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LICORN: learning cooperative regulation networks from gene expression data

机译:LICORN:从基因表达数据中学习合作调节网络

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Motivation: One of the most challenging tasks in the post-genomic era is the reconstruction of transcriptional regulation networks. The goal is to identify, for each gene expressed in a particular cellular context, the regulators affecting its transcription, and the co-ordination of several regulators in specific types of regulation. DNA microarrays can be used to investigate relationships between regulators and their target genes, through simultaneous observations of their RNA levels.Results: We propose a data mining system for inferring transcriptional regulation relationships from RNA expression values. This system is particularly suitable for the detection of cooperative transcriptional regulation. We model regulatory relationships as labelled two-layer gene regulatory networks, and describe a method for the efficient learning of these bipartite networks from discretized expression data sets. We also evaluate the statistical significance of such inferred networks and validate our methods on two public yeast expression data sets.
机译:动机:后基因组时代最具挑战性的任务之一是转录调控网络的重建。目的是针对在特定细胞环境中表达的每个基因,确定影响其转录的调节子,以及在特定类型的调节中协调多个调节子。通过同时观察它们的RNA水平,可将DNA微阵列用于研究调节子与其靶基因之间的关系。结果:我们提出了一种数据挖掘系统,用于从RNA表达值推断转录调控关系。该系统特别适合于检测协同转录调控。我们将调控关系建模为标记的两层基因调控网络,并描述了一种从离散化表达数据集中有效学习这些二分网络的方法。我们还评估了此类推断网络的统计意义,并在两个公共酵母表达数据集上验证了我们的方法。

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