Project

Prediction of arrhythmias based on 10-second 12-lead ECG signals

Code
01CD05725
Duration
01 September 2025 → 31 March 2026
Funding
Regional and community funding: Special Research Fund
Research disciplines
  • Natural sciences
    • Machine learning and decision making
  • Engineering and technology
    • Pattern recognition and neural networks
    • Human health engineering
Keywords
Health care cardiovascular monitoring predictive modeling
 
Project description
Heart arrhythmia such as atrial fibrillation can pose a serious health risk for patients. The early detection and monitoring are crucial to prevent complications. This project develops AI models with advanced deep learning techniques to improve risk patient screening and predict disease progression. Longitudinal ECG data analysis can help to identify subtle rhythm patterns, allowing abnormalities to be detected early, even before clinical symptoms appear.