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SignalNet: Visualization of Signal Network Responses by Quantitative Proteome Data

机译:SignalNet:通过定量蛋白质组数据可视化信号网络响应

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Interactome databases summarize our present knowledge of how proteins can interact at the molecular level under variable conditions. Signal networks, in which proteins and their interactions are represented by nodes and edges, constitute an essential part in these in-teractomes. The subset of nodes and edges, which become involved under certain biological conditions, necessitate the integration of further experimental information. Mass spectrometry used in proteomics can provide such data describing the expression and responses of nodes in signal networks. SignalNet is a program that connects mass spectrometry (MS) data with a protein interaction database to recognize most likely utilized or affected signaling pathways. Regulatory information derived from quantitative MS analyses is used to calculate and visualize which nodes feature altered expression or response levels. Since signals naturally propagate from node to node, SignalNet also emphasizes edges, which are over-connected to several regulated nodes. Both the regulation factor and the robustness of the underlying MS data are statistically evaluated and assigned to the nodes and edges. Thus SignalNet can filter highly complex interactome data to extract information about signal networks coordinating certain biological conditions. Through this filtering ordinarily densely connected interaction networks get purged from irrelevant interactions. By the presentation of a reduced network with respect to the MS data, the actual observed state of the cell can be resolved.
机译:Interactome数据库总结了我们目前有关可变条件下蛋白质如何在分子水平上相互作用的知识。信号网络(其中蛋白质及其相互作用由结点和边缘表示)构成了这些内部信息组的重要组成部分。在某些生物学条件下涉及的节点和边缘的子集需要整合更多的实验信息。蛋白质组学中使用的质谱可以提供描述信号网络中节点表达和响应的数据。 SignalNet是一个程序,它将质谱(MS)数据与蛋白质相互作用数据库相连接,以识别最可能利用或受影响的信号通路。来自定量MS分析的监管信息用于计算和可视化哪些节点具有改变的表达或响应水平。由于信号自然会从一个节点传播到另一个节点,因此SignalNet还强调边缘,这些边缘过度连接到几个受监管的节点。基础MS数据的调节因子和鲁棒性均经过统计评估,并分配给节点和边缘。因此,SignalNet可以过滤高度复杂的相互作用组数据,以提取有关协调某些生物学条件的信号网络的信息。通过这种过滤,通常将密集连接的交互网络从无关的交互中清除。通过呈现相对于MS数据的简化网络,可以解决小区的实际观察状态。

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