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Inference of transcriptional regulatory network by bootstrapping patterns

机译:通过自举模式推断转录调控网络

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Motivation: Transcriptional regulatory networks, which consist of linkages between transcription factors (TF) and target genes (TGene), control the expression of a genome and play important roles in all aspects of an organism's life cycle. Accurate prediction of transcriptional regulatory networks is critical in providing useful information for biologists to determine what to do next. Currently, there is a substantial amount of fragmented gene regulation information described in the medical literature. However, current related text analysis methods designed to identify protein-protein interactions are not entirely suitable for finding transcriptional regulatory networks.Result: In this article, we propose an automatic regulatory network inference method that uses bootstrapping of description patterns to predict the relationship between a TF and its TGenes. The proposed method differs from other regulatory network generators in that it makes use of both positive and negative patterns for different vector combinations in a sentence. Moreover, the positive pattern learning process can be fully automatic. Furthermore, patterns for active and passive voice sentences are learned separately. The experiments use 609 HIF-1 expert-tagged articles from PubMed as the gold standard. The results show that the proposed method can automatically generate a predicted regulatory network for a transcription factor. Our system achieves an F-measure of 72.60%.
机译:动机:转录调控网络由转录因子(TF)和靶基因(TGene)之间的联系组成,控制基因组的表达,并在生物生命周期的各个方面发挥重要作用。转录调控网络的准确预测对于为生物学家提供有用的信息,以决定下一步该做什么至关重要。当前,医学文献中描述了大量的片段化基因调控信息。然而,目前旨在识别蛋白质间相互作用的相关文本分析方法并不完全适合于寻找转录调控网络。结果:在本文中,我们提出了一种自动调控网络推理方法,该方法利用描述模式的自举来预测蛋白质之间的关系。 TF及其TGenes。所提出的方法与其他监管网络生成器的不同之处在于,它针对句子中的不同向量组合使用了正负模式。而且,积极模式学习过程可以是全自动的。此外,分别学习主动和被动语音句子的模式。实验使用PubMed的609条HIF-1专家标记的文章作为金标准。结果表明,所提出的方法可以自动生成转录因子的预测调控网络。我们的系统达到72.60%的F值。

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