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Derivation of Transcriptional Regulatory Relationships by Partial Least Squares Regression

机译:通过部分最小二乘回归衍生转录调节关系

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As the number of genes in a transcriptional regulatory network is large and the number of samples in biological data types is usually small, there is a need for integrating multiple data types for reverse engineering these networks. In this paper, we propose a method to integrate microarray gene expression, ChIP-chip and transcription factor binding motif data sets in a partial least squares regression model to derive transcription factors (TFs) -gene interactions. Both single and synergistic effects of TFs on the promoters are considered in the model. A method that dynamically updates the significance level based on ChIP-chip and binding motif data is proposed. The results evaluated by methods based on Gene Ontology demonstrate the effectiveness of the proposed approach.
机译:随着转录调节网络中的基因数量大而且生物数据类型中的样本数量通常很小,需要将多种数据类型集成到逆向工程这些网络。在本文中,我们提出了一种在局部最小二乘回归模型中整合微阵列基因表达,芯片芯片和转录因子结合基序的方法,以导出转录因子(TFS) - 基烯相互作用。在模型中考虑了TFS对促进剂的单一和协同作用。提出了一种动态更新基于芯片芯片和绑定主题数据的显着级别的方法。通过基于基因本体的方法评估的结果证明了所提出的方法的有效性。

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