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Inference of gene regulatory subnetworks from time course gene expression data

机译:从时程基因表达数据推断基因调控子网络

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BackgroundIdentifying gene regulatory network (GRN) from time course gene expression data has attracted more and more attentions. Due to the computational complexity, most approaches for GRN reconstruction are limited on a small number of genes and low connectivity of the underlying networks. These approaches can only identify a single network for a given set of genes. However, for a large-scale gene network, there might exist multiple potential sub-networks, in which genes are only functionally related to others in the sub-networks.ResultsWe propose the network and community identification (NCI) method for identifying multiple subnetworks from gene expression data by incorporating community structure information into GRN inference. The proposed algorithm iteratively solves two optimization problems, and can promisingly be applied to large-scale GRNs. Furthermore, we present the efficient Block PCA method for searching communities in GRNs.ConclusionsThe NCI method is effective in identifying multiple subnetworks in a large-scale GRN. With the splitting algorithm, the Block PCA method shows a promosing attempt for exploring communities in a large-scale GRN.
机译:背景技术从时程基因表达数据鉴定基因调控网络(GRN)已引起越来越多的关注。由于计算复杂性,大多数用于GRN重建的方法都局限于少数基因和底层网络的低连通性。这些方法只能为给定的一组基因识别单个网络。但是,对于大规模的基因网络,可能存在多个潜在的子网络,其中基因在功能上仅与子网络中的其他子网络相关。结果我们提出了一种网络和社区识别(NCI)方法,用于从多个子网络中识别多个子网络。通过将社区结构信息纳入GRN推论来获得基因表达数据。所提出的算法迭代地解决了两个优化问题,并有望应用于大规模GRN。此外,我们提出了一种用于搜索GRN中社区的有效Block PCA方法。结论NCI方法可有效识别大型GRN中的多个子网。使用分割算法,Block PCA方法显示了在大规模GRN中探索社区的成功尝试。

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