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Cancer Biomarker Discovery from Gene Co-expression Networks Using Community Detection Methods

机译:使用社区检测方法从基因共表达网络中发现癌症生物标志物

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Finding the network biomarkers of cancers and the analysis of cancer driving genes that are involved in these biomarkers are essential for understanding the dynamics of cancer. Clusters of genes in co-expression networks are commonly known as functional units. This work is based on the hypothesis that the dense clusters or communities in the gene co-expression networks of cancer patients may represent functional units regarding cancer initiation and progression. In this study, RNA-seq gene expression data of three cancers - Breast Invasive Carcinoma (BRCA), Colorectal Adenocarcinoma (COAD) and Glioblastoma Multiforme (GBM) - from The Cancer Genome Atlas (TCGA) are used to construct gene co-expression networks using Pearson Correlation. Six well-known community detection algorithms are applied on these networks to identify communities with five or more genes. A permutation test is performed to further mine the communities that are conserved in other cancers, thus calling them conserved communities. Then survival analysis is performed on clinical data of three cancers using the conserved community genes as prognostic co-variates. The communities that could distinguish the cancer patients between high- and low-risk groups are considered as cancer biomarkers. In the present study, 16 such network biomarkers are discovered.
机译:寻找癌症的网络生物标志物以及分析这些生物标志物所涉及的癌症驱动基因对于理解癌症的动力学至关重要。共表达网络中的基因簇通常称为功能单元。这项工作基于以下假设:癌症患者基因共表达网络中的密集簇或群落可能代表有关癌症发生和发展的功能单元。在这项研究中,来自癌症基因组图谱(TCGA)的三种癌症-乳腺浸润癌(BRCA),结直肠腺癌(COAD)和多形胶质母细胞瘤(GBM)的RNA-seq基因表达数据被用于构建基因共表达网络使用Pearson Correlation。在这些网络上应用了六种著名的社区检测算法,以识别具有五个或更多基因的社区。进行置换测试以进一步挖掘在其他癌症中保守的社区,因此将其称为保守社区。然后使用保守的社区基因作为预后协变量,对三种癌症的临床数据进行生存分析。可以区分高危人群和低危人群的社区被认为是癌症生物标志物。在本研究中,发现了16种这样的网络生物标记。

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