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Discovering dominant pathways and signal-response relationships in signaling networks through nonparametric approaches

机译:通过非参数方法发现信令网络中的主要途径和信号响应关系

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摘要

A signaling pathway is a sequence of proteins and passenger molecules that transmits information from the cell surface to target molecules. Understanding signal transduction process requires detailed description of the involved pathways. Several methods and tools resolved this problem by incorporating genomic and proteomic data. However, the difficulty of obtaining prior knowledge of complex signaling networks limited the applicability of these tools. In this study, based on the simulation of signal flow in signaling network, we introduce a method for determining dominant pathways and signal response to stimulations. The model uses topology-weighted transit compartment approach and comprises four main steps which include weighting the edges, simulating signal transduction in the network (weighting the nodes), finding paths between initial and target nodes, and assigning a significance score to each path. We applied the proposed model to eighty-three signaling networks by using biologically derived source and sink molecules. The recovered dominant paths matched many known signaling pathways and suggesting a promising index to analyze the phenotype essentiality of molecule encoding paths. We also modeled the stimulus-response relations in long and short-term synaptic plasticity based on the dominant signaling pathway concept. We showed that the proposed method not only accurately determines dominant signaling pathways, but also identifies effective points of intervention in signal transduction.
机译:信号通路是一系列蛋白质和过客分子的序列,可将信息从细胞表面传递到靶分子。了解信号转导过程需要详细描述所涉及的途径。几种方法和工具通过整合基因组和蛋白质组数据解决了这个问题。但是,难以获得复杂信令网络的先验知识限制了这些工具的适用性。在这项研究中,基于对信号网络中信号流的仿真,我们介绍了一种确定主导路径和信号对刺激的响应的方法。该模型使用拓扑加权的运输隔室方法,包括四个主要步骤,包括对边缘进行加权,在网络中模拟信号转换(对节点进行加权),查找初始节点与目标节点之间的路径以及为每个路径分配显着性得分。我们通过使用生物衍生的源和汇分子将提出的模型应用于八十三个信号网络。回收的优势路径匹配许多已知的信号通路,并提出了一个有希望的指标来分析分子编码路径的表型本质。我们还基于主导的信号通路概念,对长期和短期突触可塑性中的刺激-反应关系进行了建模。我们表明,所提出的方法不仅可以准确地确定主导信号通路,而且可以识别信号转导的有效干预点。

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