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A Model-based approach to transcription regulatory network reconstruction from time-course gene expression data

机译:基于模型的时程基因表达数据重建转录调控网络的方法

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Time-course gene expression profiling provides valuable data on dynamic behavior of cellular responses to external stimulation. Investigation of transcription factors (TFs) that regulate co-expressed genes in a dynamic process can reveal insights on the underlying molecular mechanisms. As the ChIP-seq technology is only suitable for a fraction of TFs in mammalian organisms, the computational identification of relevant TFs remains to be critical. We propose a regression-based model to infer the functional binding sites of TFs from time-course gene expression profiles. Our approach incorporates an association strength for each potential TF and target gene pair based on computational analysis of binding sites in promoter sequences of co-expressed genes. Our model further uses the Lasso-penalized technique to search for the most informative TF-target pairs. The application of our method to a gene expression study on E2-induced apoptosis in a variant of MCF-7 cells revealed that the findings are biologically meaningful.
机译:时程基因表达谱分析提供了有关细胞对外部刺激反应的动态行为的有价值的数据。对在动态过程中调节共表达基因的转录因子(TF)的研究可以揭示有关潜在分子机制的见解。由于ChIP-seq技术仅适用于哺乳动物有机体中的一部分TF,因此相关TF的计算鉴定仍然至关重要。我们提出了一种基于回归的模型,可以从时程基因表达谱中推断TF的功能结合位点。我们的方法基于对共表达基因的启动子序列中结合位点的计算分析,为每个潜在的TF和目标基因对合并了关联强度。我们的模型进一步使用套索惩罚技术来搜索信息最丰富的TF目标对。我们的方法在E2诱导的MCF-7细胞变体凋亡的基因表达研究中的应用表明,这一发现具有生物学意义。

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