Li Yanan, Min Weijie, Li Mengmeng, Han Guosheng, Dai Dongwei, Zhang Lei, Chen Xin, Wang Xinglai, Zhang Yuhui, Yue Zhijian, Liu Jianmin
Department of Neurosurgery, Changhai Hospital, The Second Military Medical University, Shanghai 200433, P.R. China.
Department of Rheumatology and Immunology, Shanghai Changzheng Hospital, The Second Military Medical University, Shanghai 200003, P.R. China.
Int J Mol Med. 2016 Oct;38(4):1170-8. doi: 10.3892/ijmm.2016.2717. Epub 2016 Aug 26.
Glioblastoma multiforme (GBM) is the most common malignant brain tumor. This study aimed to identify the hub genes and regulatory factors of GBM subgroups by RNA sequencing (RNA-seq) data analysis, in order to explore the possible mechanisms responsbile for the progression of GBM. The dataset RNASeqV2 was downloaded by TCGA-Assembler, containing 169 GBM and 5 normal samples. Gene expression was calculated by the reads per kilobase per million reads measurement, and nor malized with tag count comparison. Following subgroup classification by the non-negative matrix factorization, the differentially expressed genes (DEGs) were screened in 4 GBM subgroups using the method of significance analysis of microarrays. Functional enrichment analysis was performed by DAVID, and the protein-protein interaction (PPI) network was constructed based on the HPRD database. The subgroup-related microRNAs (miRNAs or miRs), transcription factors (TFs) and small molecule drugs were predicted with pre-defined criteria. A cohort of 19,515 DEGs between the GBM and control samples was screened, which were predominantly enriched in cell cycle- and immunoreaction-related pathways. In the PPI network, lymphocyte cytosolic protein 2 (LCP2), breast cancer 1 (BRCA1), specificity protein 1 (Sp1) and chromodomain-helicase-DNA-binding protein 3 (CHD3) were the hub nodes in subgroups 1-4, respectively. Paired box 5 (PAX5), adipocyte protein 2 (aP2), E2F transcription factor 1 (E2F1) and cAMP-response element-binding protein-1 (CREB1) were the specific TFs in subgroups 1-4, respectively. miR‑147b, miR‑770-5p, miR‑220a and miR‑1247 were the particular miRNAs in subgroups 1-4, respectively. Natalizumab was the predicted small molecule drug in subgroup 2. In conclusion, the molecular regulatory mechanisms of GBM pathogenesis were distinct in the different subgroups. Several crucial genes, TFs, miRNAs and small molecules in the different GBM subgroups were identified, which may be used as potential markers. However, further experimental validations may be required.
多形性胶质母细胞瘤(GBM)是最常见的恶性脑肿瘤。本研究旨在通过RNA测序(RNA-seq)数据分析确定GBM亚组的核心基因和调控因子,以探索GBM进展的可能机制。通过TCGA-Assembler下载数据集RNASeqV2,其中包含169个GBM样本和5个正常样本。基因表达通过每百万读取中每千碱基读取数测量来计算,并用标签计数比较进行归一化。在通过非负矩阵分解进行亚组分类后,使用微阵列显著性分析方法在4个GBM亚组中筛选差异表达基因(DEG)。通过DAVID进行功能富集分析,并基于HPRD数据库构建蛋白质-蛋白质相互作用(PPI)网络。根据预定义标准预测亚组相关的微小RNA(miRNA或miR)、转录因子(TF)和小分子药物。在GBM样本与对照样本之间筛选出一组19515个DEG,它们主要富集在细胞周期和免疫反应相关途径中。在PPI网络中,淋巴细胞胞质蛋白2(LCP2)、乳腺癌1(BRCA1)、特异性蛋白1(Sp1)和染色体结构域-解旋酶-DNA结合蛋白3(CHD3)分别是亚组1-4中的核心节点。配对盒5(PAX5)、脂肪细胞蛋白2(aP2)、E2F转录因子1(E2F1)和cAMP反应元件结合蛋白1(CREB1)分别是亚组1-4中的特异性TF。miR-147b、miR-770-5p、miR-220a和miR-1247分别是亚组1-4中的特定miRNA。那他珠单抗是亚组2中预测的小分子药物。总之,GBM发病机制的分子调控机制在不同亚组中有所不同。确定了不同GBM亚组中的几个关键基因、TF、miRNA和小分子,它们可能用作潜在标志物。然而,可能需要进一步的实验验证。