Can a pre-trained deep-learning model using single-lead ECG data predict cardiac arrest risk?
A pre-trained deep-learning model utilizing single-lead ECG data is proposed to predict sudden cardiac arrest risk, potentially enabling continuous monitoring via wearable devices.
Sudden cardiac arrest (SCA) is the sudden loss of all heart activity due to an irregular heart rhythm, accounting for about 20% of fatalities in developed countries. Detecting SCA early is challenging because it occurs suddenly and unpredictably. Electrocardiograms (ECGs) provide valuable heart activity data utilized by Machine Learning (ML) models to predict known conditions like arrhythmias rather than predicting cardiac arrest risk. Additionally, these ML models typically rely on the full 12-lead ECGs, which is impractical for wearable devices. The proposed method in this study utilizes a pre-trained deep-learning model to predict cardiac arrest risk using single-lead ECG data.
Safari et al. (Mon,) studied this question.