Precision medicine in the care of rheumatoid arthritis: Focus on prediction and prevention of future clinically-apparent disease
- PMID: 32173516
- DOI: 10.1016/j.autrev.2020.102506
Precision medicine in the care of rheumatoid arthritis: Focus on prediction and prevention of future clinically-apparent disease
Abstract
There is an emerging understanding that an individual's risk for future rheumatoid arthritis (RA) can be determined using a combination of factors while they are still in a state where clinically-apparent inflammatory arthritis (IA) is not yet present. Indeed, this concept has underpinned several completed and ongoing prevention trials in RA. Importantly, risk factors can be divided into modifiable (e.g. smoking, exercise, dental care and diet) and non-modifiable factors (e.g. genetics, sex, age). In addition, there are now several biomarkers including autoantibodies, inflammatory markers and imaging techniques that are highly predictive of future clinically-apparent IA/RA. Although none of the prevention studies have yet provided major breakthroughs, several of them have provided valuable insights that can help to improve the design of future clinical trials and enable RA prevention. In aggregate, these findings suggest that the most accurate disease prediction models will require the combination of demographic and clinical information, biomarkers and potentially medical imaging data to identify individuals for intervention. This review summarizes some of the key aspects around precision medicine in RA with special focus on disease prediction and prevention.
Keywords: Autoantibodies; Prediction; Prevention; Rheumatoid arthritis; Risk factors; Treatment.
Copyright © 2020 Elsevier B.V. All rights reserved.
Conflict of interest statement
Declaration of Competing Interest Michael Mahler and Laura Martinez-Prat are employees of Inova Diagnostics, a diagnostic company. Kevin Deane and Jeffrey Sparks are investigators of the StopRA trial. No other conflict of interest applies.
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