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Machine Learning Predicts Bleeding Risk in Atrial Fibrillation Patients on Direct Oral Anticoagulant.

Publication ,  Journal Article
Chaudhary, R; Nourelahi, M; Thoma, FW; Gellad, WF; Lo-Ciganic, W-H; Chaudhary, R; Dua, A; Bliden, KP; Gurbel, PA; Neal, MD; Jain, S; Wang, Y ...
Published in: Am J Cardiol
June 1, 2025

Predicting major bleeding in nonvalvular atrial fibrillation (AF) patients on direct oral anticoagulants (DOACs) is crucial for personalized care. Alternatives like left atrial appendage closure devices lower stroke risk with fewer nonprocedural bleeds. This study compares machine learning (ML) models with conventional bleeding risk scores (HAS-BLED, ORBIT, and ATRIA) for predicting bleeding events requiring hospitalization in AF patients on DOACs at their index cardiologist visit. This retrospective cohort study used electronic health records from 2010 to 2022 at the University of Pittsburgh Medical Center. It included 24,468 nonvalvular AF patients (age ≥18) on DOACs, excluding those with prior significant bleeding or warfarin use. The primary outcome was hospitalization for bleeding within one year, with follow-up at one, two, and five years. ML algorithms (logistic regression, classification trees, random forest, XGBoost, k-nearest neighbor, naïve Bayes) were compared for performance. Of 24,468 patients, 553 (2.3%) had bleeding within one year, 829 (3.5%) within two years, and 1,292 (5.8%) within five years. ML models outperformed HAS-BLED, ATRIA, and ORBIT in 1-year predictions. The random forest model achieved an AUC of 0.76 (0.70 to 0.81), G-Mean of 0.67, and net reclassification index of 0.14 compared to HAS-BLED's AUC of 0.57 (p < 0.001). ML models showed superior results across all timepoints and for hemorrhagic stroke. SHAP analysis identified new risk factors, including BMI, cholesterol profile, and insurance type. In conclusion, ML models demonstrated improved performance to conventional bleeding risk scores and uncovered novel risk factors, offering potential for more personalized bleeding risk assessment in AF patients on DOACs.

Duke Scholars

Published In

Am J Cardiol

DOI

EISSN

1879-1913

Publication Date

June 1, 2025

Volume

244

Start / End Page

58 / 66

Location

United States

Related Subject Headings

  • Stroke
  • Risk Factors
  • Risk Assessment
  • Retrospective Studies
  • Middle Aged
  • Male
  • Machine Learning
  • Humans
  • Hospitalization
  • Hemorrhage
 

Citation

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ICMJE
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Chaudhary, R., Nourelahi, M., Thoma, F. W., Gellad, W. F., Lo-Ciganic, W.-H., Dua, A., … Visweswaran, S. (2025). Machine Learning Predicts Bleeding Risk in Atrial Fibrillation Patients on Direct Oral Anticoagulant. Am J Cardiol, 244, 58–66. https://doi.org/10.1016/j.amjcard.2025.02.030
Chaudhary, Rahul, Mehdi Nourelahi, Floyd W. Thoma, Walid F. Gellad, Wei-Hsuan Lo-Ciganic, Rohit Chaudhary, Anahita Dua, et al. “Machine Learning Predicts Bleeding Risk in Atrial Fibrillation Patients on Direct Oral Anticoagulant.Am J Cardiol 244 (June 1, 2025): 58–66. https://doi.org/10.1016/j.amjcard.2025.02.030.
Chaudhary R, Nourelahi M, Thoma FW, Gellad WF, Lo-Ciganic W-H, Dua A, et al. Machine Learning Predicts Bleeding Risk in Atrial Fibrillation Patients on Direct Oral Anticoagulant. Am J Cardiol. 2025 Jun 1;244:58–66.
Chaudhary, Rahul, et al. “Machine Learning Predicts Bleeding Risk in Atrial Fibrillation Patients on Direct Oral Anticoagulant.Am J Cardiol, vol. 244, June 2025, pp. 58–66. Pubmed, doi:10.1016/j.amjcard.2025.02.030.
Chaudhary R, Nourelahi M, Thoma FW, Gellad WF, Lo-Ciganic W-H, Dua A, Bliden KP, Gurbel PA, Neal MD, Jain S, Bhonsale A, Mulukutla SR, Wang Y, Harinstein ME, Saba S, Visweswaran S. Machine Learning Predicts Bleeding Risk in Atrial Fibrillation Patients on Direct Oral Anticoagulant. Am J Cardiol. 2025 Jun 1;244:58–66.
Journal cover image

Published In

Am J Cardiol

DOI

EISSN

1879-1913

Publication Date

June 1, 2025

Volume

244

Start / End Page

58 / 66

Location

United States

Related Subject Headings

  • Stroke
  • Risk Factors
  • Risk Assessment
  • Retrospective Studies
  • Middle Aged
  • Male
  • Machine Learning
  • Humans
  • Hospitalization
  • Hemorrhage