确定集合共表达的基因组调控因子。

Jung Hoon Woo, Tian Zheng, Ju Han Kim
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引用次数: 1

摘要

基因基因组学方法已被用于研究基因表达变异的遗传基础,其中假定的基因转录调节因子是通过遗传数量性状作图确定的。通过这种努力确定的遗传调节因子可以部分解释个体基因的自然变异。然而,在分子途径中的基因经常表现出协调的活动,其模式和水平也受到调节。为了了解这些复杂的机制,我们提出了一种基于当前基因基因组学数据搜索相关基因集合共表达的基因组调控因子的方法。利用这种方法,我们研究了BXD RI数据集233个生物通路的基因组调控因子。在控制了错误发现率后,我们获得了15个通路的显著调控位点。本研究结果为研究mRNA共表达在个体间的遗传性提供了重要依据。我们已经证明,通过使用现有的基因基因组学数据定义新的表型,可以推导出共同表达调控的证据。
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Identifying Genomic Regulators of Set-Wise Co-Expression.

The genetical genomics approach has been used to study the genetic basis of variation in gene expression, where putative transcriptional regulators of genes are identified via genetic quantitative trait mapping. The genetic regulators identified through such efforts can partially account for an individual gene's natural variation. However, genes in a molecular pathway often exhibit coordinated activities, the patterns and levels of which are also regulated. In an effort to understand these complicated mechanisms, we propose a method that searches for the genomic regulators of set-wise co-expression of related genes, based on current genetical genomics data. Using this method, we studied genomic regulators of 233 biological pathways for a BXD RI data set. For 15 pathways, we obtained significant regulatory loci after controlling for the false discovery rate. The results presented in this paper constitute important evidence of the heritability of mRNA co-expression between individuals. We have shown that, by defining new phenotypes using existing genetical genomics data, evidence on regulation of co-expression can be derived.

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