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SAMNet: a network-based approach to integrate multi-dimensional high throughput datasets

机译:SAMNet:一种基于网络的方法来集成多维高吞吐量数据集

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The rapid development of high throughput biotechnologies has led to an onslaught of data describing genetic perturbations and changes in mRNA and protein levels in the cell. Because each assay provides a one-dimensional snapshot of active signaling pathways, it has become desirable to perform multiple assays (e.g. mRNA expression and phospho-proteomics) to measure a single condition. However, as experiments expand to accommodate various cellular conditions, proper analysis and interpretation of these data have become more challenging. Here we introduce a novel approach called SAMNet, for Simultaneous Analysis of Multiple Networks, that is able to interpret diverse assays over multiple perturbations. The algorithm uses a constrained optimization approach to integrate mRNA expression data with upstream genes, selecting edges in the protein–protein interaction network that best explain the changes across all perturbations. The result is a putative set of protein interactions that succinctly summarizes the results from all experiments, highlighting the network elements unique to each perturbation. We evaluated SAMNet in both yeast and human datasets. The yeast dataset measured the cellular response to seven different transition metals, and the human dataset measured cellular changes in four different lung cancer models of Epithelial-Mesenchymal Transition (EMT), a crucial process in tumor metastasis. SAMNet was able to identify canonical yeast metal-processing genes unique to each commodity in the yeast dataset, as well as human genes such as β-catenin and TCF7L2/TCF4 that are required for EMT signaling but escaped detection in the mRNA and phospho-proteomic data. Moreover, SAMNet also highlighted drugs likely to modulate EMT, identifying a series of less canonical genes known to be affected by the BCR-ABL inhibitor imatinib (Gleevec), suggesting a possible influence of this drug on EMT.
机译:高通量生物技术的迅速发展导致描述基因扰动以及细胞中mRNA和蛋白质水平变化的数据激增。因为每种测定法都提供了活跃信号通路的一维快照,所以进行多种测定法(例如mRNA表达和磷酸化蛋白质组学)来测量单个条件已成为人们所希望的。然而,随着实验的扩展以适应各种细胞条件,对这些数据的正确分析和解释变得更具挑战性。在这里,我们介绍了一种称为SAMNet的新颖方法,用于同时进行多个网络分析,该方法能够解释多种扰动下的各种分析方法。该算法使用约束优化方法将mRNA表达数据与上游基因整合在一起,在蛋白质-蛋白质相互作用网络中选择能最好地解释所有扰动变化的边缘。结果是一组假定的蛋白质相互作用,它简要总结了所有实验的结果,突出了每种扰动所特有的网络元素。我们在酵母和人类数据集中评估了SAMNet。酵母数据集测量了对七种不同过渡金属的细胞反应,而人类数据集测量了四种不同的肺癌上皮-间充质转化(EMT)模型的细胞变化,这是肿瘤转移的关键过程。 SAMNet能够识别出酵母数据集中每种商品所独有的规范的酵母金属加工基因,以及人类基因,例如EMT信号所需的β-catenin和TCF7L2 / TCF4基因,但无法通过mRNA和磷酸化蛋白质组学检测数据。此外,SAMNet还着重介绍了可能调节EMT的药物,确定了一系列已知受BCR-ABL抑制剂伊马替尼(Gleevec)影响的较少规范的基因,表明该药物可能对EMT产生影响。

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