Affiliation:
1. Department of Orthopedic Surgery, Chinese PLA General Hospital,
Beijing 100853, China
2. School of Medicine, Nankai University, Tianjin, China
Abstract
Background:
Rheumatoid arthritis (RA) is a chronic inflammatory disease that causes significant
physical and psychological damage. Although researchers have gained a better understanding of the mechanisms
of RA, there are still difficulties in diagnosing and treating RA. We applied a data mining approach based
on machine learning algorithms to explore new RA biomarkers and local immune cell status.
Methods:
We extracted six RA synovial microarray datasets from the GEO database and used bioinformatics to
obtain differentially expressed genes (DEGs) and associated functional enrichment pathways. In addition, we
identified potential RA diagnostic markers by machine learning strategies and validated their diagnostic ability
for early RA and established RA, respectively. Next, CIBERSORT and ssGSEA analyses explored alterations
in synovium-infiltrating immune cell subpopulations and immune cell functions in the RA synovium. Moreover,
we examined the correlation between biomarkers and immune cells to understand their immune-related
molecular mechanisms in the pathogenesis of RA.
Results:
We obtained 373 DEGs (232 upregulated and 141 downregulated genes) between RA and healthy controls.
Enrichment analysis revealed a robust correlation between RA and immune response. Comprehensive
analysis indicated PSMB9, CXCL13, and LRRC15 were possible potential markers. PSMB9 (AUC: 0.908,
95% CI: 0.853-0.954) and CXCL13 (AUC: 0.890, 95% CI: 0.836-0.937) also showed great diagnostic ability in
validation dataset. Infiltrations of 16 kinds of the immune cell were changed, with macrophages being the
predominant infiltrating cell type. Most proinflammatory pathways in immune cell function were activated in
RA. The correlation analysis found the strongest positive correlation between CXCL13 and plasma cells,
PSMB9, and macrophage M1.
Conclusions:
There is a robust correlation between RA and local immune response. The immune-related
CXCL13 and PSMB9 were identified as potential diagnostic markers for RA based on a machine learning approach.
Further in-depth exploration of the target genes and associated immune cells can deepen the understanding
of RA pathophysiological processes and provide new insights into diagnosing and treating RA.
Funder
National Key Research and Development Program of China
Publisher
Bentham Science Publishers Ltd.
Subject
Drug Discovery,Pharmacology
Cited by
8 articles.
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