Nikolic Katarina, Mavridis Lazaros, Bautista-Aguilera Oscar M, Marco-Contelles José, Stark Holger, do Carmo Carreiras Maria, Rossi Ilaria, Massarelli Paola, Agbaba Danica, Ramsay Rona R, Mitchell John B O
Department of Pharmaceutical Chemistry, Faculty of Pharmacy, Institute of Pharmaceutical Chemistry, University of Belgrade, Vojvode Stepe 450, 11000, Belgrade, Serbia,
J Comput Aided Mol Des. 2015 Feb;29(2):183-98. doi: 10.1007/s10822-014-9816-1. Epub 2014 Nov 26.
Recently developed multi-targeted ligands are novel drug candidates able to interact with monoamine oxidase A and B; acetylcholinesterase and butyrylcholinesterase; or with histamine N-methyltransferase and histamine H3-receptor (H3R). These proteins are drug targets in the treatment of depression, Alzheimer's disease, obsessive disorders, and Parkinson's disease. A probabilistic method, the Parzen-Rosenblatt window approach, was used to build a "predictor" model using data collected from the ChEMBL database. The model can be used to predict both the primary pharmaceutical target and off-targets of a compound based on its structure. Molecular structures were represented based on the circular fingerprint methodology. The same approach was used to build a "predictor" model from the DrugBank dataset to determine the main pharmacological groups of the compound. The study of off-target interactions is now recognised as crucial to the understanding of both drug action and toxicology. Primary pharmaceutical targets and off-targets for the novel multi-target ligands were examined by use of the developed cheminformatic method. Several multi-target ligands were selected for further study, as compounds with possible additional beneficial pharmacological activities. The cheminformatic targets identifications were in agreement with four 3D-QSAR (H3R/D1R/D2R/5-HT2aR) models and by in vitro assays for serotonin 5-HT1a and 5-HT2a receptor binding of the most promising ligand (71/MBA-VEG8).
最近开发的多靶点配体是新型候选药物,能够与单胺氧化酶A和B、乙酰胆碱酯酶和丁酰胆碱酯酶相互作用,或者与组胺N-甲基转移酶和组胺H3受体(H3R)相互作用。这些蛋白质是治疗抑郁症、阿尔茨海默病、强迫症和帕金森病的药物靶点。一种概率方法,即Parzen-Rosenblatt窗口法,被用于利用从ChEMBL数据库收集的数据构建一个“预测器”模型。该模型可用于根据化合物的结构预测其主要药物靶点和脱靶情况。分子结构基于圆形指纹方法表示。同样的方法被用于从DrugBank数据集中构建一个“预测器”模型,以确定化合物的主要药理基团。现在人们认识到,对脱靶相互作用的研究对于理解药物作用和毒理学都至关重要。通过使用开发的化学信息学方法,对新型多靶点配体的主要药物靶点和脱靶情况进行了研究。选择了几种多靶点配体进行进一步研究,作为可能具有额外有益药理活性的化合物。化学信息学靶点鉴定结果与四个3D-QSAR(H3R/D1R/D2R/5-HT2aR)模型一致,并通过对最有前景的配体(71/MBA-VEG8)的5-羟色胺5-HT1a和5-HT2a受体结合进行体外测定得到验证。