Li Hongyan, Zhao Xiaonan, Wang Jing, Zong Minru, Yang Hailing
Infections Department, China-Japan Union Hospital, Jilin University, Changchun, 130033, China.
Pneumology Department, China-Japan Union Hospital, Jilin University, Changchun, 130033, China.
Gene. 2017 Jan 5;596:98-104. doi: 10.1016/j.gene.2016.09.037. Epub 2016 Sep 25.
Sarcoidosis is a multisystemic inflammatory and granulomatous disease that occurs in almost all populations and affects multiple organs. Meanwhile, its most common manifestation is pulmonary sarcoidosis. This study aimed to identify effective biomarkers for the diagnosis and therapy of pulmonary sarcoidosis.
GSE16538 was downloaded from Gene Expression Omnibus, including 6 pulmonary sarcoidosis samples and 6 normal lung samples. Then, differentially expressed genes (DEGs) were identified by limma package in R. After the expression values of the DEGs were extracted, hierarchical clustering analysis was performed for the DEGs using the pheatmap package in R. Subsequently, protein-protein interaction (PPI) pairs among the DEGs were searched by STRING or REACTOME databases, and then PPI networks were visualized by Cytoscape software. Using DAVID and KOBAS, functional and pathway enrichment analyses separately were performed for the DEGs involved in the PPI network.
Total 208 DEGs were identified in pulmonary sarcoidosis samples, including 179 up-regulated genes and 29 down-regulated genes. Hierarchical clustering showed that the DEGs could clearly distinguish the pulmonary sarcoidosis samples from the normal lung samples. In the PPI network constructed by STRING database, CXCL9, STAT1, CCL5, CXCL11 and GBP1 had higher degrees and betweenness values, and could interact with each other. Functional enrichment showed that CXCL9, CXCL11 and CCL5 were enriched in immune response. Moreover, STAT1 was enriched in pathways of chemokine signaling pathway and JAK-STAT signaling pathway.
CXCL9, CXCL11, STAT1, CCL5 and GBP1 might be implicated in pulmonary sarcoidosis through interacting with each other.
结节病是一种多系统炎症性肉芽肿疾病,几乎在所有人群中均可发生,可累及多个器官。同时,其最常见的表现形式为肺结节病。本研究旨在鉴定用于肺结节病诊断和治疗的有效生物标志物。
从基因表达综合数据库下载GSE16538数据集,其中包括6例肺结节病样本和6例正常肺样本。然后,使用R语言中的limma软件包鉴定差异表达基因(DEG)。提取DEG的表达值后,使用R语言中的pheatmap软件包对DEG进行层次聚类分析。随后,通过STRING或REACTOME数据库搜索DEG之间的蛋白质-蛋白质相互作用(PPI)对,然后使用Cytoscape软件可视化PPI网络。分别使用DAVID和KOBAS对参与PPI网络的DEG进行功能和通路富集分析。
在肺结节病样本中总共鉴定出208个DEG,其中包括179个上调基因和29个下调基因。层次聚类显示,DEG能够清晰地区分肺结节病样本和正常肺样本。在由STRING数据库构建的PPI网络中,CXCL9、STAT1、CCL5、CXCL11和GBP1具有较高的度和介数,并且它们之间可以相互作用。功能富集显示,CXCL9、CXCL11和CCL5富集于免疫反应。此外,STAT1富集于趋化因子信号通路和JAK-STAT信号通路。
CXCL9、CXCL11、STAT1、CCL5和GBP1可能通过相互作用参与肺结节病的发生发展。