flowNet: Flow-Based Approach for Efficient Analysis of Complex Biological Networks

Young-Rae Cho, Lei Shi, A. Zhang
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引用次数: 10

Abstract

Biological networks having complex connectivity have been widely studied recently. By characterizing their inherent and structural behaviors in a topological perspective, these studies have attempted to discover hidden knowledge in the systems. However, even though various algorithms with graph-theoretical modeling have provided fundamentals in the network analysis, the availability of practical approaches to efficiently handle the complexity has been limited. In this paper, we present a novel flow-based approach, called flowNet, to efficiently analyze large-sized, complex networks. Our approach is based on the functional influence model that quantifies the influence of a biological component on another. We introduce a dynamic flow simulation algorithm to generate a flow pattern which is a unique characteristic for each component. The set of patterns can be used in identifying functional modules (i.e., clustering). The proposed flow simulation algorithm runs very efficiently in sparse networks. Since our approach uses a weighted network as an input, we also discuss supervised and unsupervised weighting schemes for unweighted biological networks. As experimental results in real applications to the yeast protein interaction network, we demonstrate that our approach outperforms previous graph clustering methods with respect to accuracy.
flowNet:基于流的复杂生物网络高效分析方法
具有复杂连通性的生物网络近年来得到了广泛的研究。这些研究从拓扑学的角度刻画了系统的固有和结构行为,试图发现系统中隐藏的知识。然而,尽管各种图形理论建模算法为网络分析提供了基础,但有效处理复杂性的实用方法的可用性仍然有限。在本文中,我们提出了一种新的基于流的方法,称为flowNet,以有效地分析大型复杂网络。我们的方法基于功能影响模型,该模型量化了一种生物成分对另一种生物成分的影响。我们引入了一种动态流动模拟算法,以生成每个组件具有独特特征的流型。这组模式可用于识别功能模块(即聚类)。本文提出的流仿真算法在稀疏网络中运行效率很高。由于我们的方法使用加权网络作为输入,我们还讨论了非加权生物网络的监督和无监督加权方案。作为酵母蛋白相互作用网络实际应用的实验结果,我们证明了我们的方法在准确性方面优于以前的图聚类方法。
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