In this on-demand activity, Deepthy Varghese, MSN, ACNP, FNP, Northside Hospital is joined by Tina Baykaner, MD, MPH Stanford University, and Gurukripa N Kowlgi, MBBS, MSci, Mayo Clinic Rochester to discuss; the multicenter study investigated the potential of machine learning (ML) models to improve risk stratification for implantable cardioverter-defibrillator (ICD) implantation in patients at risk of sudden cardiac death (SCD). By combining clinical variables with 12-lead electrocardiogram (ECG) time-series features, the models aimed to predict non-arrhythmic mortality within three years after device implantation. Results showed that ML models identified patients at risk with high accuracy, demonstrating robust performance in both the development and external validation cohorts. This suggests that ML-based approaches could enhance risk assessment for SCD prevention in primary prevention populations.
- Provider:Heart Rhythm Society
- Activity Link: https://www.heartrhythm365.org/URL/TheLeadEpisode67
- Start Date: 2024-06-26 05:00:00
- End Date: 2024-06-26 05:00:00
- Credit Details: AMA PRA Category 1 Credit™️: 0.25 hours
- MOC Credit Details: ABIM - 0.25 Point; Credit Type(s): Medical Knowledge (ABIM)
ABP - 0.25 Point; Credit Type(s): Lifelong Learning and Self-Assessment (ABP) - Commercial Support: No
- Activity Type: Enduring Material
- CME Finder Type: Online Learning
- Fee to Participate: No, it's free
- Measured Outcome: Learner Competence
- Provider Ship: Directly Provided
- Registration: Open to all
- Specialty: Clinical Cardiac Electrophysiology, Pediatric Cardiology