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Structured association analysis leads to insight into Saccharomyces cerevisiae gene regulation by finding multiple contributing eQTL hotspots associated with functional gene modules

机译:通过发现与功能性基因模块相关的多个贡献性eQTL热点结构化关联分析可帮助您了解啤酒酵母基因调控

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摘要

BackgroundAssociation analysis using genome-wide expression quantitative trait locus (eQTL) data investigates the effect that genetic variation has on cellular pathways and leads to the discovery of candidate regulators. Traditional analysis of eQTL data via pairwise statistical significance tests or linear regression does not leverage the availability of the structural information of the transcriptome, such as presence of gene networks that reveal correlation and potentially regulatory relationships among the study genes. We employ a new eQTL mapping algorithm, GFlasso, which we have previously developed for sparse structured regression, to reanalyze a genome-wide yeast dataset. GFlasso fully takes into account the dependencies among expression traits to suppress false positives and to enhance the signaloise ratio. Thus, GFlasso leverages the gene-interaction network to discover the pleiotropic effects of genetic loci that perturb the expression level of multiple (rather than individual) genes, which enables us to gain more power in detecting previously neglected signals that are marginally weak but pleiotropically significant.
机译:背景使用全基因组表达定量性状基因座(eQTL)数据进行的关联分析研究了遗传变异对细胞途径的影响,并导致了候选调节子的发现。通过成对统计显着性检验或线性回归进行的eQTL数据的传统分析无法利用转录组的结构信息的可用性,例如存在揭示研究基因之间相关性和潜在调控关系的基因网络。我们采用了一种新的eQTL映射算法GFlasso,它是我们先前为稀疏结构回归开发的,可以重新分析全基因组的酵母数据集。 GFlasso充分考虑了表达特征之间的依赖性,以抑制误报并提高信噪比。因此,GFlaso利用基因相互作用网络发现扰动多个(而不是单个)基因表达水平的基因位点的多效性作用,这使我们能够获得更多的能力来检测先前被忽略的信号,这些信号微弱但具有多效性。

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