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Detection of Composite Communities in Multiplex Biological Networks

机译:多重生物网络中复合社区的检测

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摘要

The detection of community structure is a widely accepted means of investigating the principles governing biological systems. Recent efforts are exploring ways in which multiple data sources can be integrated to generate a more comprehensive model of cellular interactions, leading to the detection of more biologically relevant communities. In this work, we propose a mathematical programming model to cluster multiplex biological networks, i.e. multiple network slices, each with a different interaction type, to determine a single representative partition of composite communities. Our method, known as SimMod, is evaluated through its application to yeast networks of physical, genetic and co-expression interactions. A comparative analysis involving partitions of the individual networks, partitions of aggregated networks and partitions generated by similar methods from the literature highlights the ability of SimMod to identify functionally enriched modules. It is further shown that SimMod offers enhanced results when compared to existing approaches without the need to train on known cellular interactions.
机译:群落结构的检测是研究生物系统原理的一种广泛接受的方法。最近的努力正在探索可以整合多个数据源以生成更全面的细胞相互作用模型的方法,从而可以发现生物学上更相关的群落。在这项工作中,我们提出了一个数学编程模型来对多重生物网络进行聚类,即多个网络切片,每个切片具有不同的交互类型,以确定复合社区的单个代表性分区。我们的方法称为SimMod,通过将其应用于物理,遗传和共表达相互作用的酵母网络进行评估。涉及单个网络分区,聚合网络分区和通过文献中类似方法生成的分区的比较分析突出了SimMod识别功能丰富的模块的能力。进一步表明,与现有方法相比,SimMod可以提供增强的结果,而无需训练已知的细胞相互作用。

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