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Drug repositioning based on triangularly balanced structure for tissue-specific diseases in incomplete interactome

机译:不完全相互作用组中基于组织结构疾病的基于三角平衡结构的药物重定位

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Finding new uses for existing drugs has become a new strategy for decades to treat more patients. Few traditional approaches consider the tissue specificities of diseases. Moreover, disease genes, drug targets and protein interaction (PPI) networks remain largely incomplete and the relationships between drugs and diseases conform to the triangularly balanced structure. Therefore, based on tissue specificities of diseases, we apply the triangularly balanced theory and the module distance defined for incomplete interaction networks to build drug-disease associations. Our method is named as 1TMD (Tissue specificity, Triangle balance theory and Module Distance). Firstly, we combine three different drug similarity networks. Then, in the tissue-specific PPI network of a disease, we calculate its similarities with drugs using module distance. Finally, breast cancer and hepatocellular carcinoma (HCC) are taken as case studies. In the top-5% of predicted associations, 96.9% and 90.3% results match with known associations in Comparative Toxicogenomics Database (CTD) for breast cancer and hepatocellular carcinoma respectively. Clinical verification, literature mining and KEGG pathways enrichment analysis are further conducted for the top-5% newly predicted associations. Overall, ITMD is an effective approach for predicting new drug indications for tissue-specific diseases and provides potential values for the treatments of complex diseases. (C) 2017 Published by Elsevier B.V.
机译:寻找现有药物的新用途已成为数十年来治疗更多患者的新策略。很少有传统方法考虑疾病的组织特异性。此外,疾病基因,药物靶标和蛋白质相互作用(PPI)网络仍然不完整,药物与疾病之间的关系符合三角平衡结构。因此,基于疾病的组织特异性,我们应用三角平衡理论和为不完全相互作用网络定义的模块距离,以建立药物-疾病关联。我们的方法被称为1TMD(组织特异性,三角平衡理论和模块距离)。首先,我们结合了三种不同的药物相似性网络。然后,在疾病的组织特异性PPI网络中,我们使用模块距离计算其与药物的相似性。最后,将乳腺癌和肝细胞癌(HCC)作为案例研究。在预测关联的前5%中,96.9%和90.3%的结果分别与乳腺癌和肝细胞癌比较毒理基因组数据库(CTD)中的已知关联相符。对前5%的新预测关联性进一步进行临床验证,文献挖掘和KEGG途径富集分析。总体而言,ITMD是预测组织特异性疾病的新药适应症的有效方法,并为复杂疾病的治疗提供了潜在价值。 (C)2017由Elsevier B.V.发布

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