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Comprehensive identification of immune-associated biomarkers based on network and mRNA expression patterns in membranous glomerulonephritis

机译:基于网络和mRNA表达模式的膜性肾小球肾炎免疫相关生物标志物的全面鉴定

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Membranous glomerulonephritis (MGN) is the most common cause of nephrotic syndrome in adult patients. Despite extensive evidences suggested that many immune-related genes could serve as effective biomarkers in MGN, the potential has not been sufficiently understood because of most previous studies have concentrated on individual gene and not the entire interaction network. Here, we integrated multiple levels of data containing immune-related genes, MGN-related genes, protein–protein interaction (PPI) networks and gene expression profiling data to construct an immune or MGN-directed neighbor network (IOMDN network) and an MGN-related genes-directed network (MGND network). Our analysis suggested that immune-related genes in the PPI network have special topological characteristics and expression pattern related to MGN. We also identified five network modules which showed tighter network structure and stronger correlation of expression. In addition, functional and drug target analyses of genes in modules indicated that the potential mechanism for MGN. Collectively, these results indicated that the strong associations between immune and MGN and showed the potential of immune-related genes as novel diagnostic and therapeutic targets for MGN.
机译:膜性肾小球肾炎(MGN)是成年患者肾病综合征的最常见原因。尽管有大量证据表明许多免疫相关基因可以作为MGN中的有效生物标志物,但由于大多数先前的研究都集中在单个基因而非整个相互作用网络上,因此尚未充分了解其潜力。在这里,我们整合了包含免疫相关基因,MGN相关基因,蛋白质-蛋白质相互作用(PPI)网络和基因表达谱数据的多层次数据,以构建免疫或MGN定向邻居网络(IOMDN网络)和MGN-相关基因定向网络(MGND网络)。我们的分析表明,PPI网络中与免疫相关的基因具有与MGN相关的特殊拓扑特征和表达模式。我们还确定了五个网络模块,它们显示出更紧密的网络结构和更强的表达相关性。此外,对模块中基因的功能和药物靶标分析表明,MGN的潜在机制。总的来说,这些结果表明免疫和MGN之间有很强的联系,并显示了免疫相关基因作为MGN新型诊断和治疗靶标的潜力。

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