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Spectral gene set enrichment (SGSE)

机译:频谱基因集富集(SGSE)

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Background Gene set testing is typically performed in a supervised context to quantify the association between groups of genes and a clinical phenotype. In many cases, however, a gene set-based interpretation of genomic data is desired in the absence of a phenotype variable. Although methods exist for unsupervised gene set testing, they predominantly compute enrichment relative to clusters of the genomic variables with performance strongly dependent on the clustering algorithm and number of clusters. Results We propose a novel method, spectral gene set enrichment (SGSE), for unsupervised competitive testing of the association between gene sets and empirical data sources. SGSE first computes the statistical association between gene sets and principal components (PCs) using our principal component gene set enrichment (PCGSE) method. The overall statistical association between each gene set and the spectral structure of the data is then computed by combining the PC-level p-values using the weighted Z-method with weights set to the PC variance scaled by Tracy-Widom test p-values. Using simulated data, we show that the SGSE algorithm can accurately recover spectral features from noisy data. To illustrate the utility of our method on real data, we demonstrate the superior performance of the SGSE method relative to standard cluster-based techniques for testing the association between MSigDB gene sets and the variance structure of microarray gene expression data. Conclusions Unsupervised gene set testing can provide important information about the biological signal held in high-dimensional genomic data sets. Because it uses the association between gene sets and samples PCs to generate a measure of unsupervised enrichment, the SGSE method is independent of cluster or network creation algorithms and, most importantly, is able to utilize the statistical significance of PC eigenvalues to ignore elements of the data most likely to represent noise.
机译:背景技术基因组测试通常在有监督的背景下进行,以量化基因组与临床表型之间的关联。但是,在许多情况下,在没有表型变量的情况下,需要对基因组数据进行基于基因组的解释。尽管存在用于无监督基因集测试的方法,但它们主要计算相对于基因组变量簇的富集,其性能在很大程度上取决于聚类算法和簇数。结果我们提出了一种新的方法,即光谱基因集富集(SGSE),用于基因集和经验数据源之间关联的无监督竞争性测试。 SGSE首先使用我们的主成分基因集富集(PCGSE)方法计算基因集与主成分(PC)之间的统计关联。然后,通过使用加权Z方法将PC级p值与权重设置为由Tracy-Widom测试p值缩放的PC方差的权重相结合,来计算每个基因集与数据频谱结构之间的总体统计关联。使用模拟数据,我们表明SGSE算法可以从噪声数据中准确地恢复频谱特征。为了说明我们的方法在真实数据上的实用性,我们展示了SGSE方法相对于基于标准簇的技术的优越性能,该技术用于测试MSigDB基因集与微阵列基因表达数据的变异结构之间的关联。结论无监督基因集测试可以提供有关高维基因组数据集中保存的生物信号的重要信息。由于SGSE方法利用基因集和样本PC之间的关联来生成无监督富集的量度,因此它独立于群集或网络创建算法,最重要的是,它能够利用PC特征值的统计意义来忽略遗传特征的元素。最有可能代表噪声的数据。

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