Nie Yiming, Li Jia, Yang Xinying, Hou Xuben, Fang Hao
Department of Medicinal Chemistry, School of Pharmaceutical Sciences, Cheeloo College of Medicine, Shandong University, Jinan, Shandong, China.
Department of Pharmaceutical Analysis, School of Pharmaceutical Sciences, Cheeloo College of Medicine, Shandong University, Jinan, Shandong, China.
Front Chem. 2022 Nov 22;10:1056701. doi: 10.3389/fchem.2022.1056701. eCollection 2022.
As a potent zinc chelator, hydroxamic acid has been applied in the design of inhibitors of zinc metalloenzyme, such as histone deacetylases (HDACs). A series of hydroxamic acids with HDAC inhibitory activities were subjected to the QSRR (Quantitative Structure-Retention Relationships) study. Experimental data in combination with calculated molecular descriptors were used for the development of the QSRR model. Specially, we employed PCA (principal component analysis) to accomplish dimension reduction of descriptors and utilized the principal components of compounds (16 training compounds, 4 validation compounds and 7 test compounds) to execute GA (genetic algorithm)-BP (error backpropagation) algorithm. We performed double cross-validation approach for obtaining a more convincing model. Moreover, we introduced molecular interaction-based features (molecular docking scores) as a new type of molecular descriptor to represent the interactions between analytes and the mobile phase. Our results indicated that the incorporation of molecular interaction-based features significantly improved the accuracy of the QSRR model, (R value is 0.842, RMSEP value is 0.440, and MAE value is 0.573). Our study not only developed QSRR model for the prediction of the retention time of hydroxamic acid in HPLC but also proved the feasibility of using molecular interaction-based features as molecular descriptors.
作为一种有效的锌螯合剂,异羟肟酸已被应用于锌金属酶抑制剂的设计,如组蛋白脱乙酰酶(HDACs)。对一系列具有HDAC抑制活性的异羟肟酸进行了定量结构-保留关系(QSRR)研究。将实验数据与计算得到的分子描述符相结合,用于开发QSRR模型。具体而言,我们采用主成分分析(PCA)来完成描述符的降维,并利用化合物的主成分(16个训练化合物、4个验证化合物和7个测试化合物)执行遗传算法(GA)-误差反向传播(BP)算法。我们采用双重交叉验证方法以获得更具说服力的模型。此外,我们引入基于分子相互作用的特征(分子对接分数)作为一种新型分子描述符,以表示分析物与流动相之间的相互作用。我们的结果表明,纳入基于分子相互作用的特征显著提高了QSRR模型的准确性(R值为0.842,RMSEP值为0.440,MAE值为0.573)。我们的研究不仅开发了用于预测异羟肟酸在高效液相色谱中保留时间的QSRR模型,还证明了使用基于分子相互作用的特征作为分子描述符的可行性。