Department of Pharmacology and Personalised Medicine, Maastricht Center for Systems Biology, Faculty of Health, Medicine and Life Sciences, Maastricht University, 6229 ER Maastricht, The Netherlands;
Department of Pharmacology and Personalised Medicine, Maastricht Center for Systems Biology, Faculty of Health, Medicine and Life Sciences, Maastricht University, 6229 ER Maastricht, The Netherlands.
Proc Natl Acad Sci U S A. 2019 Apr 2;116(14):7129-7136. doi: 10.1073/pnas.1820799116. Epub 2019 Mar 20.
Drug discovery faces an efficacy crisis to which ineffective mainly single-target and symptom-based rather than mechanistic approaches have contributed. We here explore a mechanism-based disease definition for network pharmacology. Beginning with a primary causal target, we extend this to a second using guilt-by-association analysis. We then validate our prediction and explore synergy using both cellular in vitro and mouse in vivo models. As a disease model we chose ischemic stroke, one of the highest unmet medical need indications in medicine, and reactive oxygen species forming NADPH oxidase type 4 () as a primary causal therapeutic target. For network analysis, we use classical protein-protein interactions but also metabolite-dependent interactions. Based on this protein-metabolite network, we conduct a gene ontology-based semantic similarity ranking to find suitable synergistic cotargets for network pharmacology. We identify the nitric oxide synthase ( to ) gene family as the closest target to Indeed, when combining a NOS and a NOX inhibitor at subthreshold concentrations, we observe pharmacological synergy as evidenced by reduced cell death, reduced infarct size, stabilized blood-brain barrier, reduced reoxygenation-induced leakage, and preserved neuromotor function, all in a supraadditive manner. Thus, protein-metabolite network analysis, for example guilt by association, can predict and pair synergistic mechanistic disease targets for systems medicine-driven network pharmacology. Such approaches may in the future reduce the risk of failure in single-target and symptom-based drug discovery and therapy.
药物发现正面临疗效危机,而无效的主要是单靶点和基于症状的方法,而不是基于机制的方法促成了这一危机。在这里,我们探讨了一种基于机制的网络药理学疾病定义。我们从主要的因果靶点开始,使用关联分析将其扩展到第二个靶点。然后,我们使用细胞体外和小鼠体内模型验证我们的预测并探索协同作用。作为疾病模型,我们选择了缺血性中风,这是医学中最高未满足医疗需求的适应症之一,活性氧形成 NADPH 氧化酶 4 ( ) 作为主要的因果治疗靶点。对于网络分析,我们使用经典的蛋白质-蛋白质相互作用,但也使用代谢物依赖性相互作用。基于这个蛋白质-代谢物网络,我们进行了基于基因本体论的语义相似性排名,以找到适合网络药理学的协同作用靶标。我们确定了一氧化氮合酶 ( ) 基因家族为最接近的靶标。事实上,当将 NOS 和 NOX 抑制剂以亚阈值浓度联合使用时,我们观察到药理学协同作用,表现在细胞死亡减少、梗死面积减小、血脑屏障稳定、再氧化诱导的渗漏减少以及神经运动功能得到保留,所有这些都是超加性的。因此,蛋白质-代谢物网络分析,例如关联分析,可以预测和配对协同作用的机制疾病靶点,用于系统医学驱动的网络药理学。这种方法将来可能会降低单靶点和基于症状的药物发现和治疗的失败风险。