An AI-Powered Clinical Decision Support System to Predict Flares in Rheumatoid Arthritis: A Pilot Study.
Labinsky HannahDubravka UkalovicFabian HartmannVanessa RunftAndré WichmannJan JakubcikKira GambelKatharina OtaniHarriet MorfJule TaubmannFilippo FagniArnd KleyerDavid SimonGeorg SchettMatthias ReichertJohannes KnitzaPublished in: Diagnostics (Basel, Switzerland) (2023)
Treat-to-target (T2T) is a main therapeutic strategy in rheumatology; however, patients and rheumatologists currently have little support in making the best treatment decision. Clinical decision support systems (CDSSs) could offer this support. The aim of this study was to investigate the accuracy, effectiveness, usability, and acceptance of such a CDSS-Rheuma Care Manager (RCM)-including an artificial intelligence (AI)-powered flare risk prediction tool to support the management of rheumatoid arthritis (RA). Longitudinal clinical routine data of RA patients were used to develop and test the RCM. Based on ten real-world patient vignettes, five physicians were asked to assess patients' flare risk, provide a treatment decision, and assess their decision confidence without and with access to the RCM for predicting flare risk. RCM usability and acceptance were assessed using the system usability scale (SUS) and net promoter score (NPS). The flare prediction tool reached a sensitivity of 72%, a specificity of 76%, and an AUROC of 0.80. Perceived flare risk and treatment decisions varied largely between physicians. Having access to the flare risk prediction feature numerically increased decision confidence (3.5/5 to 3.7/5), reduced deviations between physicians and the prediction tool (20% to 12% for half dosage flare prediction), and resulted in more treatment reductions (42% to 50% vs. 20%). RCM usability (SUS) was rated as good (82/100) and was well accepted (mean NPS score 7/10). CDSS usage could support physicians by decreasing assessment deviations and increasing treatment decision confidence.
Keyphrases
- rheumatoid arthritis
- artificial intelligence
- end stage renal disease
- electronic health record
- primary care
- clinical decision support
- chronic kidney disease
- newly diagnosed
- ejection fraction
- machine learning
- peritoneal dialysis
- healthcare
- randomized controlled trial
- gene expression
- palliative care
- decision making
- big data
- deep learning
- systemic lupus erythematosus
- dna methylation
- disease activity
- physical activity
- ankylosing spondylitis
- cross sectional
- systemic sclerosis
- case report
- chronic pain
- social media
- replacement therapy
- juvenile idiopathic arthritis