School of Life Sciences, Shanghai University, Shanghai 200444, People's Republic of China.
College of Information Engineering, Shanghai Maritime University, Shanghai 201306, People's Republic of China.
Sci Rep. 2016 Jul 14;6:29849. doi: 10.1038/srep29849.
Tumors are formed by the abnormal proliferation of somatic cells with disordered growth regulation under the influence of tumorigenic factors. Recently, the theory of "cancer drivers" connects tumor initiation with several specific mutations in the so-called cancer driver genes. According to the differentiation of four basic levels between tumor and adjacent normal tissues, the cancer drivers can be divided into the following: (1) Methylation level, (2) microRNA level, (3) mutation level, and (4) mRNA level. In this study, a computational method is proposed to identify novel lung adenocarcinoma drivers based on dysfunctional genes on the methylation, microRNA, mutation and mRNA levels. First, a large network was constructed using protein-protein interactions. Next, we searched all of the shortest paths connecting dysfunctional genes on different levels and extracted new candidate genes lying on these paths. Finally, the obtained candidate genes were filtered by a permutation test and an additional strict selection procedure involving a betweenness ratio and an interaction score. Several candidate genes remained, which are deemed to be related to two different levels of cancer. The analyses confirmed our assertions that some have the potential to contribute to the tumorigenesis process on multiple levels.
肿瘤是由体细胞异常增殖形成的,在肿瘤发生因素的影响下,生长调控失调。最近,“癌症驱动基因”理论将肿瘤的发生与所谓的癌症驱动基因中的几个特定突变联系起来。根据肿瘤与相邻正常组织之间的四个基本差异水平,可以将癌症驱动基因分为以下几类:(1)甲基化水平,(2)miRNA 水平,(3)突变水平和(4)mRNA 水平。在这项研究中,提出了一种基于甲基化、miRNA、突变和 mRNA 水平上的功能失调基因来识别新的肺腺癌驱动基因的计算方法。首先,使用蛋白质-蛋白质相互作用构建了一个大型网络。接下来,我们搜索了连接不同水平上的功能失调基因的所有最短路径,并提取了位于这些路径上的新候选基因。最后,通过置换检验和涉及介数比和相互作用得分的额外严格选择过程对获得的候选基因进行过滤。有几个候选基因仍然存在,它们被认为与癌症的两个不同水平有关。分析结果证实了我们的断言,即其中一些基因可能在多个水平上促进肿瘤发生过程。