Ping Yanyan, Zhang Hongyi, Deng Yulan, Wang Li, Zhao Hongying, Pang Lin, Fan Huihui, Xu Chaohan, Li Feng, Zhang Yong, Gong Yonghui, Xiao Yun, Li Xia
College of Bioinformatics Science and Technology, Harbin Medical University, Harbin 150081, China.
Mol Biosyst. 2014 Aug;10(8):2031-42. doi: 10.1039/c4mb00289j.
Due to the extensive complexity and high genetic heterogeneity of genetic alterations in cancer, comprehensively depicting the molecular mechanisms of cancer remains difficult. Characterizing personalized pathogenesis in cancer individuals can help to reveal new details of the complex mechanisms. In this study, we proposed an integrative method called IndividualizedPath to identify genetic alterations and their downstream risk pathways from the perspective of individuals through combining the DNA copy number, gene expression data and topological structures of biological pathways. By applying the method to TCGA glioblastoma multiforme (GBM) samples, we identified 394 gene-pathway pairs in 252 GBM individuals. We found that genes with copy number alterations showed high heterogeneity across GBM individuals, whereas they affected relatively consistent biological pathways. A global landscape of gene-pathway pairs showed that EGFR linked with multiple cancer-related biological pathways confers the highest risk of GBM. GBM individuals with MET-pathway pairs showed significantly shorter survival times than those with only MET amplification. Importantly, we found that the same risk pathways were affected by different genes in distinct groups of GBM individuals with a significant pattern of mutual exclusivity. Similarly, GBM subtype analysis revealed some subtype-specific gene-pathway pairs. In addition, we found that some rare copy number alterations had a large effect on contribution to numerous cancer-related pathways. In summary, our method offers the possibility to identify personalized cancer mechanisms, which can be applied to other types of cancer through the web server (http://bioinfo.hrbmu.edu.cn/IndividualizedPath/).
由于癌症中基因改变具有广泛的复杂性和高度的遗传异质性,全面描述癌症的分子机制仍然很困难。刻画癌症个体的个性化发病机制有助于揭示复杂机制的新细节。在本研究中,我们提出了一种名为IndividualizedPath的综合方法,通过整合DNA拷贝数、基因表达数据和生物通路的拓扑结构,从个体角度识别基因改变及其下游风险通路。将该方法应用于TCGA多形性胶质母细胞瘤(GBM)样本,我们在252例GBM个体中鉴定出394个基因-通路对。我们发现,具有拷贝数改变的基因在GBM个体中表现出高度异质性,而它们影响相对一致的生物通路。基因-通路对的全局图谱显示,与多个癌症相关生物通路相连的EGFR赋予GBM最高风险。具有MET-通路对的GBM个体的生存时间明显短于仅具有MET扩增的个体。重要的是,我们发现相同的风险通路在不同组的GBM个体中受不同基因影响,且具有显著的互斥模式。同样,GBM亚型分析揭示了一些亚型特异性的基因-通路对。此外,我们发现一些罕见的拷贝数改变对众多癌症相关通路的贡献有很大影响。总之,我们的方法提供了识别个性化癌症机制的可能性,可通过网络服务器(http://bioinfo.hrbmu.edu.cn/IndividualizedPath/)应用于其他类型的癌症。