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Genome-wide prediction of transcriptional regulatory elements of human promoters using gene expression and promoter analysis data

机译:使用基因表达和启动子分析数据进行全基因组预测人类启动子的转录调控元件

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Background A complete understanding of the regulatory mechanisms of gene expression is the next important issue of genomics. Many bioinformaticians have developed methods and algorithms for predicting transcriptional regulatory mechanisms from sequence, gene expression, and binding data. However, most of these studies involved the use of yeast which has much simpler regulatory networks than human and has many genome wide binding data and gene expression data under diverse conditions. Studies of genome wide transcriptional networks of human genomes currently lag behind those of yeast. Results We report herein a new method that combines gene expression data analysis with promoter analysis to infer transcriptional regulatory elements of human genes. The Z scores from the application of gene set analysis with gene sets of transcription factor binding sites (TFBSs) were successfully used to represent the activity of TFBSs in a given microarray data set. A significant correlation between the Z scores of gene sets of TFBSs and individual genes across multiple conditions permitted successful identification of many known human transcriptional regulatory elements of genes as well as the prediction of numerous putative TFBSs of many genes which will constitute a good starting point for further experiments. Using Z scores of gene sets of TFBSs produced better predictions than the use of mRNA levels of a transcription factor itself, suggesting that the Z scores of gene sets of TFBSs better represent diverse mechanisms for changing the activity of transcription factors in the cell. In addition, cis-regulatory modules, combinations of co-acting TFBSs, were readily identified by our analysis. Conclusion By a strategic combination of gene set level analysis of gene expression data sets and promoter analysis, we were able to identify and predict many transcriptional regulatory elements of human genes. We conclude that this approach will aid in decoding some of the important transcriptional regulatory elements of human genes.
机译:背景技术对基因表达调控机制的全面理解是基因组学的下一个重要问题。许多生物信息学家已经开发了用于根据序列,基因表达和结合数据预测转录调控机制的方法和算法。然而,这些研究大多数涉及酵母的使用,该酵母的调控网络比人类的调控网络简单得多,并且在不同条件下具有许多全基因组结合数据和基因表达数据。目前人类基因组的全基因组转录网络研究落后于酵母。结果我们在此报告了一种新方法,该方法将基因表达数据分析与启动子分析相结合以推断人类基因的转录调控元件。来自具有转录因子结合位点(TFBS)基因组的基因组分析应用的Z分数已成功用于表示给定微阵列数据集中TFBS的活性。 TFBS基因组的Z评分与跨多个条件的单个基因之间的显着相关性使得能够成功鉴定出许多已知的人类基因转录调控元件,并预测了许多基因的许多推测的TFBS,这将为建立一个良好的起点提供依据。进一步的实验。使用TFBSs基因组的Z评分比使用转录因子本身的mRNA水平产生更好的预测,这表明TFBSs基因组的Z评分更好地代表了改变细胞中转录因子活性的多种机制。另外,通过我们的分析很容易确定顺式调节模块,即共同作用的TFBS的组合。结论通过基因表达数据集的基因组水平分析和启动子分析的战略组合,我们能够鉴定和预测人类基因的许多转录调控元件。我们得出结论,这种方法将有助于解码人类基因的某些重要转录调控元件。

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