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Estimation of directed subnetworks in ultra-high dimensional data for gene network problems

机译:基因网络问题中超高维数据中有向子网的估计

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The next generation sequencing technology generates ultra-high dimensional data. However, it is computationally impractical to estimate an entire Directed Acyclic Graph (DAG) under such high dimensionality. In this paper, we discuss two different types of problems to estimate subnetworks in ultra high dimensional data. The first problem is to estimate DAGs of a subnetwork adjacent to a target gene, and the second problem is to estimate DAGs of multiple subnetworks without information about a target gene. To address each problem, we propose efficient methods to estimate subnetworks by using layer-dependent weights with BIC criteria or by using community detection approaches to identify clusters as subnetworks. We apply such approaches to the gene expression data of breast cancer in TCGA as a practical example.
机译:下一代测序技术可产生超高维数据。但是,在如此高的维数下估计整个有向无环图(DAG)在计算上是不切实际的。在本文中,我们讨论了两种不同类型的问题来估计超高维数据中的子网。第一个问题是估计与目标基因相邻的子网络的DAG,第二个问题是估计多个子网络的DAG,而没有有关目标基因的信息。为了解决每个问题,我们提出了一种有效的方法,通过使用具有BIC标准的依赖于层的权重或使用社区检测方法将群集识别为子网来估算子网。我们将这种方法应用于TCGA中乳腺癌的基因表达数据作为一个实际例子。

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