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Critical nodes reveal peculiar features of human essential genes and protein interactome

机译:关键节点揭示了人类必需基因和蛋白质相互作用组的独特特征

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Network-based ranking methods (e.g., centrality analysis) have found extensive use in systems biology and network medicine for the prediction of essential proteins, for the prioritization of drug targets candidates in the treatment of several pathologies and in biomarker discovery, and for human disease genes identification. We here studied the connectivity of the human protein-protein interaction network (i.e., the interactome) to find the nodes whose removal has the heaviest impact on the network, i.e., maximizes its fragmentation. Such nodes are known as Critical Nodes (CNs). Specifically, we implemented a Critical Node Heuristic (CNH) and compared its performance against other four heuristics based on well known centrality measures. To better understand the structure of the interactome, the CNs' role played in the network, and the different heuristics' capabilities to grasp biologically relevant nodes, we compared the sets of nodes identified as CNs by each heuristic with two experimentally validated sets of essential genes, i.e., the genes whose removal impact on a given organism's ability to survive. Our results show that classical centrality measures (i.e., closeness centrality, degree) found more essential genes with respect to CNH on the current version of the human interactome, however the removal of such nodes does not have the greatest impact on interactome connectivity, while, interestingly, the genes identified by CNH show peculiar characteristics both from the topological and the biological point of view. Finally, even if a relevant fraction of essential genes is found via the classical centrality measures, the same measures seem to fail in identifying the whole set of essential genes, suggesting once again that some of them are not central in the network, that there may be biases in the current interaction data, and that different, combined graph theoretical and other techniques should be applied for their discovery.
机译:基于网络的排名方法(例如集中度分析)已广泛用于系统生物学和网络医学中,用于预测必需蛋白,在治疗几种病理学和生物标志物以及人类疾病中优先选择候选药物基因鉴定。我们在这里研究了人类蛋白质-蛋白质相互作用网络(即相互作用组)的连通性,以发现其去除对网络影响最大的节点,即最大程度地使其碎片化。这样的节点称为关键节点(CN)。具体来说,我们实施了关键节点启发式算法(CNH),并根据众所周知的集中度度量将其性能与其他四种启发式算法进行了比较。为了更好地了解交互基因组的结构,CN在网络中所扮演的角色以及不同的启发式方法掌握生物学相关节点的能力,我们将每种启发式方法识别为CN的节点集与两个经过实验验证的基本基因集进行了比较,即其去除会影响给定生物体生存能力的基因。我们的结果表明,在当前版本的人类互动组中,经典的集中度度量(即,紧密度集中度,程度)发现了相对于CNH更为重要的基因,但是,去除此类结节对互动组的连接性影响不大,而有趣的是,从拓扑和生物学的角度来看,CNH鉴定的基因均显示出独特的特征。最后,即使通过经典的中心度测度找到了一定比例的必需基因,同样的测度似乎也未能识别出全部必需基因,这再次表明它们中的一些不在网络的中心,这可能是因为在当前交互数据中存在偏见,因此应使用不同的组合图理论和其他技术来发现它们。

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