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首页> 外文期刊>IEEE/ACM transactions on computational biology and bioinformatics >Identifying Gene Network Rewiring by Integrating Gene Expression and Gene Network Data
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Identifying Gene Network Rewiring by Integrating Gene Expression and Gene Network Data

机译:通过整合基因表达和基因网络数据识别基因网络重新布线

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摘要

Exploring the rewiring pattern of gene regulatory networks between different pathological states is an important task in bioinformatics. Although a number of computational approaches have been developed to infer differential networks from high-throughput data, most of them only focus on gene expression data. The valuable static gene regulatory network data accumulated in recent biomedical researches are neglected. In this study, we propose a new Gaussian graphical model-based method to infer differential networks by integrating gene expression and static gene regulatory network data. We first evaluate the empirical performance of our method by comparing with the state-of-the-art methods using simulation data. We also apply our method to The Cancer Genome Atlas data to identify gene network rewiring between ovarian cancers with different platinum responses, and rewiring between breast cancers of luminal A subtype and basal-like subtype. Hub genes in the estimated differential networks rediscover known genes associated with platinum resistance in ovarian cancer and signatures of the breast cancer intrinsic subtypes.
机译:探索不同病理状态之间基因调控网络的重排模式是生物信息学中的重要任务。尽管已开发出许多计算方法来从高通量数据推断差异网络,但大多数方法仅集中于基因表达数据。在最近的生物医学研究中积累的有价值的静态基因调控网络数据被忽略了。在这项研究中,我们提出了一种新的基于高斯图形模型的方法,通过整合基因表达和静态基因调控网络数据来推断差异网络。我们首先通过与使用模拟数据的最新方法进行比较来评估我们方法的经验性能。我们还将我们的方法应用于“癌症基因组图谱”数据中,以识别具有不同铂响应的卵巢癌之间的基因网络重排,以及管腔A亚型和基底样亚型的乳腺癌之间的重排。估计的差异网络中的枢纽基因重新发现了与卵巢癌中铂耐药性相关的已知基因以及乳腺癌固有亚型的特征。

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