Fang Gang, Zhang Qing Huai, Tang Qianqian, Jiang Zuling, Xing Shasha, Li Jianying, Pang Yuzhou
Laboratory of Zhuang Medicine Prescriptions Basis and Application Research, Guangxi University of Chinese Medicine, Nanning, China.
Department of Rheumatism, Ruikang Hospital Affiliated to Guangxi University of Chinese Medicine, Nanning, China.
Oncotarget. 2017 Dec 5;9(3):2977-2983. doi: 10.18632/oncotarget.22918. eCollection 2018 Jan 9.
Rheumatoid arthritis (RA) represents a common systemic autoimmune disease which lays chronic and persistent pain on patients. The purpose of our study is to identify novel RA-related genes and biological processes/pathways. All the datasets of this study, including gene expression and DNA methylation datasets of RA and OA samples, were obtained from the free available database, i.e. Gene Expression Omnibus (GEO). We firstly identified the differentially expressed genes (DEGs) between RA and OA samples through the limma package of R programming software followed by the functional enrichment analysis in the Database for Annotation, Visualization and Integrated Discovery (DAVID) for the exploring of potential involved biological processes/pathways of DEGs. For DNA methylation datasets, we used the IMA package for their normalization and identification of differential methylation genes (DMGs) in RA compared with OA samples. Comprehensive analysis of DEGs and DMGs was also conducted for the identification of valuable RA-related biomarkers. As a result, we obtained 394 DEGs and 363 DMGs in RA samples with the thresholds of |log2fold change|> 1 and -value < 0.05, and |delta beta|> 0.2 and -value < 0.05 respectively. Functional analysis of DEGs obtained immune and inflammation associated biological processes/pathways. Besides, several valuable biomarkers of RA, including BCL11B, CCDC88C, FCRLA and APOL6, were identified through the integrated analysis of gene expression and DNA methylation datasets. Our study should be helpful for the development of novel drugs and therapeutic methods for RA.
类风湿性关节炎(RA)是一种常见的全身性自身免疫性疾病,给患者带来慢性持续性疼痛。我们研究的目的是识别新的RA相关基因以及生物学过程/通路。本研究的所有数据集,包括RA和OA样本的基因表达和DNA甲基化数据集,均从免费可用的数据库即基因表达综合数据库(GEO)中获取。我们首先通过R编程软件的limma包识别RA和OA样本之间的差异表达基因(DEG),随后在注释、可视化和综合发现数据库(DAVID)中进行功能富集分析,以探索DEG潜在涉及的生物学过程/通路。对于DNA甲基化数据集,我们使用IMA包对其进行标准化,并识别RA与OA样本相比的差异甲基化基因(DMG)。还对DEG和DMG进行了综合分析,以识别有价值的RA相关生物标志物。结果,我们在RA样本中分别以|log2倍变化|>1和P值<0.05,以及|δβ|>0.2和P值<0.05为阈值,获得了394个DEG和363个DMG。DEG的功能分析获得了与免疫和炎症相关的生物学过程/通路。此外,通过基因表达和DNA甲基化数据集的综合分析,鉴定出了几种有价值的RA生物标志物,包括BCL11B、CCDC88C、FCRLA和APOL6。我们的研究应有助于开发针对RA的新型药物和治疗方法。