Integrated analysis of transcriptomics to identify hub genes in primary Sjögren's syndrome

Oral Dis. 2022 Oct;28(7):1831-1845. doi: 10.1111/odi.13943. Epub 2021 Aug 12.

Abstract

Objective: The treatment of patients with primary Sjögren's syndrome is a clinical challenge. Gene expression profile analysis and comprehensive network methods for complex diseases can provide insight into molecular characteristics in the clinical context.

Materials and methods: We downloaded gene expression datasets from the Gene Expression Omnibus (GEO) database. We screened differentially expressed genes (DEG) between the pSS patients and the controls by the robust rank aggregation (RRA) method. We explored DEGs' potential function using gene function annotation and PPI network analysis.

Results: GSE23117, GSE40611, GSE80805, and GSE127952 were included, including 38 patients and 30 controls. The RRA integrated analysis determined 294 significant DEGs (241 upregulated and 53 downregulated), and the most significant gene aberrantly expressed in SS was CXCL9 (p = 6.39E-15), followed by CXCL13 (p = 1.53E-13). Immune response (GO:0006955; p = 4.29E-32) was the most significantly enriched biological process in GO (gene ontology) analysis. KEGG pathway enrichment analysis showed that cytokine-cytokine receptor interaction (hsa04060; p = 6.46E-10) and chemokine signaling pathway (hsa04062; p = 9.54E-09) were significantly enriched. We defined PTPRC, CD86, and LCP2 as the hub genes based on the PPI results.

Conclusion: Our integrated analysis identified gene signatures and helped understand molecular changes in pSS.

Keywords: Sjögren's syndrome; hub genes; integrated bioinformatics; robust rank aggregation; salivary gland.

MeSH terms

  • Computational Biology / methods
  • Gene Expression Profiling / methods
  • Humans
  • Protein Interaction Maps / genetics
  • Sjogren's Syndrome* / genetics
  • Transcriptome*