Nature Communications (Feb 2024)

Applying a genetic risk score model to enhance prediction of future multiple sclerosis diagnosis at first presentation with optic neuritis

  • Pavel Loginovic,
  • Feiyi Wang,
  • Jiang Li,
  • Lauric Ferrat,
  • Uyenlinh L. Mirshahi,
  • H. Shanker Rao,
  • Axel Petzold,
  • Jessica Tyrrell,
  • Harry D. Green,
  • Michael N. Weedon,
  • Andrea Ganna,
  • Tiinamaija Tuomi,
  • David J. Carey,
  • UKBB Eye & Vision Consortium,
  • FinnGen,
  • Geisinger-Regeneron DiscovEHR Collaboration,
  • Richard A. Oram,
  • Tasanee Braithwaite

DOI
https://doi.org/10.1038/s41467-024-44917-9
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 13

Abstract

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Abstract Optic neuritis (ON) is associated with numerous immune-mediated inflammatory diseases, but 50% patients are ultimately diagnosed with multiple sclerosis (MS). Differentiating MS-ON from non-MS-ON acutely is challenging but important; non-MS ON often requires urgent immunosuppression to preserve vision. Using data from the United Kingdom Biobank we showed that combining an MS-genetic risk score (GRS) with demographic risk factors (age, sex) significantly improved MS prediction in undifferentiated ON; one standard deviation of MS-GRS increased the Hazard of MS 1.3-fold (95% confidence interval 1.07–1.55, P < 0.01). Participants stratified into quartiles of predicted risk developed incident MS at rates varying from 4% (95%CI 0.5–7%, lowest risk quartile) to 41% (95%CI 33–49%, highest risk quartile). The model replicated across two cohorts (Geisinger, USA, and FinnGen, Finland). This study indicates that a combined model might enhance individual MS risk stratification, paving the way for precision-based ON treatment and earlier MS disease-modifying therapy.