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Integrative Data Mining, Scaffold Analysis, and Sequential Binary Classification Models for Exploring Ligand Profiles of Hepatic Organic Anion Transporting Polypeptides

机译:用于探索肝脏有机阴离子传输多肽的配体谱的综合性数据挖掘,支架分析和顺序二元分类模型

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Hepatocellular organic anion transporting polypeptides (OATP1B1, OATP1B3, and OATP2B1) are important for proper liver function and the regulation of the drug elimination process. Understanding their roles in different conditions of liver toxicity and cancer requires an in-depth investigation of hepatic OATP-ligand interactions and selectivity. However, such studies are impeded by the lack of crystal structures, the promiscuous nature of these transporters, and the limited availability of reliable bioactivity data, which are spread over different data sources in the open domain. To this end, we integrated ligand bioactivity data for hepatic OATPs from five open data sources (ChEMBL, the UCSF-FDA TransPortal database, DrugBank, Metrabase, and IUPHAR) in a semiautomatic KNIME workflow. Highly curated data sets were analyzed with respect to enriched scaffolds, and their activity profiles and interesting scaffold series providing indication for selective, dual-, or pan-inhibitory activity toward hepatic OATPs could be extracted. In addition, a sequential binary modeling approach revealed common and distinctive ligand features for inhibitory activity toward the individual transporters. The workflows designed for integrating data from open sources, data curation, and subsequent substructure analyses are freely available and fully adaptable. The new data sets for inhibitors and substrates of hepatic OATPs as well as the insights provided by the feature and substructure analyses will guide future structure-based studies on hepatic OATP ligand interactions and selectivity.
机译:肝细胞癌传输多肽(OATP1B1,OATP1B3和OATP2B1)对于适当的肝功能和药物消除过程的调节是重要的。了解他们在不同肝脏毒性和癌症条件下的作用需要深入调查肝脏燕麦酸盐 - 配体相互作用和选择性。然而,这种研究受到缺乏晶体结构,这些运输器的混杂性,以及可靠的生物活性数据的有限可用性,这些数据在开放域中的不同数据源上铺展。为此,我们在半自动KNIME工作流程中,我们从五个开放数据源(ChemBL,UCSF-FDA运输数据库,药物银行,元数据库和Iuphar)中综合配体生物活性数据。通过富集的支架分析高度策划的数据集,并且可以提取它们的活性曲线和有趣的支架系列,为肝脏卵醛的选择性,双 - 或泛抑制活性提供指示。此外,顺序二元建模方法揭示了常见的和独特的配体特征,用于抑制各个转运蛋白的抑制活性。设计用于将数据集成到开放源,数据策择和随后的子结构分析的工作流程是可以自由的,完全适应的。肝脏卵垫抑制剂和衬底的新数据集以及特征和子结构分析提供的见解将引导未来的基于结构的研究肝脏卵醛配体相互作用和选择性。

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