Transcriptomic network analysis reveals key drivers of response to anti-TNF biologics in patients with rheumatoid arthritis
- Authors
- Yu, Chae-Yeon; Lee, Hye-Soon; Joo, Young Bin; Cho, Soo-Kyung; Choi, Chan-Bum; Sung, Yoon-Kyoung; Kim, Tae-Hwan; Jun, Jae-Bum; Yoo, Dae Hyun; Bae, Sang-Cheol; Kim, Kwangwoo; Bang, So-Young
- Issue Date
- May-2024
- Publisher
- Oxford University Press
- Keywords
- RA; biologic therapy; transcriptome; bioinformatics; statistics
- Citation
- Rheumatology, v.63, no.5, pp 1422 - 1431
- Pages
- 10
- Indexed
- SCIE
SCOPUS
- Journal Title
- Rheumatology
- Volume
- 63
- Number
- 5
- Start Page
- 1422
- End Page
- 1431
- URI
- https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/197452
- DOI
- 10.1093/rheumatology/kead403
- ISSN
- 1462-0324
1462-0332
- Abstract
- Objective: Anti-TNF biologics have been widely used to ameliorate disease activity in patients with RA. However, a large fraction of patients show a poor response to these agents. Moreover, no clinically applicable predictive biomarkers have been established. This study aimed to identify response-associated biomarkers using longitudinal transcriptomic data in two independent RA cohorts.
Methods: RNA sequencing data from peripheral blood cell samples of Korean and Caucasian RA cohorts before and after initial treatment with anti-TNF biologics were analysed to assess treatment-induced expression changes that differed between highly reliable excellent responders and null responders. Weighted correlation network, immune cell composition, and key driver analyses were performed to understand response-associated transcriptomic networks and cell types and their correlation with disease activity indices.
Results: In total, 305 response-associated genes showed significantly different treatment-induced expression changes between excellent and null responders. Co-expression network construction and subsequent key driver analysis revealed that 41 response-associated genes played a crucial role as key drivers of transcriptomic alteration in four response-associated networks involved in various immune pathways: type I IFN signalling, myeloid leucocyte activation, B cell activation, and NK cell/lymphocyte-mediated cytotoxicity. Transcriptomic response scores that we developed to estimate the individual-level degree of expression changes in the response-associated key driver genes were significantly correlated with the changes in clinical indices in independent patients with moderate or ambiguous response outcomes.
Conclusion: This study provides response-specific treatment-induced transcriptomic signatures by comparing the transcriptomic landscape between patients with excellent and null responses to anti-TNF drugs at both gene and network levels.
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