Wang Li, Xiao Yun, Ping Yanyan, Li Jing, Zhao Hongying, Li Feng, Hu Jing, Zhang Hongyi, Deng Yulan, Tian Jiawei, Li Xia
College of Bioinformatics Science and Technology, Harbin Medical University, Harbin, China.
Department of Ultrasonic medicine, The 1st Affiliated Hospital of Heilongjiang University of Chinese Medicine, Harbin, China.
PLoS One. 2014 Aug 19;9(8):e104282. doi: 10.1371/journal.pone.0104282. eCollection 2014.
Cross-talk among abnormal pathways widely occurs in human cancer and generally leads to insensitivity to cancer treatment. Moreover, alterations in the abnormal pathways are not limited to single molecular level. Therefore, we proposed a strategy that integrates a large number of biological sources at multiple levels for systematic identification of cross-talk among risk pathways in cancer by random walk on protein interaction network. We applied the method to multi-Omics breast cancer data from The Cancer Genome Atlas (TCGA), including somatic mutation, DNA copy number, DNA methylation and gene expression profiles. We identified close cross-talk among many known cancer-related pathways with complex change patterns. Furthermore, we identified key genes (linkers) bridging these cross-talks and showed that these genes carried out consistent biological functions with the linked cross-talking pathways. Through identification of leader genes in each pathway, the architecture of cross-talking pathways was built. Notably, we observed that linkers cooperated with leaders to form the fundamentation of cross-talk of pathways which play core roles in deterioration of breast cancer. As an example, we observed that KRAS showed a direct connection to numerous cancer-related pathways, such as MAPK signaling pathway, suggesting that it may be a central communication hub. In summary, we offer an effective way to characterize complex cross-talk among disease pathways, which can be applied to other diseases and provide useful information for the treatment of cancer.
异常通路之间的相互作用在人类癌症中广泛存在,通常会导致对癌症治疗产生不敏感性。此外,异常通路的改变并不局限于单一分子水平。因此,我们提出了一种策略,通过在蛋白质相互作用网络上进行随机游走,整合多个层面的大量生物学来源,以系统地识别癌症风险通路之间的相互作用。我们将该方法应用于来自癌症基因组图谱(TCGA)的多组学乳腺癌数据,包括体细胞突变、DNA拷贝数、DNA甲基化和基因表达谱。我们识别出许多已知癌症相关通路之间存在密切的相互作用,且具有复杂的变化模式。此外,我们识别出了连接这些相互作用的关键基因(连接子),并表明这些基因与相连的相互作用通路具有一致的生物学功能。通过识别每条通路中的主导基因,构建了相互作用通路的架构。值得注意的是,我们观察到连接子与主导基因协同作用,形成了在乳腺癌恶化中起核心作用的通路相互作用的基础。例如,我们观察到KRAS与许多癌症相关通路,如MAPK信号通路,存在直接联系,这表明它可能是一个核心通信枢纽。总之,我们提供了一种有效的方法来表征疾病通路之间复杂的相互作用,该方法可应用于其他疾病,并为癌症治疗提供有用信息。