Sun Tuanqi, Guan Qing, Wang Yunjun, Qian Kai, Sun Wenyu, Ji Qinghai, Wu Yi, Guo Kai, Xiang Jun
Department of Head and Neck Surgery, Fudan University Shanghai Cancer Center, Shanghai, China.
Department of Oncology, Shanghai Medical College, Fudan University, Shanghai, China.
Gland Surg. 2021 Feb;10(2):629-644. doi: 10.21037/gs-20-673.
The techniques of DNA microarray and bioinformatic analysis have exhibited efficiency in identifying dysregulated gene expression in human cancers. In this study, we used integrated bioinformatics analysis to improve our understanding of the pathogenesis of papillary thyroid cancer (PTC).
In this study, we integrated four Gene Expression Omnibus (GEO) datasets, GSE33630, GSE35570, GSE60542 and GSE29265, including 136 normal samples and 157 PTC specimens. The contents of the four datasets are based on GPL570, an Affymetrix Human Genome U133 Plus 2.0 array. Gene ontology (GO) analysis was used to identify characteristic the biological attributes of differentially expressed genes (DEGs) between PTC and normal samples. GO annotation was performed on the DEGs obtained, and the process relied on the DAVID online tool. Kyoto Encyclopedia of Genes and Genomes (KEGG) approach enrichment analyses were adopted to obtain the basic functions of the DEGs. The KOBAS online analysis database was used to complete DEG KEGG pathway comparison and analysis. The search tool (STRING) database was mainly used to search for interacting genes and complete the construction of protein-protein interaction (PPI) networks.
Five hundred-ninety DEGs were consistently expressed in the four datasets; 327 of them were upregulated, while 263 were downregulated. Ten DEGs, including five upregulated () and five downregulated () genes, were randomly selected for q-PCR in our own tissue samples to validate the integrated data. The most highly enriched GO terms were extracellular exosome (GO:0070062), cell adhesion (GO:0070062), positive regulation of gene expression (GO:0010628), and extracellular matrix (ECM) organization (GO:0030198). KEGG pathway analysis was performed, and it was found that abnormally expressed genes effectively participated in pathways such as tyrosine metabolism, complement and coagulation cascades, cell adhesion molecules (CAMs), transcriptional misregulation and ECM-receptor interaction pathways.
Five hundred-ninety DEGs were identified in PTC by integrated microarray analysis. The GO and KEGG analyses presented here suggest that the DEGs were enriched in extracellular exosome, tyrosine metabolism, CAMs, complement and coagulation cascades, transcriptional misregulation and ECM-receptor interaction pathways. Functional studies of PTC should focus on these pathways.
DNA微阵列和生物信息学分析技术在识别人类癌症中失调的基因表达方面已展现出成效。在本研究中,我们运用综合生物信息学分析来增进对甲状腺乳头状癌(PTC)发病机制的理解。
在本研究中,我们整合了四个基因表达综合数据库(GEO)数据集,即GSE33630、GSE35570、GSE60542和GSE29265,其中包括136个正常样本和157个PTC标本。这四个数据集的内容基于GPL570,即Affymetrix人类基因组U133 Plus 2.0阵列。基因本体(GO)分析用于识别PTC与正常样本之间差异表达基因(DEG)的特征生物学属性。对获得的DEG进行GO注释,该过程依赖于DAVID在线工具。采用京都基因与基因组百科全书(KEGG)方法进行富集分析以获取DEG的基本功能。使用KOBAS在线分析数据库完成DEG KEGG通路的比较和分析。搜索工具(STRING)数据库主要用于搜索相互作用基因并完成蛋白质 - 蛋白质相互作用(PPI)网络的构建。
在这四个数据集中一致表达了590个DEG;其中327个上调,263个下调。随机选择了10个DEG,包括5个上调基因和5个下调基因,在我们自己的组织样本中进行q-PCR以验证整合数据。富集程度最高的GO术语是细胞外囊泡(GO:0070062)、细胞黏附(GO:0070062)、基因表达的正调控(GO:0010628)和细胞外基质(ECM)组织(GO:0030198)。进行了KEGG通路分析,发现异常表达的基因有效参与了酪氨酸代谢、补体和凝血级联反应、细胞黏附分子(CAM)、转录失调和ECM - 受体相互作用通路等途径。
通过整合微阵列分析在PTC中鉴定出590个DEG。此处呈现的GO和KEGG分析表明,这些DEG在细胞外囊泡、酪氨酸代谢、CAM、补体和凝血级联反应、转录失调和ECM - 受体相互作用通路中富集。PTC的功能研究应聚焦于这些通路。