Yijian Zhang1,2, Tianfeng Zhu1,2, Fan He1,2, Angela Carley Chen3, Huilin Yang1,2, Xuesong Zhu1,2. 1. Department of Orthopedics, The First Affiliated Hospital of Soochow University, Suzhou, China. 2. Orthopedic Institute, Soochow University, Suzhou, China. 3. School of Public Health and Health Systems, University of Waterloo, Waterloo, Ontario, Canada.
Abstract
OBJECTIVE: Osteoarthritis (OA) is a severe and common degenerative disease; however, the exact pathology of OA is undefined. Our study is designed to investigate the underlying molecular mechanism of OA with bioinformatic tools. DESIGN: Three updated GEO datasets: GSE55235, GSE55457, and GSE82107 were selected for data analyzing. R software was utilized to screen and confirm the candidate differentially expressed genes in the development of OA. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes pathway were performed to identify the enriched GO terms and signaling pathways. Protein and protein interaction (PPI) models were built to observe the connected relationship among each potential protein. RESULTS: A total of 113 upregulated genes and 161 downregulated genes were found by integrating 3 datasets. GO enrichment indicated that cell differentiation, cellular response to starvation, and negative regulation of phosphorylation were important biological processes. KEGG enrichment indicated that FoxO, IL-17 signaling pathways, and osteoclast differentiation mainly participated in the progression of OA. Combining the molecular function and PPI results, ubiquitylation was identified as a pivotal bioactive reaction involved in OA. CONCLUSION: Our study provided updated candidate genes and pathways of OA, which may benefit further research and treatment for OA.
OBJECTIVE: Osteoarthritis (OA) is a severe and common degenerative disease; however, the exact pathology of OA is undefined. Our study is designed to investigate the underlying molecular mechanism of OA with bioinformatic tools. DESIGN: Three updated GEO datasets: GSE55235, GSE55457, and GSE82107 were selected for data analyzing. R software was utilized to screen and confirm the candidate differentially expressed genes in the development of OA. Gene Ontology (GO) and Kyoto Encyclopedia of Genes and Genomes pathway were performed to identify the enriched GO terms and signaling pathways. Protein and protein interaction (PPI) models were built to observe the connected relationship among each potential protein. RESULTS: A total of 113 upregulated genes and 161 downregulated genes were found by integrating 3 datasets. GO enrichment indicated that cell differentiation, cellular response to starvation, and negative regulation of phosphorylation were important biological processes. KEGG enrichment indicated that FoxO, IL-17 signaling pathways, and osteoclast differentiation mainly participated in the progression of OA. Combining the molecular function and PPI results, ubiquitylation was identified as a pivotal bioactive reaction involved in OA. CONCLUSION: Our study provided updated candidate genes and pathways of OA, which may benefit further research and treatment for OA.
Entities:
Keywords:
bioinformatics; candidate genes; enrichment analysis; osteoarthritis; protein and protein interaction
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