论文标题

在复杂网络中导航微分结构

Navigating differential structures in complex networks

论文作者

Portes, Leonardo L., Small, Michael

论文摘要

系统的网络表示中的结构变化(例如,不同的实验条件,时间演变)可以提供有关其组织,功能以及对外部扰动的响应方式的见解。对基因网络如何应对疾病和治疗方法的更深入的理解可能是通过这种差异网络分析点获得的收益的最敏锐的证明,这导致了过去十年中新的数字技术的爆炸。但是,即使在少数实验条件下,{\ it}以集中注意力或如何导航差异结构也可能是压倒性的。在本文中,我们提出了一种理论和方法学实现,以同时在网络内部和网络之间同时表征节点的共享“结构角色”,其结果是高度{\ em embleable}映射。用随机块模型生成的数值基准研究了主要特征和精度。结果表明,它可以在具有截然不同的(i)社区规模和(ii)社区总数的情况下提供细微的可解释信息,并且(iii)即使在比较大量100个网络的情况下(例如,对于100个不同的实验条件)。然后,我们显示了该方法的强度是其“讲故事”的“讲故事”的表征,对一组网络中编码的信息进行了表征,该信息可用于查明意外的差异结构,从而导致进一步的研究并提供新的见解。我们提供了来自两种细胞类型的四个基因共表达网络的说明性,探索性分析,$ \ times $两种处理(干扰素 - $β$刺激或控制)。此处提出的方法使我们能够详细说明并测试与{\ em unique}和{\ em Scertle}相关的一组非常特定的假设,这些网络之间的结构差异。

Structural changes in a network representation of a system (e.g.,different experimental conditions, time evolution), can provide insight on its organization, function and on how it responds to external perturbations. The deeper understanding of how gene networks cope with diseases and treatments is maybe the most incisive demonstration of the gains obtained through this differential network analysis point-of-view, which lead to an explosion of new numeric techniques in the last decade. However, {\it where} to focus ones attention, or how to navigate through the differential structures can be overwhelming even for few experimental conditions. In this paper, we propose a theory and a methodological implementation for the characterization of shared "structural roles" of nodes simultaneously within and between networks, whose outcome is a highly {\em interpretable} map. The main features and accuracy are investigated with numerical benchmarks generated by a stochastic block model. Results show that it can provide nuanced and interpretable information in scenarios with very different (i) community sizes and (ii) total number of communities, and (iii) even for a large number of 100 networks been compared (e.g., for 100 different experimental conditions). Then, we show evidence that the strength of the method is its "story-telling"-like characterization of the information encoded in a set of networks, which can be used to pinpoint unexpected differential structures, leading to further investigations and providing new insights. We provide an illustrative, exploratory analysis of four gene co-expression networks from two cell types $\times$ two treatments (interferon-$β$ stimulated or control). The method proposed here allowed us to elaborate and test a set of very specific hypotheses related to {\em unique} and {\em subtle} nuances of the structural differences between these networks.

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