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Cancer Genetic Network Inference Using Gaussian Graphical Models

机译:使用高斯图形模型的癌症遗传网络推断

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The Cancer Genome Atlas (TCGA) provides a rich resource that can be used to understand how genes interact in cancer cells and has collected RNA-Seq gene expression data for many types of human cancer. However, mining the data to uncover the hidden gene-interaction patterns remains a challenge. Gaussian graphical model (GGM) is often used to learn genetic networks because it defines an undirected graphical structure, revealing the conditional dependences of genes. In this study, we focus on inferring gene interactions in 15 specific types of human cancer using RNA-Seq expression data and GGM with graphical lasso. We take advantage of the corresponding Kyoto Encyclopedia of Genes and Genomes pathway maps to define the subsets of related genes. RNA-Seq expression levels of the subsets of genes in solid cancerous tumor and normal tissues were extracted from TCGA. The gene expression data sets were cleaned and formatted, and the genetic network corresponding to each cancer type was then inferred using GGM with graphical lasso. The inferred networks reveal stable conditional dependences among the genes at the expression level and confirm the essential roles played by the genes that encode proteins involved in the two key signaling pathway phosphoinositide 3-kinase (PI3K)/AKT/mTOR and Ras/Raf/MEK/ERK in human carcinogenesis. These stable dependences elucidate the expression level interactions among the genes that are implicated in many different human cancers. The inferred genetic networks were examined to further identify and characterize a collection of gene interactions that are unique to cancer. The cross-cancer genetic interactions revealed from our study provide another set of knowledge for cancer biologists to propose strong hypotheses, so further biological investigations can be conducted effectively.
机译:癌症基因组图谱(TCGA)提供了丰富的资源,可用于了解基因如何在癌细胞中相互作用,并且已经收集了多种人类癌症的RNA-Seq基因表达数据。然而,挖掘数据以发现隐藏的基因相互作用模式仍然是一个挑战。高斯图形模型(GGM)通常用于学习遗传网络,因为它定义了无向的图形结构,揭示了基因的条件依赖性。在这项研究中,我们专注于使用RNA-Seq表达数据和带有图形套索的GGM来推断15种特定类型的人类癌症中的基因相互作用。我们利用相应的《京都议定书》的基因和基因组百科全书路径图来定义相关基因的子集。从TCGA中提取实体癌肿瘤和正常组织中的基因子集的RNA-Seq表达水平。清洗基因表达数据集并格式化,然后使用带有图形套索的GGM推导与每种癌症类型相对应的遗传网络。推断的网络揭示了表达水平基因之间稳定的条件依赖性,并证实了编码参与磷酸肌醇3激酶(PI3K)/ AKT / mTOR和Ras / Raf / MEK这两个关键信号通路的蛋白质的基因所起的基本作用。 / ERK在人类致癌中。这些稳定的依赖性阐明了涉及许多不同人类癌症的基因之间的表达水平相互作用。检查了推断的遗传网络,以进一步鉴定和表征癌症特有的基因相互作用的集合。从我们的研究中揭示的跨癌症遗传相互作用为癌症生物学家提出了强有力的假设提供了另一套知识,因此可以有效地进行进一步的生物学研究。

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