在药物-靶标-疾病综合网络中,通过不完全双派系进行药物重新定位。

IF 1.4
Simone Daminelli, V Joachim Haupt, Matthias Reimann, Michael Schroeder
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引用次数: 52

摘要

最近,人们对基因-疾病网络和多药理学作为药物重新定位的基础产生了浓厚的兴趣。在这里,我们整合了来自结构和化学数据库的数据,为147种混杂药物、553种蛋白质靶点和44种疾病适应症创建了一个药物-靶点-疾病网络。可视化和分析这种复杂的网络仍然是一个悬而未决的问题。我们通过挖掘双派系的网络母题来接近它。在我们的例子中,双集团是一个子网络,其中每种药物都与每个目标和疾病相关联。由于数据不完整,我们确定了不完整的双派系,其完成引入了从药物到靶点和疾病的新的、可预测的联系。我们通过将心血管药物重新定位到寄生虫疾病,通过预测癌症相关激酶PIK3CG作为白藜芦醇的新靶点,通过鉴定五种药物在四种丝氨酸蛋白酶中的共享结合位点以及与癌症、心血管和寄生虫疾病的新联系,证明了这种方法的力量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Drug repositioning through incomplete bi-cliques in an integrated drug-target-disease network.

Recently, there has been much interest in gene-disease networks and polypharmacology as a basis for drug repositioning. Here, we integrate data from structural and chemical databases to create a drug-target-disease network for 147 promiscuous drugs, their 553 protein targets, and 44 disease indications. Visualizing and analyzing such complex networks is still an open problem. We approach it by mining the network for network motifs of bi-cliques. In our case, a bi-clique is a subnetwork in which every drug is linked to every target and disease. Since the data are incomplete, we identify incomplete bi-cliques, whose completion introduces novel, predicted links from drugs to targets and diseases. We demonstrate the power of this approach by repositioning cardiovascular drugs to parasitic diseases, by predicting the cancer-related kinase PIK3CG as a novel target of resveratrol, and by identifying for five drugs a shared binding site in four serine proteases and novel links to cancer, cardiovascular, and parasitic diseases.

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