of Sciences, Pontifical Catholic University of Rio Grande do Sul (PUCRS), Porto Alegre, RS, Brazil.
Graduate Program in Cellular and Molecular Biology, Pontifical Catholic University of Rio Grande do Sul (PUCRS), Porto Alegre, RS, Brazil.
Chem Biol Drug Des. 2018 Aug;92(2):1468-1474. doi: 10.1111/cbdd.13312. Epub 2018 May 18.
In this study, we describe the development of new machine learning models to predict inhibition of the enzyme 3-dehydroquinate dehydratase (DHQD). This enzyme is the third step of the shikimate pathway and is responsible for the synthesis of chorismate, which is a natural precursor of aromatic amino acids. The enzymes of shikimate pathway are absent in humans, which make them protein targets for the design of antimicrobial drugs. We focus our study on the crystallographic structures of DHQD in complex with competitive inhibitors, for which experimental inhibition constant data is available. Application of supervised machine learning techniques was able to elaborate a robust DHQD-targeted model to predict binding affinity. Combination of high-resolution crystallographic structures and binding information indicates that the prevalence of intermolecular electrostatic interactions between DHQD and competitive inhibitors is of pivotal importance for the binding affinity against this enzyme. The present findings can be used to speed up virtual screening studies focused on the DHQD structure.
在这项研究中,我们描述了新的机器学习模型的开发,以预测酶 3-脱氢奎宁酸脱水酶(DHQD)的抑制作用。这种酶是莽草酸途径的第三步,负责合成芳香族氨基酸的天然前体物质——分支酸。人类缺乏莽草酸途径的酶,这使得它们成为设计抗菌药物的蛋白质靶标。我们的研究集中在 DHQD 与竞争性抑制剂结合的晶体结构上,这些抑制剂的实验抑制常数数据是可用的。监督机器学习技术的应用能够详细说明一种强大的针对 DHQD 的模型,以预测结合亲和力。高分辨率晶体结构和结合信息的结合表明,DHQD 与竞争性抑制剂之间的分子间静电相互作用的普遍性对该酶的结合亲和力至关重要。本研究结果可用于加快针对 DHQD 结构的虚拟筛选研究。