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一种基于网络的综合方法,用于鉴定结直肠癌中存在异常共甲基化的基因。

A network-based, integrative approach to identify genes with aberrant co-methylation in colorectal cancer.

作者信息

Li Yongsheng, Xu Juan, Ju Huanyu, Xiao Yun, Chen Hong, Lv Junying, Shao Tingting, Bai Jing, Zhang Yunpeng, Wang Li, Wang Xishan, Ren Huan, Li Xia

机构信息

College of Bioinformatics Science and Technology, Harbin Medical University, Harbin 150081, China.

出版信息

Mol Biosyst. 2014 Feb;10(2):180-90. doi: 10.1039/c3mb70270g.

Abstract

Epigenetic changes, including aberrations in DNA methylation, are a common hallmark of many cancers. The identification and interpretation of epigenetic changes associated with cancers may benefit from integration with protein interactomes. Based on the assumption that genes implicated in a specific tumor phenotype will show high aberrant co-methylation patterns with their interacting partners, we propose an integrated approach to uncover cancer-associated genes by integrating a DNA methylome with an interactome. Aberrant co-methylated interactions were first identified in the specific cancer, and genes were then prioritized based on their enrichment in aberrant co-methylation. By applying this to a large-scale colorectal cancer (CRC) dataset, the proposed method increases the power to capture known genes. More importantly, genes possessing high aberrant co-methylation patterns, located at the topological center of the original protein-protein interaction network (PPIN), affect several cancer-associated pathways and form hotspots that are frequently hijacked in cancer. Additionally, the top-ranked candidate genes may also be useful as an indicator of CRC diagnosis and prognosis. Five fold cross-validation of the top-ranked genes in diagnosis reveals that it can achieve an area under the receiver operating characteristic (ROC) curve ranging from 82.2% to 98.4% in three independent datasets. Five of these genes form a core repressive module. CCNA1 and ESR1 in particular are evidently silenced by promoter hypermethylation in CRC cell lines and tissues, whose re-expression markedly suppresses tumor cell survival and clonogenicity. These results show that the network-centric method could identify novel disease biomarkers and model how oncogenic lesions mediate epigenetic changes, providing important insights into tumorigenesis.

摘要

表观遗传变化,包括DNA甲基化异常,是许多癌症的常见特征。与癌症相关的表观遗传变化的识别和解释可能受益于与蛋白质相互作用组的整合。基于这样的假设,即涉及特定肿瘤表型的基因将与其相互作用伙伴表现出高度异常的共甲基化模式,我们提出了一种通过将DNA甲基化组与相互作用组整合来发现癌症相关基因的综合方法。首先在特定癌症中识别异常的共甲基化相互作用,然后根据基因在异常共甲基化中的富集情况对其进行优先级排序。通过将此方法应用于大规模结直肠癌(CRC)数据集,所提出的方法提高了捕获已知基因的能力。更重要的是,具有高度异常共甲基化模式的基因位于原始蛋白质-蛋白质相互作用网络(PPIN)的拓扑中心,影响多个癌症相关途径并形成在癌症中经常被劫持的热点。此外,排名靠前的候选基因也可能作为CRC诊断和预后的指标。对排名靠前的基因进行诊断的五折交叉验证表明,在三个独立数据集中,其受试者操作特征(ROC)曲线下面积可达82.2%至98.4%。其中五个基因形成一个核心抑制模块。特别是CCNA1和ESR1在CRC细胞系和组织中因启动子高甲基化而明显沉默,它们的重新表达显著抑制肿瘤细胞存活和克隆形成能力。这些结果表明,以网络为中心的方法可以识别新的疾病生物标志物,并模拟致癌病变如何介导表观遗传变化,为肿瘤发生提供重要见解。

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