Mason Eye Institute, University of Missouri School of Medicine, Columbia, MO 65201, USA.
Int J Mol Sci. 2020 Feb 23;21(4):1523. doi: 10.3390/ijms21041523.
Glucose-6-Phosphate Dehydrogenase (G6PD) is a ubiquitous cytoplasmic enzyme converting glucose-6-phosphate into 6-phosphogluconate in the pentose phosphate pathway (PPP). The G6PD deficiency renders the inability to regenerate glutathione due to lack of Nicotine Adenosine Dinucleotide Phosphate (NADPH) and produces stress conditions that can cause oxidative injury to photoreceptors, retinal cells, and blood barrier function. In this study, we constructed pharmacophore-based models based on the complex of G6PD with compound AG1 (G6PD activator) followed by virtual screening. Fifty-three hit molecules were mapped with core pharmacophore features. We performed molecular descriptor calculation, clustering, and principal component analysis (PCA) to pharmacophore hit molecules and further applied statistical machine learning methods. Optimal performance of pharmacophore modeling and machine learning approaches classified the 53 hits as drug-like (18) and nondrug-like (35) compounds. The drug-like compounds further evaluated our established cheminformatics pipeline (molecular docking and ADMET (absorption, distribution, metabolism, excretion and toxicity) analysis). Finally, five lead molecules with different scaffolds were selected by binding energies and ADMET properties. This study proposes that the combination of machine learning methods with traditional structure-based virtual screening can effectively strengthen the ability to find potential G6PD activators used for G6PD deficiency diseases. Moreover, these compounds can be considered as safe agents for further validation studies at the cell level, animal model, and even clinic setting.
葡萄糖-6-磷酸脱氢酶(G6PD)是一种普遍存在的细胞质酶,可将葡萄糖-6-磷酸转化为戊糖磷酸途径(PPP)中的 6-磷酸葡萄糖酸。G6PD 缺乏会导致由于缺乏烟酰胺腺嘌呤二核苷酸磷酸(NADPH)而无法再生谷胱甘肽,并产生应激条件,从而导致光感受器、视网膜细胞和血液屏障功能发生氧化损伤。在这项研究中,我们基于 G6PD 与化合物 AG1(G6PD 激活剂)的复合物构建了基于药效团的模型,然后进行虚拟筛选。将 53 个命中分子映射到核心药效团特征上。我们对药效团命中分子进行了分子描述符计算、聚类和主成分分析(PCA),并进一步应用了统计机器学习方法。药效团建模和机器学习方法的最佳性能将 53 个命中分子分类为类药性(18 个)和非类药性(35 个)化合物。类药性化合物进一步通过我们建立的计算化学管道(分子对接和 ADMET(吸收、分布、代谢、排泄和毒性)分析)进行评估。最后,根据结合能和 ADMET 特性,从 53 个命中分子中选择了五个具有不同骨架的先导分子。这项研究表明,将机器学习方法与传统的基于结构的虚拟筛选相结合,可以有效地增强寻找用于 G6PD 缺乏症的潜在 G6PD 激活剂的能力。此外,这些化合物可以被认为是进一步在细胞水平、动物模型甚至临床环境中进行验证研究的安全药物。