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Inferring hidden causal relations between pathway members using reduced Google matrix of directed biological networks

机译:使用有向生物网络的简化Google矩阵推断通路成员之间的隐藏因果关系

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摘要

Signaling pathways represent parts of the global biological molecular network which connects them into a seamless whole through complex direct and indirect (hidden) crosstalk whose structure can change during development or in pathological conditions. We suggest a novel methodology, called Googlomics, for the structural analysis of directed biological networks using spectral analysis of their Google matrices, using parallels with quantum scattering theory, developed for nuclear and mesoscopic physics and quantum chaos. We introduce analytical “reduced Google matrix” method for the analysis of biological network structure. The method allows inferring hidden causal relations between the members of a signaling pathway or a functionally related group of genes. We investigate how the structure of hidden causal relations can be reprogrammed as a result of changes in the transcriptional network layer during cancerogenesis. The suggested Googlomics approach rigorously characterizes complex systemic changes in the wiring of large causal biological networks in a computationally efficient way.
机译:信号通路代表了全球生物分子网络的各个部分,它们通过复杂的直接和间接(隐藏)串扰将它们连接成一个无缝的整体,其结构可能在发育过程中或在病理条件下发生变化。我们建议使用一种称为Googlomics的新颖方法,对有向生物网络进行结构分析,利用其Google矩阵的光谱分析,并与为核和介观物理学以及量子混沌开发的量子散射理论相平行。我们介绍了用于分析生物网络结构的解析“简化Google矩阵”方法。该方法允许推断信号传导途径的成员或基因的功能相关组之间的隐藏的因果关系。我们调查如何隐藏因果关系的结构可以重新编程,因为在癌症发生过程中转录网络层的变化。建议的Googlomics方法以计算有效的方式严格刻画了大型因果生物网络布线中的复杂系统变化。

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