Dong Hua, Luo Li, Hong Shengjun, Siu Hoicheong, Xiao Yanghua, Jin Li, Chen Rui, Xiong Momiao
State Key Laboratory of Genetic Engineering and MOE Key Laboratory of Contemporary Anthropology, School of Life Sciences and Institutes of Biomedical Sciences, Fudan University, Shanghai, 200433, China.
BMC Syst Biol. 2010 Nov 29;4:163. doi: 10.1186/1752-0509-4-163.
Glioblastoma arises from complex interactions between a variety of genetic alterations and environmental perturbations. Little attention has been paid to understanding how genetic variations, altered gene expression and microRNA (miRNA) expression are integrated into networks which act together to alter regulation and finally lead to the emergence of complex phenotypes and glioblastoma.
We identified association of somatic mutations in 14 genes with glioblastoma, of which 8 genes are newly identified, and association of loss of heterozygosity (LOH) is identified in 11 genes with glioblastoma, of which 9 genes are newly discovered. By gene coexpression network analysis, we identified 15 genes essential to the function of the network, most of which are cancer related genes. We also constructed miRNA coexpression networks and found 19 important miRNAs of which 3 were significantly related to glioblastoma patients' survival. We identified 3,953 predicted miRNA-mRNA pairs, of which 14 were previously verified by experiments in other groups. Using pathway enrichment analysis we also found that the genes in the target network of the top 19 important miRNAs were mainly involved in cancer related signaling pathways, synaptic transmission and nervous systems processes. Finally, we developed new methods to decipher the pathway connecting mutations, expression information and glioblastoma. We identified 4 cis-expression quantitative trait locus (eQTL): TP53, EGFR, NF1 and PIK3C2G; 262 trans eQTL and 26 trans miRNA eQTL for somatic mutation; 2 cis-eQTL: NRAP and EGFR; 409 trans- eQTL and 27 trans- miRNA eQTL for lost of heterozygosity (LOH) mutation.
Our results demonstrate that integrated analysis of multi-dimensional data has the potential to unravel the mechanism of tumor initiation and progression.
胶质母细胞瘤源于多种基因改变与环境扰动之间的复杂相互作用。对于理解基因变异、基因表达改变以及微小RNA(miRNA)表达如何整合到共同作用以改变调控并最终导致复杂表型和胶质母细胞瘤出现的网络中,人们关注较少。
我们鉴定出14个基因的体细胞突变与胶质母细胞瘤相关,其中8个基因为新发现;还鉴定出11个基因的杂合性缺失(LOH)与胶质母细胞瘤相关,其中9个基因为新发现。通过基因共表达网络分析,我们确定了15个对网络功能至关重要的基因,其中大多数是癌症相关基因。我们还构建了miRNA共表达网络,发现了19个重要的miRNA,其中3个与胶质母细胞瘤患者的生存显著相关。我们鉴定出3953对预测的miRNA - mRNA对,其中14对先前已在其他研究组中通过实验验证。使用通路富集分析,我们还发现前19个重要miRNA的靶标网络中的基因主要参与癌症相关信号通路、突触传递和神经系统过程。最后,我们开发了新方法来解读连接突变、表达信息和胶质母细胞瘤的通路。我们鉴定出4个顺式表达定量性状位点(eQTL):TP53、EGFR、NF1和PIK3C2G;262个反式eQTL和26个反式miRNA eQTL用于体细胞突变;2个顺式eQTL:NRAP和EGFR;409个反式eQTL和27个反式miRNA eQTL用于杂合性缺失(LOH)突变。
我们的结果表明,多维度数据的综合分析有潜力揭示肿瘤发生和进展的机制。