Abedi Maryam, Gheisari Yousof
Department of Genetics and Molecular Biology, Isfahan University of Medical Sciences , Isfahan , Iran.
Department of Genetics and Molecular Biology, Isfahan University of Medical Sciences , Isfahan , Iran ; Regenerative Medicine Lab, Isfahan Kidney Diseases Research Center, Isfahan University of Medical Sciences , Isfahan , Iran.
PeerJ. 2015 Oct 1;3:e1284. doi: 10.7717/peerj.1284. eCollection 2015.
In spite of huge efforts, chronic diseases remain an unresolved problem in medicine. Systems biology could assist to develop more efficient therapies through providing quantitative holistic sights to these complex disorders. In this study, we have re-analyzed a microarray dataset to identify critical signaling pathways related to diabetic nephropathy. GSE1009 dataset was downloaded from Gene Expression Omnibus database and the gene expression profile of glomeruli from diabetic nephropathy patients and those from healthy individuals were compared. The protein-protein interaction network for differentially expressed genes was constructed and enriched. In addition, topology of the network was analyzed to identify the genes with high centrality parameters and then pathway enrichment analysis was performed. We found 49 genes to be variably expressed between the two groups. The network of these genes had few interactions so it was enriched and a network with 137 nodes was constructed. Based on different parameters, 34 nodes were considered to have high centrality in this network. Pathway enrichment analysis with these central genes identified 62 inter-connected signaling pathways related to diabetic nephropathy. Interestingly, the central nodes were more informative for pathway enrichment analysis compared to all network nodes and also 49 differentially expressed genes. In conclusion, we here show that central nodes in protein interaction networks tend to be present in pathways that co-occur in a biological state. Also, this study suggests a computational method for inferring underlying mechanisms of complex disorders from raw high-throughput data.
尽管付出了巨大努力,但慢性病在医学领域仍是一个尚未解决的问题。系统生物学可以通过为这些复杂疾病提供定量的整体视角,协助开发更有效的治疗方法。在本研究中,我们重新分析了一个微阵列数据集,以识别与糖尿病肾病相关的关键信号通路。从基因表达综合数据库下载了GSE1009数据集,并比较了糖尿病肾病患者和健康个体肾小球的基因表达谱。构建并富集了差异表达基因的蛋白质-蛋白质相互作用网络。此外,分析了网络的拓扑结构,以识别具有高中介中心性参数的基因,然后进行通路富集分析。我们发现两组之间有49个基因表达存在差异。这些基因的网络相互作用较少,因此对其进行了富集,并构建了一个包含137个节点的网络。基于不同参数,该网络中有34个节点被认为具有高中介中心性。对这些中心基因进行通路富集分析,确定了62条与糖尿病肾病相关的相互连接的信号通路。有趣的是,与所有网络节点以及49个差异表达基因相比,中心节点在通路富集分析中提供的信息更多。总之,我们在此表明,蛋白质相互作用网络中的中心节点往往存在于生物状态中共现的通路中。此外,本研究还提出了一种从原始高通量数据推断复杂疾病潜在机制的计算方法。