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首页> 外文期刊>Cancer research: The official organ of the American Association for Cancer Research, Inc >Comparing signaling networks between normal and transformed hepatocytes using discrete logical models.
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Comparing signaling networks between normal and transformed hepatocytes using discrete logical models.

机译:使用离散逻辑模型比较正常肝细胞和转化肝细胞之间的信号网络。

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摘要

Substantial effort in recent years has been devoted to constructing and analyzing large-scale gene and protein networks on the basis of "omic" data and literature mining. These interaction graphs provide valuable insight into the topologies of complex biological networks but are rarely context specific and cannot be used to predict the responses of cell signaling proteins to specific ligands or drugs. Conversely, traditional approaches to analyzing cell signaling are narrow in scope and cannot easily make use of network-level data. Here, we combine network analysis and functional experimentation by using a hybrid approach in which graphs are converted into simple mathematical models that can be trained against biochemical data. Specifically, we created Boolean logic models of immediate-early signaling in liver cells by training a literature-based prior knowledge network against biochemical data obtained from primary human hepatocytes and 4 hepatocellular carcinoma cell lines exposed to combinations of cytokines and small-molecule kinase inhibitors. Distinct families of models were recovered for each cell type, and these families clustered topologically into normal and diseased sets.
机译:近年来,已经在“组学”数据和文献挖掘的基础上致力于建立和分析大规模基因和蛋白质网络。这些相互作用图提供了对复杂生物网络拓扑结构的有价值的见解,但很少是特定于上下文的,不能用于预测细胞信号蛋白对特定配体或药物的反应。相反,用于分析小区信令的传统方法范围狭窄并且不能轻易利用网络级数据。在这里,我们通过使用一种混合方法将网络分析和功能实验结合起来,在该方法中,图形被转换成可以针对生化数据进行训练的简单数学模型。具体而言,我们通过针对来自原代人肝细胞和4种暴露于细胞因子和小分子激酶抑制剂组合的肝癌细胞系的生化数据训练基于文献的先验知识网络,建立了肝细胞中立即早期信号传递的布尔逻辑模型。针对每种细胞类型,恢复了不同的模型家族,并且这些家族在拓扑上聚集成正常和患病组。

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