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Differential Network Analysis of Anti-sense Regulation

机译:反义监管的差异网络分析

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A challenging task in systems biology is to decipher cell regulation mechanisms. By comparing networks observed in two different situations, the differential network analysis approach enables to highlight interaction differences that reveal specific cellular responses. The aim of our work is to study the role of natural anti-sense transcription on cellular regulation mechanisms. Our proposal is to build and compare networks obtained from two different sets of actors: the "usual" sense actors on one hand and the sense and anti-sense actors on the other hand. Our study only considers the most significant interactions, called an Extended Core Network; therefore our differential analysis identifies important interactions that axe impacted by anti-sense transcription. This paper first introduces our inference method of an Extended Core Network; this method is inspired by C3NET, but whereas C3NET only computes one interaction per gene, we propose to consider the most significant interactions for each gene. Secondly, we define the differential network analysis of two extended core networks inferred with and without anti-sense actors. On a local view, this analysis relies on change motifs that describe which genes have their most important interactions modified when the anti-sense transcripts are considered; they are called AS-impacted genes. Then from a more global view, we consider how the relationships between these AS-impacted genes are rewired in the network with anti-sense actors. Our analysis is performed by computing Steiner trees that represent minimal subnetworks connecting the AS-impacted genes. We show that the visualisation of these results help the biologists to identify interesting parts of the networks.
机译:系统生物学中的一项艰巨任务是破译细胞调节机制。通过比较在两种不同情况下观察到的网络,差分网络分析方法能够突出显示特定细胞反应的相互作用差异。我们工作的目的是研究天然反义转录在细胞调节机制中的作用。我们的建议是建立和比较从两组不同的参与者获得的网络:一方面是“通常的”感觉参与者,另一方面是感觉和反义参与者。我们的研究仅考虑最重要的交互作用,即扩展核心网络。因此,我们的差异分析确定了受反义转录影响的重要相互作用。本文首先介绍了我们对扩展核心网络的推断方法;此方法受C3NET的启发,但是C3NET每个基因只计算一个相互作用,但我们建议考虑每个基因的最重要相互作用。其次,我们定义了两个带有或不带有反义参与者的扩展核心网络的差分网络分析。从局部来看,这种分析依赖于变化基序,该基序描述了当考虑反义转录本时哪些基因的最重要的相互作用被修饰。它们被称为AS影响基因。然后,从更全局的角度来看,我们考虑如何通过反义分子在网络中重新关联这些AS受影响的基因之间的关系。我们的分析是通过计算Steiner树进行的,Steiner树表示连接AS影响基因的最小子网。我们表明,这些结果的可视化有助于生物学家识别网络中有趣的部分。

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