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SIRENE: supervised inference of regulatory networks.

机译:SIRENE:监管网络的监督推断。

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MOTIVATION: Living cells are the product of gene expression programs that involve the regulated transcription of thousands of genes. The elucidation of transcriptional regulatory networks is thus needed to understand the cell's working mechanism, and can for example, be useful for the discovery of novel therapeutic targets. Although several methods have been proposed to infer gene regulatory networks from gene expression data, a recent comparison on a large-scale benchmark experiment revealed that most current methods only predict a limited number of known regulations at a reasonable precision level. RESULTS: We propose SIRENE (Supervised Inference of Regulatory Networks), a new method for the inference of gene regulatory networks from a compendium of expression data. The method decomposes the problem of gene regulatory network inference into a large number of local binary classification problems, that focus on separating target genes from non-targets for each transcription factor. SIRENE is thus conceptually simple and computationally efficient. We test it on a benchmark experiment aimed at predicting regulations in Escherichia coli, and show that it retrieves of the order of 6 times more known regulations than other state-of-the-art inference methods. AVAILABILITY: All data and programs are freely available at http://cbio. ensmp.fr/sirene.
机译:动机:活细胞是基因表达程序的产物,该程序涉及成千上万个基因的调控转录。因此,需要阐明转录调节网络来理解细胞的工作机制,并且例如对于发现新型治疗靶标可能有用。尽管已经提出了几种从基因表达数据推断基因调控网络的方法,但是最近在大规模基准实验中进行的比较显示,大多数当前方法只能以合理的精确度预测有限数量的已知法规。结果:我们提出了SIRENE(监管网络的监督推理),这是一种从表达数据汇编中推断基因监管网络的新方法。该方法将基因调节网络推论的问题分解为大量的本地二元分类问题,这些问题集中于针对每个转录因子将靶基因与非靶分离。因此,SIRENE在概念上简单且计算效率高。我们在旨在预测大肠杆菌法规的基准实验中对其进行了测试,结果表明,该方法检索到的已知法规比其他最新的推理方法高6倍。可用性:所有数据和程序均可从http:// cbio免费获得。 ensmp.fr/sirene。

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