| Title: | Use of an AI Metabolomics Score to Predict Cardiovascular Risk Among Patients with Psoriasis in the MGB and UK Biobanks |
| Journal: | American Journal of Preventive Cardiology |
| Published: | 1 Jun 2026 |
| DOI: | https://doi.org/10.1016/j.ajpc.2026.101696 |
| Title: | Use of an AI Metabolomics Score to Predict Cardiovascular Risk Among Patients with Psoriasis in the MGB and UK Biobanks |
| Journal: | American Journal of Preventive Cardiology |
| Published: | 1 Jun 2026 |
| DOI: | https://doi.org/10.1016/j.ajpc.2026.101696 |
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Background Systemic inflammation in psoriasis accelerates atherosclerosis and confers excess cardiovascular risk that is not fully captured by traditional clinical predictors. Metabolomic profiling may identify disease-specific metabolic signatures associated with cardiovascular events and enhance risk prediction beyond conventional factors. Objectives To determine whether plasma metabolomic profiling improves cardiovascular risk prediction in patients with psoriasis and to develop and externally validate an artificial intelligence-driven metabolomic risk score (MetaPsoAI) for incident cardiovascular events. Methods We analyzed 1,086 individuals with psoriasis and no prior coronary artery disease from the Mass General Brigham (MGB) Biobank who underwent nuclear magnetic resonance-based quantification of 168 circulating metabolites. Associations between metabolites and incident all-cause death or myocardial infarction were assessed. An extreme gradient boosting algorithm was used to develop MetaPsoAI for prediction of myocardial infarction or stroke. External validation was performed in the UK Biobank (n=274,000), stratified by psoriasis status. Results Multiple metabolites, particularly HDL subfractions and amino acid metabolites, were associated with cardiovascular outcomes. MetaPsoAI stratified risk across quartiles, with individuals in the highest quartile demonstrating a 3.6-fold higher risk of myocardial infarction or stroke in the MGB cohort. In the UK Biobank, the highest quartile was associated with a 1.9-fold increased risk among psoriasis patients, with stronger effect sizes compared with non-psoriasis controls. Conclusions Our findings highlight the potential of AI-driven metabolomics to refine cardiovascular risk prediction in immune-mediated diseases and enable precision prevention strategies for patients with psoriasis.</p>
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