Abstract

We profiled gene expression signatures to distinguish rheumatoid arthritis (RA) from non-inflammatory arthralgia (NIA), self-limiting arthritis (SLA), and undifferentiated arthritis (UA) as compared to healthy controls as novel potential biomarkers for therapeutic responsiveness. Global gene expression profiles of PBMCs from 43 drug-naïve patients presenting with joint symptoms were evaluated and differentially expressed genes identified by comparative analysis with 24 healthy volunteers. Patients were assessed at presentation with follow up at 6 and 12 months. Gene ontology and network pathway analysis were performed using DAVID Bioinformatics Resources v6.7. Gene expression profiles were also determined after disease-modifying anti-rheumatic drug (DMARD) treatment in the inflammatory arthritis groups (i.e. RA and UA) and confirmed by qRT-PCR. Receiver operating characteristic (ROC) curves analysis and Area Under the Curve (AUC) estimation were performed to assess the diagnostic value of candidate gene expression signatures. A type I interferon (IFN) gene signature distinguished DMARD-naïve patients who will subsequently develop persistent inflammatory arthritis (i.e. RA and UA) from those with NIA. In patients with RA, the IFN signature is characterised by up-regulation of SIGLEC1 (p = 0.00597) and MS4A4A (p = 0.00000904). We also identified, EPHB2 (p = 0.000542) and PDZK1IP1 (p = 0.0206) with RA-specific gene expression profiles and elevated expression of the ST6GALNAC1 (p = 0.0023) gene in UA. ROC and AUC risk score analysis suggested that MSA4A (AUC: 0.894, 0.644, 0.720), PDZK1IP1 (AUC: 0.785, 0.806, 0.977), and EPHB2 (AUC: 0.794, 0.723, 0.620) at 0, 6, and 12 months follow-up can accurately discriminate patients with RA from healthy controls and may have practical value for RA diagnosis. In patients with early inflammatory arthritis, ST6GALNAC1 is a potential biomarker for UA as compared with healthy controls whereas EPHB2, MS4A4A, and particularly PDZK1IP1 may discriminate RA patients. SIGLEC1 may also be a useful marker of disease activity in UA.

Highlights

  • We profiled gene expression signatures to distinguish rheumatoid arthritis (RA) from non-inflammatory arthralgia (NIA), self-limiting arthritis (SLA), and undifferentiated arthritis (UA) as compared to healthy controls as novel potential biomarkers for therapeutic responsiveness

  • Candidate gene-based and comprehensive in silico genome-wide association studies (GWAS) study meta-analysis have contributed to defining this heritability, identifying more than 98 biological candidate genes at 101 non-HLA RA susceptibility loci[6,7], very little is known about how these genetic risks influence disease development or treatment response in human studies

  • Where there was definite peripheral arthritis at presentation but the patient was deemed to be in remission by 6 months follow-up without the need for disease-modifying anti-rheumatic drug (DMARD), the patient was assigned a retrospective classification of SLA. 23 patients in this analysis had persistent inflammatory arthritis [i.e. 14 RA and 9 UA

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Summary

Introduction

We profiled gene expression signatures to distinguish rheumatoid arthritis (RA) from non-inflammatory arthralgia (NIA), self-limiting arthritis (SLA), and undifferentiated arthritis (UA) as compared to healthy controls as novel potential biomarkers for therapeutic responsiveness. Further in silico analysis based on functional annotation, cis-acting expression quantitative trait loci, pathway analyses and genetic overlap with human primary immunodeficiency, haematological cancer somatic mutations and knockout mouse phenotypes identified 98 biological candidate genes at these 101 risk loci Among these new susceptibility loci, a number of which were associated with RA overall and several of which were associated with disease that was anti-citrullinated peptide antibody positive[5]. We report the results of gene expression signatures of a longitudinal study in well-defined clinical cohorts of drug-naïve, early inflammatory arthritis patients to distinguish RA from non-inflammatory arthralgia (NIA), self-limiting arthritis

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