Transcriptomic network analysis reveals key drivers of response to anti-TNF biologics in patients with rheumatoid arthritis

Author:

Yu Chae-Yeon12,Lee Hye-Soon3,Joo Young Bin3ORCID,Cho Soo-Kyung3,Choi Chan-Bum3,Sung Yoon-Kyoung3ORCID,Kim Tae-Hwan3ORCID,Jun Jae-Bum3,Yoo Dae Hyun3,Bae Sang-Cheol3,Kim Kwangwoo12ORCID,Bang So-Young3

Affiliation:

1. Department of Biology, Kyung Hee University , Seoul, Republic of Korea

2. Department of Biomedical and Pharmaceutical Sciences, Kyung Hee University , Seoul, Republic of Korea

3. Department of Rheumatology, Hanyang University Hospital for Rheumatic Diseases and Hanyang University Institute for Rheumatology , Seoul, Republic of Korea

Abstract

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.

Funder

Basic Science Research Program through the National Research Foundation (NRF) of Korea

Korea Healthcare Technology R&D Project

Korean government

Publisher

Oxford University Press (OUP)

Subject

Pharmacology (medical),Rheumatology

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