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Comparison of molecular mechanisms of rheumatoid arthritis and osteoarthritis using gene microarrays

机译:使用基因芯片比较类风湿关节炎和骨关节炎的分子机制

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The present study aimed to compare the molecular mechanisms of rheumatoid arthritis (RA) and osteoarthritis (OA). The microarray dataset no. GSE29746 was downloaded from Gene Expression Omnibus. After data pre-processing, differential expression analysis between the RA group and the control, as well as between the OA group and the control was performed using the LIMMA package in R and differentially expressed transcripts (DETs) with |log(2)fold change (FC)|>1 and P<0.01 were identified. DETs screened from each disease group were then subjected to functional annotation using DAVID. Next, DETs from each group were used to construct individual interaction networks using the BIND database, followed by sub-network mining using clusterONE. Significant functions of nodes in each sub-network were also investigated. In total, 19 and 281 DETs were screened from the RA and OA groups, respectively, with only six common DETs. DETs from the RA and OA groups were enriched in 8 and 130 gene ontology (GO) terms, respectively, with four common GO terms, of which to were associated with phospholipase C (PLC) activity. In addition, DETs screened from the OA group were enriched in immune response-associated GO terms, and those screened from the RA group were largely associated with biological processes linked with the cell cycle and chromosomes. Genes involved in PLC activity and its regulation were indicated to be altered in RA as well as in OA. Alterations in the expression of cell cycle-associated genes were indicated to be linked with the occurrence of OA, while genes participating in the immune response were involved in the occurrence of RA.
机译:本研究旨在比较类风湿关节炎(RA)和骨关节炎(OA)的分子机制。微阵列数据集编号GSE29746是从Gene Expression Omnibus下载的。进行数据预处理之后,使用R中的LIMMA软件包和| log(2)倍变化的差异表达转录本(DET),对RA组与对照之间以及OA组与对照之间进行差异表达分析。鉴定出(FC)|> 1且P <0.01。然后使用DAVID对从每个疾病组中筛选出的DET进行功能注释。接下来,将每个组的DET用于使用BIND数据库构建各个交互网络,然后使用clusterONE进行子网挖掘。还研究了每个子网中节点的重要功能。总共从RA和OA组中筛选了19个和281个DET,只有六个常见的DET。来自RA和OA组的DET分别富含8个和130个基因本体论(GO)术语,以及四个常见的GO术语,其中与磷脂酶C(PLC)活性相关。另外,从OA组筛选的DET富含与免疫反应相关的GO术语,而从RA组筛选的DET主要与与细胞周期和染色体有关的生物学过程有关。表明与PLC活动及其调控有关的基因在RA和OA中均发生了改变。细胞周期相关基因表达的改变与OA的发生有关,而参与免疫应答的基因与RA的发生有关。

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