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Identifying Differentially Expressed Genes Based on Differentially Expressed Edges

机译:基于差异表达边缘鉴定差异表达基因

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Identification of differentially expressed (DE) genes under different experimental conditions is an important task in many microarray-based studies. There are many methods developed to detect DE genes based on either fold-change (FC) strategy or statistical test. However, majority of those methods identify DE genes by calculating the expression values of individual genes, without taking interactions between genes into consideration. In this study, we consider the interaction and importance of genes in the network and believe that the edges in the network also contribute a lot to DE genes. Therefore, we propose three new ideas for calculating the expression values of edges by considering mean expression, minimal expression and partial expression, respectively. Those methods were implemented and evaluated on the microarray data and were compared with existing methods. The results show that the proposed edge-based methods can identify more biologically relevant genes and have high computational efficiency. More importantly, the Min-Edge method outperforms the other methods when feasibility and specificity are considered simultaneously.
机译:在许多基于微阵列的研究中,鉴定不同实验条件下的差异表达(DE)基因是一项重要的任务。已开发出许多基于倍数变化(FC)策略或统计检验来检测DE基因的方法。然而,这些方法中的大多数通过计算单个基因的表达值来鉴定DE基因,而不考虑基因之间的相互作用。在这项研究中,我们考虑了基因在网络中的相互作用和重要性,并认为网络的边缘对DE基因也有很大贡献。因此,我们提出了三种新的思想,分别通过考虑均值表达式,最小表达式和部分表达式来计算边缘的表达式值。这些方法已在微阵列数据上实施和评估,并与现有方法进行了比较。结果表明,所提出的基于边缘的方法可以识别更多的生物学相关基因,并具有较高的计算效率。更重要的是,当同时考虑可行性和特异性时,Min-Edge方法优于其他方法。

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