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Using potential master regulator sites and paralogous expansion to construct tissue-specific transcriptional networks

机译:利用潜在的主调控位点和旁系同源扩增构建组织特异性转录网络

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BackgroundTranscriptional networks of higher eukaryotes are difficult to obtain. Available experimental data from conventional approaches are sporadic, while those generated with modern high-throughput technologies are biased. Computational predictions are generally perceived as being flooded with high rates of false positives. New concepts about the structure of regulatory regions and the function of master regulator sites may provide a way out of this dilemma.MethodsWe combined promoter scanning with positional weight matrices with a 4-genome conservativity analysis to predict high-affinity, highly conserved transcription factor (TF) binding sites and to infer TF-target gene relations. They were expanded to paralogous TFs and filtered for tissue-specific expression patterns to obtain a reference transcriptional network (RTN) as well as tissue-specific transcriptional networks (TTNs).ResultsWhen validated with experimental data sets, the predictions done showed the expected trends of true positive and true negative predictions, resulting in satisfying sensitivity and specificity characteristics. This also proved that confining the network reconstruction to the 1% top-ranking TF-target predictions gives rise to networks with expected degree distributions. Their expansion to paralogous TFs enriches them by tissue-specific regulators, providing a reasonable basis to reconstruct tissue-specific transcriptional networks.ConclusionsThe concept of master regulator or seed sites provides a reasonable starting point to select predicted TF-target relations, which, together with a paralogous expansion, allow for reconstruction of tissue-specific transcriptional networks.
机译:背景难以获得高级真核生物的转录网络。来自常规方法的可用实验数据是零星的,而使用现代高通量技术生成的数据则有偏差。通常认为计算预测充满了高误报率。方法我们将启动子扫描与位置权重矩阵与4基因组保守性分析相结合,以预测高亲和力,高度保守的转录因子( TF)结合位点并推断TF靶基因的关系。它们被扩展为旁系TF,并针对组织特异性表达模式进行过滤以获得参考转录网络(RTN)和组织特异性转录网络(TTN)。结果在通过实验数据集进行验证后,所做的预测显示了预期的趋势。真实的正面和负面的预测,从而获得令人满意的敏感性和特异性特征。这也证明了将网络重构限制在TF目标排名最高的1%的预测范围内会产生具有预期程度分布的网络。它们向旁系TFs的扩增通过组织特异性调节剂使其丰富,从而为重建组织特异性转录网络提供了合理的基础。结论主调节剂或种子位点的概念为选择预测的TF-靶标关系提供了一个合理的起点。旁系扩展,允许重建组织特异性转录网络。

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