Kim Taeho, Chung Kee-Choo, Park Hwangseo
Department of Bioscience and Biotechnology, Sejong University, 209 Neungdong-ro, Kwangjin-gu, Seoul 05006, Republic of Korea.
Pharmaceuticals (Basel). 2023 Oct 24;16(11):1509. doi: 10.3390/ph16111509.
The hERG potassium channel serves as an annexed target for drug discovery because the associated off-target inhibitory activity may cause serious cardiotoxicity. Quantitative structure-activity relationship (QSAR) models were developed to predict inhibitory activities against the hERG potassium channel, utilizing the three-dimensional (3D) distribution of quantum mechanical electrostatic potential (ESP) as the molecular descriptor. To prepare the optimal atomic coordinates of dataset molecules, pairwise 3D structural alignments were carried out in order for the quantum mechanical cross correlation between the template and other molecules to be maximized. This alignment method stands out from the common atom-by-atom matching technique, as it can handle structurally diverse molecules as effectively as chemical derivatives that share an identical scaffold. The alignment problem prevalent in 3D-QSAR methods was ameliorated substantially by dividing the dataset molecules into seven subsets, each of which contained molecules with similar molecular weights. Using an artificial neural network algorithm to find the functional relationship between the quantum mechanical ESP descriptors and the experimental hERG inhibitory activities, highly predictive 3D-QSAR models were derived for all seven molecular subsets to the extent that the squared correlation coefficients exceeded 0.79. Given their simplicity in model development and strong predictability, the 3D-QSAR models developed in this study are expected to function as an effective virtual screening tool for assessing the potential cardiotoxicity of drug candidate molecules.
人乙醚 - 去极化相关基因(hERG)钾通道是药物研发的附加靶点,因为相关的脱靶抑制活性可能会导致严重的心脏毒性。利用量子力学静电势(ESP)的三维(3D)分布作为分子描述符,建立了定量构效关系(QSAR)模型来预测对hERG钾通道的抑制活性。为了准备数据集分子的最佳原子坐标,进行了成对的3D结构比对,以使模板与其他分子之间的量子力学交叉相关性最大化。这种比对方法与常见的逐个原子匹配技术不同,因为它能够像处理具有相同支架的化学衍生物一样有效地处理结构多样的分子。通过将数据集分子划分为七个子集,每个子集包含分子量相似的分子,3D - QSAR方法中普遍存在的比对问题得到了显著改善。使用人工神经网络算法来寻找量子力学ESP描述符与实验性hERG抑制活性之间的函数关系,针对所有七个分子子集导出了具有高度预测性的3D - QSAR模型,相关系数平方超过0.79。鉴于本研究中开发的3D - QSAR模型在模型开发方面的简单性和强大的预测能力,预计它们将作为一种有效的虚拟筛选工具,用于评估候选药物分子的潜在心脏毒性。