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Bayesian inference based modelling for gene transcriptional dynamics by integrating multiple source of knowledge

机译:通过整合多种知识来源的基于贝叶斯推理的基因转录动力学建模

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BackgroundA key challenge in the post genome era is to identify genome-wide transcriptional regulatory networks, which specify the interactions between transcription factors and their target genes. Numerous methods have been developed for reconstructing gene regulatory networks from expression data. However, most of them are based on coarse grained qualitative models, and cannot provide a quantitative view of regulatory systems.ResultsA binding affinity based regulatory model is proposed to quantify the transcriptional regulatory network. Multiple quantities, including binding affinity and the activity level of transcription factor (TF) are incorporated into a general learning model. The sequence features of the promoter and the possible occupancy of nucleosomes are exploited to estimate the binding probability of regulators. Comparing with the previous models that only employ microarray data, the proposed model can bridge the gap between the relative background frequency of the observed nucleotide and the gene's transcription rate.ConclusionsWe testify the proposed approach on two real-world microarray datasets. Experimental results show that the proposed model can effectively identify the parameters and the activity level of TF. Moreover, the kinetic parameters introduced in the proposed model can reveal more biological sense than previous models can do.
机译:背景技术在后基因组时代的一个关键挑战是确定全基因组范围的转录调控网络,该网络规定了转录因子与其靶基因之间的相互作用。已经开发了许多用于从表达数据重建基因调控网络的方法。然而,它们大多基于粗糙的定性模型,不能提供调节系统的定量视图。结果提出了一种基于结合亲和力的调节模型来定量转录调节网络。包括结合亲和力和转录因子(TF)活性水平在内的多种数量都被纳入了通用学习模型中。利用启动子的序列特征和核小体的可能占有来估计调节子的结合概率。与仅使用微阵列数据的先前模型相比,该模型可以弥补观察到的核苷酸的相对背景频率与基因转录率之间的差距。结论我们在两个真实的微阵列数据集上验证了该方法。实验结果表明,该模型可以有效识别TF的参数和活性水平。此外,所提出的模型引入的动力学参数比以前的模型可以揭示更多的生物学意义。

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