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From NPC therapeutic target identification to potential treatment strategy.

机译:从NPC治疗目标识别到潜在的治疗策略。

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Nasopharyngeal carcinoma (NPC) is relatively rare in Western countries but is a common cancer in southern Asia. Many differentially expressed genes have been linked to NPC; however, how to prioritize therapeutic targets and potential drugs from unsorted gene lists remains largely unknown. We first collected 558 upregulated and 993 downregulated NPC genes from published microarray data and the primary literatures. We then postulated that conversion of gene signatures into the protein-protein interaction network and analyzing the network topologically could provide insight into key regulators involved in tumorigenesis of NPC. Of particular interest was the presence of cliques, called fully connected subgraphs, in the inferred NPC networks. These clique-based hubs, connecting with more than three queries and ranked higher than other nodes in the NPC protein-protein interaction network, were further narrowed down by pathway analysis to retrieve 24 upregulated and 6 downregulated bottleneck genes for predicting NPC carcinogenesis. Moreover, additional oncogenes, tumor suppressor genes, genes involved in protein complexes, and genes obtained after functional profiling were merged with the bottleneck genes to form the final gene signature of 38 upregulated and 10 downregulated genes. We used the initial and final NPC gene signatures to query the Connectivity Map, respectively, and found that target reduction through our pipeline could efficiently uncover potential drugs with cytotoxicity to NPC cancer cells. An integrative Web site (http://140.109.23.188:8080/NPC) was established to facilitate future NPC research. This in silico approach, from target prioritization to potential drugs identification, might be an effective method for various cancer researches.
机译:鼻咽癌(NPC)在西方国家相对罕见,但在南亚是常见的癌症。许多差异表达的基因已经与NPC相关。然而,如何对未分类基因清单中的治疗靶标和潜在药物进行优先排序仍然未知。我们首先从已发表的微阵列数据和主要文献中收集了558个上调的NPC基因和993个下调的NPC基因。然后,我们推测基因签名转换为蛋白质-蛋白质相互作用网络并进行拓扑分析可以提供对参与NPC肿瘤发生的关键调控因子的了解。特别令人感兴趣的是推断的NPC网络中存在称为完全连接子图的集团。这些基于群体的枢纽与三个以上的查询相关联,并且在NPC蛋白质-蛋白质相互作用网络中的排名高于其他节点,通过路径分析进一步缩小了范围,以检索24个上调和6个下调的瓶颈基因来预测NPC致癌作用。此外,将其他癌基因,肿瘤抑制基因,蛋白质复合物所涉及的基因以及功能分析后获得的基因与瓶颈基因合并,以形成38个上调和10个下调的基因的最终基因特征。我们分别使用最初和最终的NPC基因签名来查询“连通性图”,发现通过我们的管线进行靶点降低可以有效地发现对NPC癌细胞具有细胞毒性的潜在药物。建立了一个综合网站(http://140.109.23.188:8080/NPC),以促进未来的NPC研究。从靶标优先次序到潜在药物识别的这种计算机方法可能是各种癌症研究的有效方法。

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