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A noise reducing sampling approach for uncovering critical properties in large scale biological networks

机译:揭示大型生物网络关键特性的降噪采样方法

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A correlation network is a graph-based representation of relationships among genes or gene products, such as proteins. The advent of high-throughput bioinformatics has resulted in the generation of volumes of data that require sophisticated in silico models, such as the correlation network, for in-depth analysis. Each element in our network represents expression levels of multiple samples of one gene and an edge connecting two nodes reflects the correlation level between the two corresponding genes in the network according to the Pearson correlation coefficient. Biological networks made in this manner are generally found to adhere to a scale-free structural nature, that is, it is modular and adheres to a power-law degree distribution. Filtering these structures to remove noise and coincidental edges in the network is a necessity for network theorists because unfortunately, when examining entire genomes at once, network size and complexity can act as a bottleneck for network manageability. Our previous work demonstrated that chordal graph based sampling of network results in viable models. In this paper, we extend our research to investigate how different orderings affect the results of our sampling, and maintain the viability of resulting network structures. Our results show that chordal graph based sampling not only conserves clusters that are present within the original networks, but by reducing noise can also help uncover additional functional clusters that were previously not obtainable from the original network.
机译:相关网络是基因或基因产物(例如蛋白质)之间关系的基于图的表示形式。高通量生物信息学的出现导致大量数据的产生,这些数据需要复杂的计算机模型(例如关联网络)才能进行深入分析。我们网络中的每个元素代表一个基因的多个样本的表达水平,连接两个节点的边根据皮尔森相关系数反映网络中两个相应基因之间的相关水平。通常发现以这种方式制成的生物网络遵循无标度的结构性质,即,它是模块化的并且遵循幂律度分布。网络理论家必须过滤掉这些结构以消除网络中的噪声和巧合边缘,因为不幸的是,当一次检查整个基因组时,网络规模和复杂性可能成为网络可管理性的瓶颈。我们以前的工作表明,基于和弦图的网络采样会产生可行的模型。在本文中,我们扩展了研究范围,以研究不同的排序如何影响我们的抽样结果,并保持所得网络结构的可行性。我们的结果表明,基于和弦图的采样不仅可以保存原始网络中存在的群集,而且通过减少噪声还可以帮助发现以前无法从原始网络获得的其他功能群集。

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