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Gene Sets Net Correlations Analysis (GSNCA): a multivariate differential coexpression test for gene sets

机译:基因集净相关分析(GSNCA):基因集的多元差异共表达测试

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摘要

>Motivation: To date, gene set analysis approaches primarily focus on identifying differentially expressed gene sets (pathways). Methods for identifying differentially coexpressed pathways also exist but are mostly based on aggregated pairwise correlations or other pairwise measures of coexpression. Instead, we propose Gene Sets Net Correlations Analysis (GSNCA), a multivariate differential coexpression test that accounts for the complete correlation structure between genes.>Results: In GSNCA, weight factors are assigned to genes in proportion to the genes’ cross-correlations (intergene correlations). The problem of finding the weight vectors is formulated as an eigenvector problem with a unique solution. GSNCA tests the null hypothesis that for a gene set there is no difference in the weight vectors of the genes between two conditions. In simulation studies and the analyses of experimental data, we demonstrate that GSNCA captures changes in the structure of genes’ cross-correlations rather than differences in the averaged pairwise correlations. Thus, GSNCA infers differences in coexpression networks, however, bypassing method-dependent steps of network inference. As an additional result from GSNCA, we define hub genes as genes with the largest weights and show that these genes correspond frequently to major and specific pathway regulators, as well as to genes that are most affected by the biological difference between two conditions. In summary, GSNCA is a new approach for the analysis of differentially coexpressed pathways that also evaluates the importance of the genes in the pathways, thus providing unique information that may result in the generation of novel biological hypotheses.>Availability and implementation: Implementation of the GSNCA test in R is available upon request from the authors.>Contact: >Supplementary information: are available at Bioinformatics online.
机译:>动机:迄今为止,基因组分析方法主要集中于鉴定差异表达的基因组(途径)。也存在用于识别差异共表达途径的方法,但是主要基于聚集的成对相关性或其他成对共表达的量度。取而代之的是,我们提出了基因集网络相关分析(GSNCA),这是一个多变量差异共表达测试,用于说明基因之间的完整相关结构。>结果:在GSNCA中,权重因子按与基因的互相关(基因间相关)。找到权重向量的问题用独特的解决方案表述为特征向量问题。 GSNCA检验了零假设,即对于一个基因集,两个条件之间的基因权重载体没有差异。在仿真研究和实验数据分析中,我们证明了GSNCA捕获了基因互相关结构的变化,而不是平均成对相关性的差异。因此,GSNCA可以推断共表达网络中的差异,但是绕过了依赖于方法的网络推断步骤。作为GSNCA的另一个结果,我们将集线器基因定义为权重最大的基因,并显示这些基因经常对应于主要和特定途径的调节剂,以及受两种条件之间的生物学差异影响最大的基因。总而言之,GSNCA是一种分析差异共表达途径的新方法,该方法还评估了这些途径中基因的重要性,从而提供了可能导致产生新的生物学假设的独特信息。>可用性和实现:< / strong>可根据作者的要求在R中实施GSNCA测试。>联系方式: >补充信息:可在在线生物信息学中获得。

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