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Network inference through synergistic subnetwork evolution

机译:通过协同子网演进进行网络推断

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摘要

Study of signaling networks is important for a better understanding of cell behaviors e.g., growth, differentiation, metabolism, proptosis, and gaining deeper insights into the molecular mechanisms of complex diseases. While there have been many successes in developing computational approaches for identifying potential genes and proteins involved in cell signaling, new methods are needed for identifying network structures that depict underlying signal cascading mechanisms. In this paper, we propose a new computational approach for inferring signaling network structures from overlapping gene sets related to the networks. In the proposed approach, a signaling network is represented as a directed graph and is viewed as a union of many active paths representing linear and overlapping chains of signal cascading activities in the network. Gene sets represent the sets of genes participating in active paths without prior knowledge of the order in which genes occur within each path. From a compendium of unordered gene sets, the proposed algorithm reconstructs the underlying network structure through evolution of synergistic active paths. In our context, the extent of edge overlapping among active paths is used to define the synergy present in a network. We evaluated the performance of the proposed algorithm in terms of its convergence and recovering true active paths by utilizing four gene set compendiums derived from the KEGG database. Evaluation of results demonstrate the ability of the algorithm in reconstructing the underlying networks with high accuracy and precision.
机译:信号网络的研究对于更好地了解细胞行为(例如生长,分化,代谢,突生)以及深入了解复杂疾病的分子机制具有重要意义。虽然在开发计算方法以鉴定涉及细胞信号传导的潜在基因和蛋白质方面已取得了许多成功,但仍需要新的方法来鉴定描述潜在信号级联机制的网络结构。在本文中,我们提出了一种新的计算方法,用于从与网络相关的重叠基因集中推断信号网络结构。在提出的方法中,信令网络被表示为有向图,并被视为许多活动路径的并集,这些路径代表了网络中信号级联活动的线性和重叠链。基因集代表参与活动​​路径的基因集,而无需事先知道每个路径中基因发生的顺序。从无序基因集的纲要中,提出的算法通过协同活动路径的演化来重构底层网络结构。在我们的上下文中,活动路径之间边缘重叠的程度用于定义网络中存在的协同作用。我们通过利用从KEGG数据库获得的四个基因集纲要,评估了该算法在收敛性和恢复真实有效路径方面的性能。结果评估表明该算法具有以高精度和高精度重建底层网络的能力。

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