Zhao Lin, Lin Min, Wang Shousen
Department of Neurosurgery, Fuzhou General Hospital of Nanjing Command, PLA, Fuzhou, China.
J Cancer Res Ther. 2014 Jul-Sep;10(3):544-8. doi: 10.4103/0973-1482.137962.
To identify the genes involved in prolactinoma by bioinformatics methods and provide new potential biomarkers for prolactinoma.
The gene-expression profile data, GSE36314, including 4 prolactinoma samples and 3 controls, was downloaded from Gene Expression Omnibus (GEO) database. Differentially expressed genes (DEGs) were identified using the limma package in R and were then classified into different functional groups by COG (Clusters of Orthologous Groups) annotation based on BLASTX (Basic Local Alignment Search Tool). Transcriptional factors (TFs) were screened out by employing the Transcription Factor (TRANSFAC) database. An interaction network among DEGs and TFs was constructed by Search Tool for the Retrieval of Interacting Genes/Proteins (STRING) software. Kyoto Encyclopedia of Genes and Genomes (KEGG) pathway and Gene Ontology (GO) enrichment analysis were then performed for the genes in this network.
A total of 52 genes were identified as being significantly different between prolactinomas and normal samples which were classified into 29 COG functional categories. Three TFs, ZIC3 (Zic family member 3), NGFIC (nerve growth factor-induced protein C) and SP1 (Specificity Protein 1) were screened out, which can regulate part of DEGs. Two down-regulated genes, FSHB (follicle stimulating hormone β subunit) and LHB (luteinizing hormone β subunit) were involved in GnRH (gonadotropin-releasing hormone) signaling pathway.
Several DEGs between prolactinoma and normal samples were identified in our study and candidate agents such as LHB and FSHB may provide the groundwork for a targeted therapy approach for prolactinomas.
通过生物信息学方法鉴定与催乳素瘤相关的基因,为催乳素瘤提供新的潜在生物标志物。
从基因表达综合数据库(GEO)下载基因表达谱数据GSE36314,其中包括4个催乳素瘤样本和3个对照样本。使用R语言中的limma软件包鉴定差异表达基因(DEGs),然后基于BLASTX(基本局部比对搜索工具)通过直系同源基因簇(COG)注释将其分类到不同的功能组。利用转录因子(TRANSFAC)数据库筛选转录因子(TFs)。通过检索相互作用基因/蛋白质的搜索工具(STRING)软件构建DEGs和TFs之间的相互作用网络。随后对该网络中的基因进行京都基因与基因组百科全书(KEGG)通路和基因本体(GO)富集分析。
共鉴定出52个在催乳素瘤和正常样本之间有显著差异的基因,这些基因被分类到29个COG功能类别中。筛选出3个转录因子,即ZIC3(锌指蛋白家族成员3)、NGFIC(神经生长因子诱导蛋白C)和SP1(特异性蛋白1),它们可以调节部分DEGs。两个下调基因,促卵泡激素β亚基(FSHB)和促黄体生成素β亚基(LHB)参与促性腺激素释放激素(GnRH)信号通路。
本研究鉴定出了催乳素瘤和正常样本之间的几个差异表达基因,LHB和FSHB等候选因子可能为催乳素瘤的靶向治疗方法提供基础。