Zdrazil Barbara, Hellsberg Eva, Viereck Michael, Ecker Gerhard F
Department of Pharmaceutical Chemistry , Pharmacoinformatics Research Group , University of Vienna , Althanstraße 14 , A-1090 , Austria . Email:
Medchemcomm. 2016 Sep 14;7(9):1819-1831. doi: 10.1039/c6md00207b. Epub 2016 Jul 22.
Retrieval of congeneric and consistent SAR data sets for protein targets of interest is still a laborious task to do if no appropriate in-house data set is available. However, combining integrated open data sources (such as the Open PHACTS Discovery Platform) with workflow tools now offers the possibility of querying across multiple domains and tailoring the search to the given research question. Starting from two phylogenetically related protein targets of interest (the human serotonin and dopamine transporters), the whole chemical compound space was explored by implementing a scaffold-based clustering of compounds possessing biological measurements for both targets. In addition, potential hERG blocking liabilities were included. The workflow allowed studying the selectivity trends of scaffold series, identifying potentially harmful compound series, and performing SAR, docking studies and molecular dynamics (MD) simulations for a consistent data set of 56 cathinones. This delivered useful insights into driving determinants for hDAT selectivity over hSERT. With respect to the scaffold-based analyses it should be noted that the cathinone data set could be retrieved only when Murcko scaffold analyses were combined with similarity searches such as a common substructure search.
如果没有合适的内部数据集,为感兴趣的蛋白质靶点检索同类且一致的SAR数据集仍然是一项艰巨的任务。然而,将集成的开放数据源(如Open PHACTS发现平台)与工作流程工具相结合,现在提供了跨多个领域进行查询并根据给定研究问题定制搜索的可能性。从两个系统发育相关的感兴趣蛋白质靶点(人类血清素和多巴胺转运体)出发,通过对两个靶点都具有生物学测量值的化合物进行基于支架的聚类,探索了整个化合物空间。此外,还纳入了潜在的hERG阻断风险。该工作流程允许研究支架系列的选择性趋势,识别潜在有害的化合物系列,并对56种卡西酮的一致数据集进行SAR、对接研究和分子动力学(MD)模拟。这为hDAT对hSERT的选择性驱动决定因素提供了有用的见解。关于基于支架的分析,应该注意的是,只有当Murcko支架分析与相似性搜索(如共同子结构搜索)相结合时,才能检索到卡西酮数据集。