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Enhanced construction of gene regulatory networks using hub gene information

机译:利用中心基因信息增强基因调控网络的构建

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Background Gene regulatory networks reveal how genes work together to carry out their biological functions. Reconstructions of gene networks from gene expression data greatly facilitate our understanding of underlying biological mechanisms and provide new opportunities for biomarker and drug discoveries. In gene networks, a gene that has many interactions with other genes is called a hub gene, which usually plays an essential role in gene regulation and biological processes. In this study, we developed a method for reconstructing gene networks using a partial correlation-based approach that incorporates prior information about hub genes. Through simulation studies and two real-data examples, we compare the performance in estimating the network structures between the existing methods and the proposed method. Results In simulation studies, we show that the proposed strategy reduces errors in estimating network structures compared to the existing methods. When applied to Escherichia coli , the regulation network constructed by our proposed ESPACE method is more consistent with current biological knowledge than the SPACE method. Furthermore, application of the proposed method in lung cancer has identified hub genes whose mRNA expression predicts cancer progress and patient response to treatment. Conclusions We have demonstrated that incorporating hub gene information in estimating network structures can improve the performance of the existing methods.
机译:背景基因调控网络揭示了基因如何共同发挥其生物学功能。从基因表达数据重建基因网络极大地促进了我们对潜在生物学机制的理解,并为生物标记和药物发现提供了新的机会。在基因网络中,与其他基因有许多相互作用的基因称为集线器基因,通常在基因调控和生物过程中起重要作用。在这项研究中,我们开发了一种使用基于部分相关性的方法重建基因网络的方法,该方法结合了有关集线器基因的先前信息。通过仿真研究和两个实际数据示例,我们比较了现有方法和拟议方法在估计网络结构方面的性能。结果在仿真研究中,我们表明,与现有方法相比,所提出的策略减少了估计网络结构时的错误。当应用于大肠杆菌时,我们提出的ESPACE方法构建的调控网络比SPACE方法更符合当前的生物学知识。此外,所提出的方法在肺癌中的应用已经鉴定出了枢纽基因,这些枢纽基因的mRNA表达可预测癌症的进展和患者对治疗的反应。结论我们已经证明,将中心基因信息纳入网络结构的估计可以改善现有方法的性能。

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