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通过化学-蛋白质相互作用的系统预测发现抗阿尔茨海默病的多靶点导向配体。

Discovery of multitarget-directed ligands against Alzheimer's disease through systematic prediction of chemical-protein interactions.

作者信息

Fang Jiansong, Li Yongjie, Liu Rui, Pang Xiaocong, Li Chao, Yang Ranyao, He Yangyang, Lian Wenwen, Liu Ai-Lin, Du Guan-Hua

机构信息

Institute of Materia Medica, Chinese Academy of Medical Sciences and Peking Union Medical College , Beijing 100050, PR China.

出版信息

J Chem Inf Model. 2015 Jan 26;55(1):149-64. doi: 10.1021/ci500574n. Epub 2015 Jan 13.

Abstract

To determine chemical-protein interactions (CPI) is costly, time-consuming, and labor-intensive. In silico prediction of CPI can facilitate the target identification and drug discovery. Although many in silico target prediction tools have been developed, few of them could predict active molecules against multitarget for a single disease. In this investigation, naive Bayesian (NB) and recursive partitioning (RP) algorithms were applied to construct classifiers for predicting the active molecules against 25 key targets toward Alzheimer's disease (AD) using the multitarget-quantitative structure-activity relationships (mt-QSAR) method. Each molecule was initially represented with two kinds of fingerprint descriptors (ECFP6 and MACCS). One hundred classifiers were constructed, and their performance was evaluated and verified with internally 5-fold cross-validation and external test set validation. The range of the area under the receiver operating characteristic curve (ROC) for the test sets was from 0.741 to 1.0, with an average of 0.965. In addition, the important fragments for multitarget against AD given by NB classifiers were also analyzed. Finally, the validated models were employed to systematically predict the potential targets for six approved anti-AD drugs and 19 known active compounds related to AD. The prediction results were confirmed by reported bioactivity data and our in vitro experimental validation, resulting in several multitarget-directed ligands (MTDLs) against AD, including seven acetylcholinesterase (AChE) inhibitors ranging from 0.442 to 72.26 μM and four histamine receptor 3 (H3R) antagonists ranging from 0.308 to 58.6 μM. To be exciting, the best MTDL DL0410 was identified as an dual cholinesterase inhibitor with IC50 values of 0.442 μM (AChE) and 3.57 μM (BuChE) as well as a H3R antagonist with an IC50 of 0.308 μM. This investigation is the first report using mt-QASR approach to predict chemical-protein interaction for a single disease and discovering highly potent MTDLs. This protocol may be useful for in silico multitarget prediction of other diseases.

摘要

确定化学-蛋白质相互作用(CPI)成本高昂、耗时且劳动强度大。基于计算机的CPI预测有助于靶点识别和药物发现。尽管已经开发了许多基于计算机的靶点预测工具,但其中很少有能够针对单一疾病预测针对多靶点的活性分子。在本研究中,应用朴素贝叶斯(NB)和递归划分(RP)算法,使用多靶点定量构效关系(mt-QSAR)方法构建分类器,以预测针对阿尔茨海默病(AD)的25个关键靶点的活性分子。每个分子最初用两种指纹描述符(ECFP6和MACCS)表示。构建了100个分类器,并通过内部5折交叉验证和外部测试集验证对其性能进行了评估和验证。测试集的受试者工作特征曲线(ROC)下面积范围为0.741至1.0,平均为0.965。此外,还分析了NB分类器给出的针对AD的多靶点重要片段。最后,使用经过验证的模型系统地预测了六种已批准的抗AD药物和19种已知的与AD相关的活性化合物的潜在靶点。预测结果通过已报道的生物活性数据和我们的体外实验验证得到证实,从而得到了几种针对AD的多靶点导向配体(MTDL),包括七种乙酰胆碱酯酶(AChE)抑制剂,浓度范围为0.442至72.26μM,以及四种组胺受体3(H3R)拮抗剂,浓度范围为0.308至58.6μM。令人兴奋的是,最佳的MTDL DL0410被鉴定为一种双胆碱酯酶抑制剂,其IC50值为0.442μM(AChE)和3.57μM(丁酰胆碱酯酶),以及一种IC50为0.308μM的H3R拮抗剂。本研究是首次使用mt-QASR方法预测单一疾病的化学-蛋白质相互作用并发现高效MTDL的报告。该方案可能对其他疾病的基于计算机的多靶点预测有用。

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