1. Deciphering the molecular landscape of rheumatoid arthritis offers new insights into the stratified treatment for the condition
- Author
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Min-Jing Chang, Qi-Fan Feng, Jia-Wei Hao, Ya-Jing Zhang, Rong Zhao, Nan Li, Yu-Hui Zhao, Zi-Yi Han, Pei-Feng He, and Cai-Hong Wang
- Subjects
gene expression profiles ,machine learning ,rheumatoid arthritis ,stratification ,unsupervised clustering ,Immunologic diseases. Allergy ,RC581-607 - Abstract
BackgroundFor Rheumatoid Arthritis (RA), a long-term chronic illness, it is essential to identify and describe patient subtypes with comparable goal status and molecular biomarkers. This study aims to develop and validate a new subtyping scheme that integrates genome-scale transcriptomic profiles of RA peripheral blood genes, providing a fresh perspective for stratified treatments.MethodsWe utilized independent microarray datasets of RA peripheral blood mononuclear cells (PBMCs). Up-regulated differentially expressed genes (DEGs) were subjected to functional enrichment analysis. Unsupervised cluster analysis was then employed to identify RA peripheral blood gene expression-driven subtypes. We defined three distinct clustering subtypes based on the identified 404 up-regulated DEGs.ResultsSubtype A, named NE-driving, was enriched in pathways related to neutrophil activation and responses to bacteria. Subtype B, termed interferon-driving (IFN-driving), exhibited abundant B cells and showed increased expression of transcripts involved in IFN signaling and defense responses to viruses. In Subtype C, an enrichment of CD8+ T-cells was found, ultimately defining it as CD8+ T-cells-driving. The RA subtyping scheme was validated using the XGBoost machine learning algorithm. We also evaluated the therapeutic outcomes of biological disease-modifying anti-rheumatic drugs. ConclusionsThe findings provide valuable insights for deep stratification, enabling the design of molecular diagnosis and serving as a reference for stratified therapy in RA patients in the future.
- Published
- 2024
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