Li Wenting, Wang Rui, Bai Linfu, Yan Zhangming, Sun Zhirong
MOE Key Laboratory of Bioinformatics, State Key Laboratory of Biomembrane and Membrane Biotechnology, Institute of Bioinformatics and Systems Biology, School of Life Sciences, Tsinghua University, Beijing, China.
BMC Syst Biol. 2012 Jun 12;6:64. doi: 10.1186/1752-0509-6-64.
Identification of driver mutations among numerous genomic alternations remains a critical challenge to the elucidation of the underlying mechanisms of cancer. Because driver mutations by definition are associated with a greater number of cancer phenotypes compared to other mutations, we hypothesized that driver mutations could more easily be identified once the genotype-phenotype correlations are detected across tumor samples.
In this study, we describe a novel network analysis to identify the driver mutation through integrating both cancer genomes and transcriptomes. Our method successfully identified a significant genotype-phenotype change correlation in all six solid tumor types and revealed core modules that contain both significantly enriched somatic mutations and aberrant expression changes specific to tumor development. Moreover, we found that the majority of these core modules contained well known cancer driver mutations, and that their mutated genes tended to occur at hub genes with central regulatory roles. In these mutated genes, the majority were cancer-type specific and exhibited a closer relationship within the same cancer type rather than across cancer types. The remaining mutated genes that exist in multiple cancer types led to two cancer type clusters, one cluster consisted of three neural derived or related cancer types, and the other cluster consisted of two adenoma cancer types.
Our approach can successfully identify the candidate drivers from the core modules. Comprehensive network analysis on the core modules potentially provides critical insights into convergent cancer development in different organs.
在众多基因组改变中识别驱动突变仍然是阐明癌症潜在机制的一项关键挑战。由于从定义上来说,驱动突变与比其他突变更多的癌症表型相关,我们推测一旦在肿瘤样本中检测到基因型 - 表型相关性,驱动突变就更容易被识别。
在本研究中,我们描述了一种通过整合癌症基因组和转录组来识别驱动突变的新型网络分析方法。我们的方法在所有六种实体瘤类型中成功识别出显著的基因型 - 表型变化相关性,并揭示了包含显著富集的体细胞突变和肿瘤发展特有的异常表达变化的核心模块。此外,我们发现这些核心模块中的大多数包含众所周知的癌症驱动突变,并且它们的突变基因倾向于出现在具有中心调节作用的枢纽基因处。在这些突变基因中,大多数是癌症类型特异性的,并且在同一癌症类型内表现出比跨癌症类型更紧密的关系。存在于多种癌症类型中的其余突变基因导致了两个癌症类型簇,一个簇由三种神经源性或相关癌症类型组成,另一个簇由两种腺癌癌症类型组成。
我们的方法可以从核心模块中成功识别候选驱动因素。对核心模块进行全面的网络分析可能为不同器官中癌症的趋同发展提供关键见解。