Multi-Modality Machine Learning Models to Predict Stroke and Atrial Fibrillation in Patients with Heart Failure
Jiandong Zhou,
Lakshmi Murugappan,
Lei Lu
et al.
Abstract:IntroductionAtrial fibrillation (AF) and stroke are leading causes of death of heart failure patients. Several ML models have been built using electrocardiography (ECG)-only data, or lab test data or health record data to predict these outcomes. However, a multi-modal approach using wearable ECG data integrated with lab tests and electronic health records (EHRs) data has not been developed.ObjectiveThe aim of this study was to apply machine learning techniques to predict stroke and AF amongst heart failure pat… Show more
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