Yu Xuexin, Feng Lin, Liu Dianming, Zhang Lianfeng, Wu Bo, Jiang Wei, Han Zujing, Cheng Shujun
College of Bioinformatics Science and Technology, Harbin Medical University, Harbin 150081, China.
State Key Laboratory of Molecular Oncology, Department of Etiology and Carcinogenesis, Cancer Institute and Hospital, Peking Union Medical College and Chinese Academy of Medical Sciences, Beijing 100021, China.
Oncotarget. 2016 Mar 22;7(12):14161-71. doi: 10.18632/oncotarget.7416.
Although several researches have explored the similarity across development and tumorigenesis in cellular behavior and underlying molecular mechanisms, not many have investigated the developmental characteristics at proteomic level and further extended to cancer clinical outcome. In this study, we used iTRAQ to quantify the protein expression changes during macaque rhesus brain development from fetuses at gestation 70 days to after born 5 years. Then, we performed weighted gene co-expression network analysis (WGCNA) on protein expression data of brain development to identify co-expressed modules that highly expressed on distinct development stages, including early stage, middle stage and late stage. Moreover, we used the univariate cox regression model to evaluate the prognostic potentials of these genes in two independent glioblastoma multiforme (GBM) datasets. The results showed that the modules highly expressed on early stage contained more reproducible prognostic genes, including ILF2, CCT7, CCT4, RPL10A, MSN, PRPS1, TFRC and APEX1. These genes were not only associated with clinical outcome, but also tended to influence chemoresponse. These signatures identified from embryonic brain development might contribute to precise prediction of GBM prognosis and identification of novel drug targets in GBM therapies. Thus, the development could become a viable reference model for researching cancers, including identifying novel prognostic markers and promoting new therapies.
尽管已有多项研究探讨了发育过程与肿瘤发生在细胞行为及潜在分子机制方面的相似性,但很少有研究在蛋白质组学水平上研究发育特征,并进一步扩展至癌症临床结局。在本研究中,我们使用iTRAQ定量分析了猕猴从妊娠70天的胎儿到出生后5年大脑发育过程中的蛋白质表达变化。然后,我们对大脑发育的蛋白质表达数据进行加权基因共表达网络分析(WGCNA),以识别在不同发育阶段(包括早期、中期和晚期)高表达的共表达模块。此外,我们使用单变量cox回归模型评估这些基因在两个独立的多形性胶质母细胞瘤(GBM)数据集中的预后潜力。结果表明,早期高表达的模块包含更多可重复的预后基因,包括ILF2、CCT7、CCT4、RPL10A、MSN、PRPS1、TFRC和APEX1。这些基因不仅与临床结局相关,还倾向于影响化疗反应。从胚胎脑发育中鉴定出的这些特征可能有助于精确预测GBM预后,并在GBM治疗中鉴定新的药物靶点。因此,发育过程可能成为研究癌症的可行参考模型,包括识别新的预后标志物和推动新的治疗方法。