Machine learning to predict major bleeding during anticoagulation for venous thromboembolism: possibilities and limitations

Author:

Mora Damián1,Mateo Jorge2,Nieto José A.1ORCID,Bikdeli Behnood3456,Yamashita Yugo7,Barco Stefano89,Jimenez David1011,Demelo‐Rodriguez Pablo12ORCID,Rosa Vladimir13,Yoo Hugo Hyung Bok14,Sadeghipour Parham15,Monreal Manuel16,

Affiliation:

1. Department of Internal Medicine Hospital Virgen de la Luz Cuenca Spain

2. Institute of Technology, Universidad de Castilla‐La Mancha Cuenca Spain

3. Cardiovascular Medicine Division, Brigham and Women's Hospital Harvard Medical School Boston Massachusetts USA

4. Thrombosis Research Group, Brigham and Women's Hospital Harvard Medical School Boston Massachusetts USA

5. YNHH/Yale Center for Outcomes Research and Evaluation (CORE) New Haven Connecticut USA

6. Cardiovascular Research Foundation (CRF) New York New York USA

7. Department of Cardiovascular Medicine, Graduate School of Medicine Kyoto University Kyoto Japan

8. Department of Angiology University Hospital Zurich Zurich Switzerland

9. Center for Thrombosis and Hemostasis University Hospital Mainz Mainz Germany

10. Respiratory Department Hospital Ramón y Cajal and Universidad de Alcalá (IRYCIS) Madrid Spain

11. CIBER de Enfermedades Respiratorias (CIBERES) Madrid Spain

12. Department of Internal Medicine Hospital General Universitario Gregorio Marañón Madrid Spain

13. Department of Internal Medicine Hospital Universitario Virgen de Arrixaca Murcia Spain

14. Department of Internal Medicine – Pulmonary Division Botucatu Medical School – São Paulo State University (UNESP) São Paulo Brazil

15. Department of Peripheral Vascular Diseases Rajaie Cardiovascular Medical and Research Center Tehran Iran

16. Chair of Thromboembolic Diseases Universidad Católica San Antonio de Murcia Murcia Spain

Abstract

SummaryPredictive tools for major bleeding (MB) using machine learning (ML) might be advantageous over traditional methods. We used data from the Registro Informatizado de Enfermedad TromboEmbólica (RIETE) to develop ML algorithms to identify patients with venous thromboembolism (VTE) at increased risk of MB during the first 3 months of anticoagulation. A total of 55 baseline variables were used as predictors. New data prospectively collected from the RIETE were used for further validation. The RIETE and VTE‐BLEED scores were used for comparisons. External validation was performed with the COMMAND‐VTE database. Learning was carried out with data from 49 587 patients, of whom 873 (1.8%) had MB. The best performing ML method was XGBoost. In the prospective validation cohort the sensitivity, specificity, positive predictive value and F1 score were: 33.2%, 93%, 10%, and 15.4% respectively. F1 value for the RIETE and VTE‐BLEED scores were 8.6% and 6.4% respectively. In the external validation cohort the metrics were 10.3%, 87.6%, 3.5% and 5.2% respectively. In that cohort, the F1 value for the RIETE score was 17.3% and for the VTE‐BLEED score 9.75%. The performance of the XGBoost algorithm was better than that from the RIETE and VTE‐BLEED scores only in the prospective validation cohort, but not in the external validation cohort.

Publisher

Wiley

Subject

Hematology

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