首页> 外文会议>2018 IEEE International Work Conference on Bioinspired Intelligence >Modeling Gene Dosage Compensation Mediated by Sensor Loops in Large-Scale Mathematical Models of Microrna-Transcription Factor Networks
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Modeling Gene Dosage Compensation Mediated by Sensor Loops in Large-Scale Mathematical Models of Microrna-Transcription Factor Networks

机译:Microrna-转录因子网络的大规模数学模型中传感器回路介导的基因剂量补偿建模

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In a previous work we developed a biocomputational platform to automatically construct mathematical models of microRNA-transcription factor (TF) regulatory network to study gene dosage compensation. We hypothesized that gene dosage compensation maintains the viability of tumoral cells with high levels of chromosomal alterations by down regulating the expression of a core group of compensated genes. Here we report that those compensated candidates form clusters according to their chromosomal locations and they share the connections of a large-scale network of putative interactions with miRNAs and TFs. Although initial models of feed-forward loops do not show gene dosage compensation, we simplified the model by including only sensor loops of experimentally validated interactions. A sensor loop allows a gene to sense and react to fluctuations of its own expression. The resulting model shows gene dosage compensation for MYC and STAT3 but the genetic regulation of these two genes can be extended to co-regulate the expression of other compensated genes. These results contribute to the identification of a network of gene dosage compensation, which manipulation of specific nodes has the potential to become a novel approach to specifically target aneuploid cancer cells.
机译:在先前的工作中,我们开发了一个生物计算平台来自动构建microRNA转录因子(TF)调控网络的数学模型,以研究基因剂量补偿。我们假设基因剂量补偿通过下调补偿基因核心组的表达来维持具有高水平染色体改变的肿瘤细胞的活力。在这里我们报告那些补偿的候选人根据其染色体位置形成簇,它们共享与miRNA和TF的假定相互作用的大规模网络的连接。尽管前馈回路的初始模型未显示基因剂量补偿,但我们仅通过实验验证的相互作用的传感器回路来简化了模型。传感器环使基因能够感知并响应其自身表达的波动。所得模型显示出MYC和STAT3的基因剂量补偿,但是这两个基因的遗传调控可以扩展以共同调控其他补偿基因的表达。这些结果有助于鉴定基因剂量补偿网络,对特定节点的操纵有可能成为特异性靶向非整倍体癌细胞的新方法。

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