Füzi Barbara, Malik-Sheriff Rahuman S, Manners Emma J, Hermjakob Henning, Ecker Gerhard F
Department of Pharmaceutical Sciences, University of Vienna, Vienna, Austria.
European Molecular Biology Laboratory, European Bioinformatics Institute, Hinxton, Cambridge, UK.
J Cheminform. 2022 Jun 13;14(1):37. doi: 10.1186/s13321-022-00615-6.
As an alternative to one drug-one target approaches, systems biology methods can provide a deeper insight into the holistic effects of drugs. Network-based approaches are tools of systems biology, that can represent valuable methods for visualizing and analysing drug-protein and protein-protein interactions. In this study, a KNIME workflow is presented which connects drugs to causal target proteins and target proteins to their causal protein interactors. With the collected data, networks can be constructed for visualizing and interpreting the connections. The last part of the workflow provides a topological enrichment test for identifying relevant pathways and processes connected to the submitted data. The workflow is based on openly available databases and their web services. As a case study, compounds of DILIRank were analysed. DILIRank is the benchmark dataset for Drug-Induced Liver Injury by the FDA, where compounds are categorized by their likeliness of causing DILI. The study includes the drugs that are most likely to cause DILI ("mostDILI") and the ones that are not likely to cause DILI ("noDILI"). After selecting the compounds of interest, down- and upregulated proteins connected to the mostDILI group were identified; furthermore, a liver-specific subset of those was created. The downregulated sub-list had considerably more entries, therefore, network and causal interactome were constructed and topological pathway enrichment analysis was performed with this list. The workflow identified proteins such as Prostaglandin G7H synthase 1 and UDP-glucuronosyltransferase 1A9 as key participants in the potential toxic events disclosing the possible mode of action. The topological network analysis resulted in pathways such as recycling of bile acids and salts and glucuronidation, indicating their involvement in DILI. The KNIME pipeline was built to support target and network-based approaches to analyse any sets of drug data and identify their target proteins, mode of actions and processes they are involved in. The fragments of the pipeline can be used separately or can be combined as required.
作为单药单靶点方法的替代方案,系统生物学方法能够更深入地洞察药物的整体效应。基于网络的方法是系统生物学的工具,可作为可视化和分析药物 - 蛋白质以及蛋白质 - 蛋白质相互作用的重要方法。在本研究中,展示了一个KNIME工作流程,该流程将药物与因果靶蛋白相连,并将靶蛋白与其因果蛋白相互作用体相连。利用收集到的数据,可以构建网络以可视化和解释这些连接。工作流程的最后一部分提供了拓扑富集测试,用于识别与提交数据相关的途径和过程。该工作流程基于公开可用的数据库及其网络服务。作为案例研究,分析了DILIRank的化合物。DILIRank是美国食品药品监督管理局(FDA)用于药物性肝损伤的基准数据集,其中的化合物根据其导致药物性肝损伤的可能性进行分类。该研究包括最有可能导致药物性肝损伤的药物(“mostDILI”)和不太可能导致药物性肝损伤的药物(“noDILI”)。在选择感兴趣的化合物后,确定了与mostDILI组相关的下调和上调蛋白;此外,还创建了这些蛋白的肝脏特异性子集。下调子列表的条目要多得多,因此,构建了网络和因果相互作用组,并使用该列表进行了拓扑途径富集分析。该工作流程确定了前列腺素G7H合酶1和UDP - 葡萄糖醛酸基转移酶1A9等蛋白是潜在毒性事件的关键参与者,揭示了可能的作用模式。拓扑网络分析得出胆汁酸和盐的循环以及葡萄糖醛酸化等途径,表明它们与药物性肝损伤有关。构建KNIME管道是为了支持基于靶点和网络的方法,以分析任何药物数据集,并识别其靶蛋白、作用模式以及它们所涉及的过程。管道的各个片段可以单独使用,也可以根据需要进行组合。