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American Heart Association

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Final ID: Su3041

Machine learning identifies clinically distinct phenotypes in patients with aortic regurgitation.

Abstract Body (Do not enter title and authors here): Background: Aortic regurgitation (AR) is a prevalent valve disease with a long latent period to symptoms. Recent data has suggested the role of novel markers of myocardial overload in assessing onset of decompensation.
Method: We sought to evaluate the role of unsupervised cluster analyses in identifying different clinical clusters, including clinical status, and a large number of echocardiographic variables including left ventricular (LV) volumes, and their association with mortality. Patients with ≥moderate-severe chronic AR identified using echocardiography at Mayo Clinic, Rochester were retrospectively analyzed. Primary outcome was all-cause mortality censored at aortic valve surgery/last follow-up. Uniform Manifold Approximation and Projection (UMAP) with K-means algorithm was used to cluster patients using clinical and, echocardiographic variables at the time of presentation. Missing data were imputed with the Multiple Imputation by Chained Equations (MICE) method. A supervised approach trained on the training set was used to find cluster membership in a hold-out validation set. Log-rank tests were used to assess differences in mortality rates between the clusters, both in the training and validation sets.
Results: Three distinct clusters were identified among 1100 patients (log-rank P for survival <0.001). Cluster 1 (n=337), which included younger males with severe AR but fewer symptoms, showed the best survival, 75.6% (69.5, 82.3). Cluster 2 (n=235), older and more females with elevated filling pressures, showed intermediate survival of 64.2 % (56.8, 72.5). Cluster 3 (n=253), characterized by severe symptomatic AR, demonstrated the lowest survival of 45.3 % (34.4, 59.8) at 5 years. Similar clusters were formed in the internal validation cohort.
Conclusion: Distinct clusters with variable echocardiographic features and mortality differences exist within patients with chronic ≥moderate-severe AR. Recognizing these clusters can refine individual risk stratification and clinical decision-making after verification in future prospective studies.
  • Deb, Brototo  ( MedsStar Georgetown , Washington , California , United States )
  • Scott, Christopher  ( Mayo clinic , Rochester , Minnesota , United States )
  • Michelena, Hector  ( MAYO CLINIC , Rochester , Minnesota , United States )
  • Pislaru, Sorin  ( MAYO CLINIC , Rochester , Minnesota , United States )
  • Nkomo, Vuyisile  ( MAYO CLINIC , Rochester , Minnesota , United States )
  • Kane, Garvan  ( MAYO FOUNDATION , Rochester , Minnesota , United States )
  • Crestanello, Juan  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Pellikka, Patricia  ( MAYO CLINIC COLLEGE MEDICINE , Rochester , Minnesota , United States )
  • Anand, Vidhu  ( Mayo Clinic , Rochester , Minnesota , United States )
  • Author Disclosures:
    Brototo Deb: DO NOT have relevant financial relationships | Christopher Scott: DO NOT have relevant financial relationships | Hector Michelena: No Answer | Sorin Pislaru: No Answer | Vuyisile Nkomo: No Answer | Garvan Kane: DO NOT have relevant financial relationships | Juan Crestanello: No Answer | Patricia Pellikka: DO have relevant financial relationships ; Research Funding (PI or named investigator):Ultromics Ltd:Active (exists now) ; Research Funding (PI or named investigator):TerSera:Past (completed) ; Research Funding (PI or named investigator):GE Healthcare:Past (completed) ; Consultant:Astellas:Past (completed) ; Research Funding (PI or named investigator):Edwards Lifesciences:Active (exists now) | Vidhu Anand: No Answer
Meeting Info:

Scientific Sessions 2024

2024

Chicago, Illinois

Session Info:

AI at Heart: Revolutionizing Cardiovascular Imaging

Sunday, 11/17/2024 , 11:30AM - 12:30PM

Abstract Poster Session

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