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Fuzzy Logic Analysis of Kinase Pathway Crosstalk inTNF/EGF/Insulin-Induced Signaling

机译:激酶通路串扰的模糊逻辑分析。TNF / EGF /胰岛素诱导的信号传导

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摘要

When modeling cell signaling networks, a balance must be struck between mechanistic detail and ease of interpretation. In this paper we apply a fuzzy logic framework to the analysis of a large, systematic dataset describing the dynamics of cell signaling downstream of TNF, EGF, and insulin receptors in human colon carcinoma cells. Simulations based on fuzzy logic recapitulate most features of the data and generate several predictions involving pathway crosstalk and regulation. We uncover a relationship between MK2 and ERK pathways that might account for the previously identified pro-survival influence of MK2. We also find unexpected inhibition of IKK following EGF treatment, possibly due to down-regulation of autocrine signaling. More generally, fuzzy logic models are flexible, able to incorporate qualitative and noisy data, and powerful enough to produce quantitative predictions and new biological insights about the operation of signaling networks.
机译:在对小区信号网络建模时,必须在机制细节和易于解释之间取得平衡。在本文中,我们将模糊逻辑框架应用于大型系统数据集的分析,该数据集描述了人类结肠癌细胞中TNF,EGF和胰岛素受体下游细胞信号传导的动态。基于模糊逻辑的仿真概括了数据的大多数特征,并生成了一些涉及路径串扰和调节的预测。我们发现MK2和ERK途径之间的关系可能解释了先前确定的MK2对生存的影响。我们还发现EGF治疗后IKK出乎意料的抑制作用,可能是由于自分泌信号的下调。更一般而言,模糊逻辑模型具有灵活性,能够合并定性和嘈杂的数据,并且功能强大到可以产生有关信号网络运行的定量预测和新的生物学见解。

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