Department of Electronic Science, National Institute for Data Science in Health and Medicine, Xiamen University, Xiamen 361005, China.
School of Computing and Data Science, Xiamen University Malaysia, Sepang 43600, Malaysia.
Anal Chem. 2023 Apr 18;95(15):6203-6211. doi: 10.1021/acs.analchem.2c04603. Epub 2023 Apr 6.
Drug combinations are commonly used to treat various diseases to achieve synergistic therapeutic effects or to alleviate drug resistance. Nevertheless, some drug combinations might lead to adverse effects, and thus, it is crucial to explore the mechanisms of drug interactions before clinical treatment. Generally, drug interactions have been studied using nonclinical pharmacokinetics, toxicology, and pharmacology. Here, we propose a complementary strategy based on metabolomics, which we call interaction metabolite set enrichment analysis, or iMSEA, to decipher drug interactions. First, a digraph-based heterogeneous network model was constructed to model the biological metabolic network based on the Kyoto Encyclopedia of Genes and Genomes (KEGG) database. Second, treatment-specific influences on all detected metabolites were calculated and propagated across the whole network model. Third, pathway activity was defined and enriched to quantify the influence of each treatment on the predefined functional metabolite sets, i.e., metabolic pathways. Finally, drug interactions were identified by comparing the pathway activity enriched by the drug combination treatments and the single drug treatments. A data set consisting of hepatocellular carcinoma (HCC) cells that were treated with oxaliplatin (OXA) and/or vitamin C (VC) was used to illustrate the effectiveness of the iMSEA strategy for evaluation of drug interactions. Performance evaluation using synthetic noise data was also performed to evaluate sensitivities and parameter settings for the iMSEA strategy. The iMSEA strategy highlighted synergistic effects of combined OXA and VC treatments including the alterations in the glycerophospholipid metabolism pathway and glycine, serine, and threonine metabolism pathway. This work provides an alternative method to reveal the mechanisms of drug combinations from the viewpoint of metabolomics.
药物组合通常用于治疗各种疾病,以达到协同的治疗效果或减轻耐药性。然而,一些药物组合可能会导致不良反应,因此在临床治疗前探索药物相互作用的机制至关重要。通常,药物相互作用的研究采用非临床药代动力学、毒理学和药理学方法。在这里,我们提出了一种基于代谢组学的补充策略,我们称之为相互作用代谢物集富集分析(iMSEA),以破译药物相互作用。首先,构建了基于有向图的异构网络模型,基于京都基因与基因组百科全书(KEGG)数据库来模拟生物代谢网络。其次,计算并在整个网络模型中传播对所有检测到的代谢物的特定于处理的影响。然后定义和丰富途径活性,以量化每种处理对预定义功能代谢物集(即代谢途径)的影响。最后,通过比较药物组合处理和单药处理的途径活性来识别药物相互作用。使用包含肝癌(HCC)细胞的数据集来说明 iMSEA 策略用于评估药物相互作用的有效性,这些细胞用奥沙利铂(OXA)和/或维生素 C(VC)处理。还使用合成噪声数据进行性能评估,以评估 iMSEA 策略的敏感性和参数设置。iMSEA 策略突出了联合 OXA 和 VC 治疗的协同作用,包括甘油磷脂代谢途径和甘氨酸、丝氨酸和苏氨酸代谢途径的改变。这项工作提供了一种从代谢组学角度揭示药物组合机制的替代方法。