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首页> 外文期刊>PLoS Computational Biology >An Integrative -omics Approach to Identify Functional Sub-Networks in Human Colorectal Cancer
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An Integrative -omics Approach to Identify Functional Sub-Networks in Human Colorectal Cancer

机译:识别人类大肠癌功能子网络的集成组学方法

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Emerging evidence indicates that gene products implicated in human cancers often cluster together in “hot spots” in protein-protein interaction (PPI) networks. Additionally, small sub-networks within PPI networks that demonstrate synergistic differential expression with respect to tumorigenic phenotypes were recently shown to be more accurate classifiers of disease progression when compared to single targets identified by traditional approaches. However, many of these studies rely exclusively on mRNA expression data, a useful but limited measure of cellular activity. Proteomic profiling experiments provide information at the post-translational level, yet they generally screen only a limited fraction of the proteome. Here, we demonstrate that integration of these complementary data sources with a “proteomics-first” approach can enhance the discovery of candidate sub-networks in cancer that are well-suited for mechanistic validation in disease. We propose that small changes in the mRNA expression of multiple genes in the neighborhood of a protein-hub can be synergistically associated with significant changes in the activity of that protein and its network neighbors. Further, we hypothesize that proteomic targets with significant fold change between phenotype and control may be used to “seed” a search for small PPI sub-networks that are functionally associated with these targets. To test this hypothesis, we select proteomic targets having significant expression changes in human colorectal cancer (CRC) from two independent 2-D gel-based screens. Then, we use random walk based models of network crosstalk and develop novel reference models to identify sub-networks that are statistically significant in terms of their functional association with these proteomic targets. Subsequently, using an information-theoretic measure, we evaluate synergistic changes in the activity of identified sub-networks based on genome-wide screens of mRNA expression in CRC. Cross-classification experiments to predict disease class show excellent performance using only a few sub-networks, underwriting the strength of the proposed approach in discovering relevant and reproducible sub-networks.
机译:越来越多的证据表明,与人类癌症有关的基因产物通常聚集在蛋白质-蛋白质相互作用(PPI)网络的“热点”中。此外,与传统方法确定的单个靶标相比,最近证明在PPI网络中表现出关于致癌表型的协同差异表达的小型子网是疾病进展的更准确分类器。但是,这些研究中的许多研究仅依赖于mRNA表达数据,这是一种有用但有限的细胞活性测定方法。蛋白质组概况分析实验提供了翻译后水平的信息,但它们通常只筛选有限一部分的蛋白质组。在这里,我们证明了将这些补充数据源与“蛋白质组学优先”方法相集成可以增强癌症中候选子网络的发现,这些子网络非常适合疾病的机理验证。我们建议在蛋白质集线器附近的多个基因的mRNA表达的微小变化可以与该蛋白质及其网络邻居的活性的显着变化协同关联。此外,我们假设在表型和对照之间具有显着倍数变化的蛋白质组学目标可用于“种子”搜索与这些目标功能相关的小型PPI子网。为了验证这一假设,我们从两个独立的基于2D凝胶的屏幕中选择了在人类结直肠癌(CRC)中具有明显表达变化的蛋白质组学靶标。然后,我们使用基于随机游走的网络串扰模型,并开发新颖的参考模型来识别在与这些蛋白质组学目标的功能关联方面具有统计学意义的子网。随后,使用信息理论方法,我们基于CRC中mRNA表达的全基因组筛选,评估了已识别子网的活动中的协同变化。用于预测疾病类别的交叉分类实验仅使用少数几个子网即可显示出优异的性能,从而在发现相关且可复制的子网时证明了该方法的优势。

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