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Discovering the hidden sub-network component in a ranked list of genes or proteins derived from genomic experiments

机译:在来自基因组实​​验的基因或蛋白质的排名列表中发现隐藏的子网组件

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Genomic experiments (e.g. differential gene expression, single-nucleotide polymorphism association) typically produce ranked list of genes. We present a simple but powerful approach which uses protein–protein interaction data to detect sub-networks within such ranked lists of genes or proteins. We performed an exhaustive study of network parameters that allowed us concluding that the average number of components and the average number of nodes per component are the parameters that best discriminate between real and random networks. A novel aspect that increases the efficiency of this strategy in finding sub-networks is that, in addition to direct connections, also connections mediated by intermediate nodes are considered to build up the sub-networks. The possibility of using of such intermediate nodes makes this approach more robust to noise. It also overcomes some limitations intrinsic to experimental designs based on differential expression, in which some nodes are invariant across conditions. The proposed approach can also be used for candidate disease-gene prioritization. Here, we demonstrate the usefulness of the approach by means of several case examples that include a differential expression analysis in Fanconi Anemia, a genome-wide association study of bipolar disorder and a genome-scale study of essentiality in cancer genes. An efficient and easy-to-use web interface (available at http://www.babelomics.org) based on HTML5 technologies is also provided to run the algorithm and represent the network.
机译:基因组实验(例如差异基因表达,单核苷酸多态性关联)通常产生基因的排名列表。我们提出了一种简单而有效的方法,该方法使用蛋白质-蛋白质相互作用数据来检测基因或蛋白质的此类排序列表内的子网。我们对网络参数进行了详尽的研究,使我们能够得出以下结论:平均组件数和每个组件的平均节点数是最能区分真实网络和随机网络的参数。提高此策略查找子网效率的一个新颖方面是,除了直接连接之外,还考虑了由中间节点介导的连接来构建子网。使用这样的中间节点的可能性使该方法对噪声更鲁棒。它还克服了基于差异表达的实验设计所固有的一些局限性,其中某些节点在条件之间是不变的。所提出的方法还可以用于候选疾病基因优先级划分。在这里,我们通过几个案例来证明该方法的有效性,这些案例包括Fanconi贫血中的差异表达分析,双相情感障碍的全基因组关联研究以及癌症基因必需性的基因组规模研究。还提供了基于HTML5技术的高效且易于使用的Web界面(可从http://www.babelomics.org获得)来运行算法并表示网络。

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