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Assessing the Impact of Network Depth on the Analysis of PPI Networks: A Case Study

机译:评估网络深度对PPI网络分析的影响 - 以案例研究

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Recent years have seen a growing interest in the incorporation of protein-protein interaction (PPI) networks to support functional genomic research. Often a default depth is assumed by network inference software. This case study considers the impact of network depth on the analysis of PPI networks using seven proteins known to be relevant to heart failure as inputs into the analysis. This paper analyses how the characteristics of a PPI network vary according to the level examined, suggesting that the investigation of network topology is an essential first step in PPI analysis. The classification of nodes, in terms of degree and betweenness centrality, within the network is also considered. The effect of network depth is also proved to be significant in the identification of potentially essential proteins with large connectivity and/or high betweenness centrality values.
机译:近年来对蛋白质 - 蛋白质相互作用(PPI)网络掺入以支持功能基因组研究的兴趣日益增长。通常是网络推理软件假定默认深度。本案例研究考虑了网络深度对使用已知与心力衰竭相关的七种蛋白质的PPI网络分析的影响,作为对分析的输入。本文分析了PPI网络的特性如何根据所检查的水平而变化,表明网络拓扑的调查是PPI分析中的重要第一步。还考虑了网络内的节点的分类,在网络中,在网络内的程度之间。在识别具有大连接和/或高中度量值之间的潜在必需蛋白质的潜在必需蛋白质中也被证明也证明了网络深度的影响。

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