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Principal network analysis: identification of subnetworks representing major dynamics using gene expression data

机译:主要网络分析:使用基因表达数据识别代表主要动态的子网

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摘要

>Motivation: Systems biology attempts to describe complex systems behaviors in terms of dynamic operations of biological networks. However, there is lack of tools that can effectively decode complex network dynamics over multiple conditions.>Results: We present principal network analysis (PNA) that can automatically capture major dynamic activation patterns over multiple conditions and then generate protein and metabolic subnetworks for the captured patterns. We first demonstrated the utility of this method by applying it to a synthetic dataset. The results showed that PNA correctly captured the subnetworks representing dynamics in the data. We further applied PNA to two time-course gene expression profiles collected from (i) MCF7 cells after treatments of HRG at multiple doses and (ii) brain samples of four strains of mice infected with two prion strains. The resulting subnetworks and their interactions revealed network dynamics associated with HRG dose-dependent regulation of cell proliferation and differentiation and early PrPSc accumulation during prion infection.>Availability: The web-based software is available at: .>Contact: ; >Supplementary information: are available at Bioinformatics online.
机译:>动机:系统生物学试图根据生物网络的动态运行来描述复杂的系统行为。但是,缺乏能够在多种情况下有效解码复杂网络动态的工具。>结果:我们提出的主网络分析(PNA)可以自动捕获多种条件下的主要动态激活模式,然后生成蛋白质以及捕获的模式的代谢子网。我们首先通过将其应用于综合数据集来演示了该方法的实用性。结果表明,PNA正确捕获了代表数据动态的子网。我们进一步将PNA应用于两个时间过程基因表达谱,这些谱是从(i)多剂量HRG处理后的(i)MCF7细胞和(ii)感染了两个)病毒株的四株小鼠的脑样本中获得的。由此产生的子网及其相互作用揭示了网络动力学与H病毒感染期间HRG剂量依赖性调节细胞增殖和分化以及早期PrP Sc 积累有关。>可用性:该软件可从以下网站获取:>联系方式; >补充信息:可在线访问生物信息学。

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