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Construction and application of a co-expression network in Mycobacterium tuberculosis

机译:结核分枝杆菌共表达网络的构建与应用

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Because of its high pathogenicity and infectivity, tuberculosis is a serious threat to human health. Some information about the functions of the genes in Mycobacterium tuberculosis genome was currently available, but it was not enough to explore transcriptional regulatory mechanisms. Here, we applied the WGCNA (Weighted Gene Correlation Network Analysis) algorithm to mine pooled microarray datasets for the M. tuberculosis H37Rv strain. We constructed a co-expression network that was subdivided into 78 co-expression gene modules. The different response to two kinds of vitro models (a constant 0.2% oxygen hypoxia model and a Wayne model) were explained based on these modules. We identified potential transcription factors based on high Pearson’s correlation coefficients between the modules and genes. Three modules that may be associated with hypoxic stimulation were identified, and their potential transcription factors were predicted. In the validation experiment, we determined the expression levels of genes in the modules under hypoxic condition and under overexpression of potential transcription factors (Rv0081, furA (Rv1909c), Rv0324, Rv3334, and Rv3833). The experimental results showed that the three identified modules related to hypoxia and that the overexpression of transcription factors could significantly change the expression levels of genes in the corresponding modules.
机译:由于其高致病性和感染性,结核病对人类健康是严重的威胁。目前可获得有关结核病基因组成分结核病基因组基因的功能的一些信息,但探索转录监管机制是不够的。在此,我们将WGCNA(加权基因相关网络分析)算法应用于挖掘微阵列数据集的M.Tuberculosis H37RV菌株。我们构建了一种被细分为78个共表达基因模块的共表达网络。基于这些模块,解释了对两种体外模型(恒定0.2%氧缺氧模型和WAINNE模型)的不同响应。我们确定了基于高Pearson在模块和基因之间的相关系数的潜在转录因子。鉴定了可能与缺氧刺激相关的三种模块,预测其潜在的转录因子。在验证实验中,我们确定了缺氧条件下模块中基因的表达水平,并在潜在的转录因子的过度表达下(RV0081,呋喃(RV1909C),RV0324,RV334和RV3833)。实验结果表明,与缺氧相关的三种鉴定的模块以及转录因子的过表达可以显着改变相应模块中基因的表达水平。

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