Fang Jiansong, Wang Ling, Li Yecheng, Lian Wenwen, Pang Xiaocong, Wang Hong, Yuan Dongsheng, Wang Qi, Liu Ai-Lin, Du Guan-Hua
Institute of Clinical Pharmacology, Guangzhou University of Chinese Medicine, Guangzhou, China.
Department of Encephalopathy, The Second Affiliated Hospital of Guangzhou University of Chinese Medicine, Guangzhou, China.
PLoS One. 2017 May 25;12(5):e0178347. doi: 10.1371/journal.pone.0178347. eCollection 2017.
Alzheimer's disease (AD) is a complicated progressive neurodegeneration disorder. To confront AD, scientists are searching for multi-target-directed ligands (MTDLs) to delay disease progression. The in silico prediction of chemical-protein interactions (CPI) can accelerate target identification and drug discovery. Previously, we developed 100 binary classifiers to predict the CPI for 25 key targets against AD using the multi-target quantitative structure-activity relationship (mt-QSAR) method. In this investigation, we aimed to apply the mt-QSAR method to enlarge the model library to predict CPI towards AD. Another 104 binary classifiers were further constructed to predict the CPI for 26 preclinical AD targets based on the naive Bayesian (NB) and recursive partitioning (RP) algorithms. The internal 5-fold cross-validation and external test set validation were applied to evaluate the performance of the training sets and test set, respectively. The area under the receiver operating characteristic curve (ROC) for the test sets ranged from 0.629 to 1.0, with an average of 0.903. In addition, we developed a web server named AlzhCPI to integrate the comprehensive information of approximately 204 binary classifiers, which has potential applications in network pharmacology and drug repositioning. AlzhCPI is available online at http://rcidm.org/AlzhCPI/index.html. To illustrate the applicability of AlzhCPI, the developed system was employed for the systems pharmacology-based investigation of shichangpu against AD to enhance the understanding of the mechanisms of action of shichangpu from a holistic perspective.
阿尔茨海默病(AD)是一种复杂的进行性神经退行性疾病。为应对AD,科学家们正在寻找多靶点导向配体(MTDLs)以延缓疾病进展。化学-蛋白质相互作用(CPI)的计算机预测可以加速靶点识别和药物发现。此前,我们使用多靶点定量构效关系(mt-QSAR)方法开发了100个二分类器,用于预测针对AD的25个关键靶点的CPI。在本研究中,我们旨在应用mt-QSAR方法扩大模型库,以预测针对AD的CPI。基于朴素贝叶斯(NB)和递归划分(RP)算法,进一步构建了另外104个二分类器,用于预测26个临床前AD靶点的CPI。分别应用内部5折交叉验证和外部测试集验证来评估训练集和测试集的性能。测试集的受试者操作特征曲线(ROC)下面积范围为0.629至1.0,平均为0.903。此外,我们开发了一个名为AlzhCPI的网络服务器,以整合约204个二分类器的综合信息,其在网络药理学和药物重新定位方面具有潜在应用。AlzhCPI可在http://rcidm.org/AlzhCPI/index.html在线获取。为说明AlzhCPI的适用性,该开发系统用于基于系统药理学的石菖蒲抗AD研究,以从整体角度增强对石菖蒲作用机制的理解。