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An Integrative Approach to Infer Regulation Programs in a Transcription Regulatory Module Network

机译:转录调控模块网络中推断调控程序的综合方法。

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The module network method, a special type of Bayesian network algorithms, has been proposed to infer transcription regulatory networks from gene expression data. In this method, a module represents a set of genes, which have similar expression profiles and are regulated by same transcription factors. The process of learning module networks consists of two steps: first clustering genes into modules and then inferring the regulation program (transcription factors) of each module. Many algorithms have been designed to infer the regulation program of a given gene module, and these algorithms show very different biases in detecting regulatory relationships. In this work, we explore the possibility of integrating results from different algorithms. The integration methods we select are union, intersection, and weighted rank aggregation. Experiments in a yeast dataset show that the union and weighted rank aggregation methods produce more accurate predictions than those given by individual algorithms, whereas the intersection method does not yield any improvement in the accuracy of predictions. In addition, somewhat surprisingly, the union method, which has a lower computational cost than rank aggregation, achieves comparable results as given by rank aggregation.
机译:提出了一种模块网络方法,一种特殊的贝叶斯网络算法,可以从基因表达数据推断出转录调控网络。在这种方法中,模块代表一组基因,这些基因具有相似的表达谱并受相同的转录因子调控。学习模块网络的过程包括两个步骤:首先将基因聚类到模块中,然后推断每个模块的调控程序(转录因子)。已经设计了许多算法来推断给定基因模块的调控程序,并且这些算法在检测调控关系时显示出非常不同的偏差。在这项工作中,我们探索了整合来自不同算法的结果的可能性。我们选择的积分方法是并集,交集和加权秩聚合。酵母数据集中的实验表明,联合和加权秩聚合方法产生的预测比单个算法给出的预测更准确,而交集方法对预测的准确性没有任何改善。另外,出乎意料的是,与秩聚合相比,计算成本较低的联合方法可实现与秩聚合所提供的结果相当的结果。

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