Arthritis Research & Therapy (Jan 2021)

The baseline interferon signature predicts disease severity over the subsequent 5 years in systemic lupus erythematosus

  • Lloyd Mai,
  • Arundip Asaduzzaman,
  • Babak Noamani,
  • Paul R. Fortin,
  • Dafna D. Gladman,
  • Zahi Touma,
  • Murray B. Urowitz,
  • Joan Wither

DOI
https://doi.org/10.1186/s13075-021-02414-0
Journal volume & issue
Vol. 23, no. 1
pp. 1 – 9

Abstract

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Abstract Objectives Type I interferons (IFNs) play an important role in the pathophysiology of systemic lupus erythematosus (SLE). While cross-sectional data suggest an association between IFN-induced gene expression and SLE disease activity, interest in this as a biomarker of flare has been tempered by a lack of fluctuation with disease activity in the majority of patients. This led us to question whether IFN-induced gene expression might instead be a biomarker of overall disease severity, with patients with high levels spending more time in an active disease state. Methods Levels of five interferon-responsive genes were measured in the whole peripheral blood at baseline visit for 137 SLE patients subsequently followed for 5 years. Log transformed values were summed to yield a composite IFN5 score, and the correlation with various disease outcomes examined. Receiver operator characteristic analyses were performed for outcomes of interest. Kaplan-Meier curves were generated to compare the proportion of flare-free patients with high and low IFN5 scores over time. Results The baseline IFN5 score was positively correlated with the adjusted mean SLE disease activity index-2000, number of flares, adjusted mean prednisone dose, and number of new immunosuppressive medications over the subsequent 5 years. Optimal cut-offs for the IFN5 score were determined using Youden’s index and predicted more severe outcomes with 57–67% accuracy. A high baseline IFN5 level was associated with a significantly increased risk of subsequent flare. Conclusions Measurement of the type I IFN signature is a useful tool for predicting the subsequent disease activity course.

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