Yu Hui, Lin Chen-Ching, Li Yuan-Yuan, Zhao Zhongming
BMC Syst Biol. 2013;7 Suppl 5(Suppl 5):S2. doi: 10.1186/1752-0509-7-S5-S2. Epub 2013 Dec 9.
Gene expression profiles have been frequently integrated with the human protein interactome to uncover functional modules under specific conditions like disease state. Beyond traditional differential expression analysis, differential co-expression analysis has emerged as a robust approach to reveal condition-specific network modules, with successful applications in a few human disease studies. Hepatocellular carcinoma (HCC), which is often interrelated with the Hepatitis C virus, typically develops through multiple stages. A comprehensive investigation of HCC progression-specific differential co-expression modules may advance our understanding of HCC's pathophysiological mechanisms.
Compared with differentially expressed genes, differentially co-expressed genes were found more likely enriched with Hepatitis C virus binding proteins and cancer-mutated genes, and they were clustered more densely in the human reference protein interaction network. These observations indicated that a differential co-expression approach could outperform the standard differential expression network analysis in searching for disease-related modules. We then proposed a differential co-expression network approach to uncover network modules involved in HCC development. Specifically, we discovered subnetworks that enriched differentially co-expressed gene pairs in each HCC transition stage, and further resolved modules with coherent co-expression change patterns over all HCC developmental stages. Our identified network modules were enriched with HCC-related genes and implicated in cancer-related biological functions. In particular, APC and YWHAZ were highlighted as two most remarkable genes in the network modules, and their dynamic interaction partnership was resolved in HCC development.
We demonstrated that integration of differential co-expression with the protein interactome could outperform the traditional differential expression approach in discovering network modules of human diseases. In our application of this approach to HCC's gene expression data, we successfully identified subnetworks with marked differential co-expression in individual HCC stage transitions and network modules with coherent co-expression change patterns over all HCC developmental stages. Our results shed light on subtle HCC mechanisms, including temporal activation and dismissal of pivotal functions and dynamic interaction partnerships of key genes.
基因表达谱常与人类蛋白质相互作用组相结合,以揭示特定条件(如疾病状态)下的功能模块。除了传统的差异表达分析外,差异共表达分析已成为一种强大的方法来揭示特定条件下的网络模块,并在一些人类疾病研究中成功应用。肝细胞癌(HCC)通常与丙型肝炎病毒相关,其发展通常经历多个阶段。对HCC进展特异性差异共表达模块的全面研究可能会增进我们对HCC病理生理机制的理解。
与差异表达基因相比,差异共表达基因更有可能富集丙型肝炎病毒结合蛋白和癌症突变基因,并且它们在人类参考蛋白质相互作用网络中聚集得更密集。这些观察结果表明,在寻找疾病相关模块方面,差异共表达方法优于标准的差异表达网络分析。然后,我们提出了一种差异共表达网络方法来揭示参与HCC发展的网络模块。具体而言,我们发现了在每个HCC转变阶段富集差异共表达基因对的子网,并进一步解析了在所有HCC发育阶段具有一致共表达变化模式的模块。我们识别出的网络模块富含HCC相关基因,并涉及癌症相关的生物学功能。特别是,APC和YWHAZ被突出显示为网络模块中两个最显著的基因,并且它们在HCC发展中的动态相互作用伙伴关系得到了解析。
我们证明,差异共表达与蛋白质相互作用组的整合在发现人类疾病的网络模块方面优于传统的差异表达方法。在我们将此方法应用于HCC基因表达数据时,我们成功识别出在各个HCC阶段转变中具有显著差异共表达的子网以及在所有HCC发育阶段具有一致共表达变化模式的网络模块。我们的结果揭示了HCC的细微机制,包括关键功能的暂时激活和解除以及关键基因的动态相互作用伙伴关系。