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A data mining method to predict transcriptional regulatory sites based on differentially expressed genes in human genome

机译:一种基于人类基因组中差异表达的基因预测转录调控位点的数据挖掘方法

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Very large-scale gene expression analysis, i.e., UniGene and dbEST, are provided to find those genes with significantly differential expression in specific tissues. The differentially expressed genes in a specific tissue are potentially regulated concurrently by a combination of transcription factors. This study attempts to mine putative binding sites on how combinations of the known regulatory sites homologs and over-represented repetitive elements are distributed in the promoter regions of considered groups of differentially expressed genes. We propose a data mining approach to statistically discover the significantly tissue-specific combinations of known site homologs and over-represented repetitive sequences, which are distributed in the promoter regions of differential gene groups. The association rules mined would facilitate to predict putative regulatory elements and identify genes potentially co-regulated by the putative regulatory elements.
机译:提供了非常大规模的基因表达分析,即UniGene和dbEST,以发现在特定组织中表达差异显着的那些基因。特定组织中差异表达的基因可能受转录因子的组合同时调节。这项研究试图挖掘假定的结合位点,以了解已知调控位点同源物和过度表达的重复元件的组合如何分布在所考虑的差异表达基因组的启动子区域中。我们提出了一种数据挖掘方法,以统计方式发现已知位点同源物和过度代表的重复序列的显着组织特异性组合,这些组合分布在差异基因组的启动子区域。挖掘出的关联规则将有助于预测假定的调控元件,并鉴定可能由假定的调控元件共同调控的基因。

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