Khan Abbas, Chandra Kaushik Aman, Ali Syed Shujait, Ahmad Nisar, Wei Dong-Qing
School of Life Sciences and Biotechnology, Shanghai Jiao Tong University Shanghai 200240 China
Center for Biotechnology and Microbiology, University of Swat Swat Pakistan.
RSC Adv. 2019 Apr 2;9(18):10326-10339. doi: 10.1039/c9ra01007f. eCollection 2019 Mar 28.
Herein, a two-step approach was developed for the prediction of piperine targets and another prediction of similar (piperine) compounds from a small molecule library using a deep-learning method. Deep-learning and neural-network approaches were used for target prediction, similarity searches, and validation. The present approach was trained on records containing the data. The model attained an overall accuracy of around 87.5%, where the training and test set was kept as 70% and 30% (17 226/40 197), respectively. This method predicted two targets (MAO-A and MAO-B) and 101 compounds as piperine derivatives. MAO-A and MAO-B are important drug targets in Parkinson's disease. Validation of this method was also performed by considering piperine and its targets (monoamine oxidase A and B) using molecular docking, dynamics simulation and post-simulation analysis of all the selected compounds. Rasagiline, lazabemide, and selegiline were selected as controls, which are already FDA-approved drugs against these targets. Molecular docking studies of the FDA-approved drugs and the compounds we predicted using DL and neural networks were carried out against MAO-A and MAO-B. Using the molecular docking's scoring function, molecular dynamics simulation and free energy calculations as extended validation methods, it was observed that the compounds predicted herein possessed excellent inhibitory effects against the selected targets. Thus, deep learning may play a very effective role in predicting the potential compounds, their targets and can play an expanded role in computer-aided drug approaches.
在此,开发了一种两步法,用于预测胡椒碱靶点,并使用深度学习方法从小分子库中预测类似(胡椒碱)化合物。深度学习和神经网络方法用于靶点预测、相似性搜索和验证。本方法在包含数据的记录上进行训练。该模型的总体准确率约为87.5%,其中训练集和测试集分别保持为70%和30%(17226/40197)。该方法预测了两个靶点(单胺氧化酶A和B)以及101种化合物为胡椒碱衍生物。单胺氧化酶A和B是帕金森病中的重要药物靶点。还通过使用分子对接、动力学模拟以及对所有选定化合物的模拟后分析,考虑胡椒碱及其靶点(单胺氧化酶A和B)来对该方法进行验证。选择雷沙吉兰、拉扎贝胺和司来吉兰作为对照,它们是已获美国食品药品监督管理局批准的针对这些靶点的药物。针对单胺氧化酶A和B对美国食品药品监督管理局批准的药物以及我们使用深度学习和神经网络预测的化合物进行了分子对接研究。使用分子对接的评分函数、分子动力学模拟和自由能计算作为扩展验证方法,观察到本文预测的化合物对选定靶点具有优异的抑制作用。因此,深度学习在预测潜在化合物及其靶点方面可能发挥非常有效的作用,并且在计算机辅助药物方法中可以发挥更大的作用。