ECGXtract: Deep Learning-based ECG Feature Extraction for Automated CVD Diagnosis
Youssif Abuzied, Hassan AbdEltawab, Abdelrhman Gaber, and Tamer ElBatt

TL;DR
ECGXtract is a deep learning approach that accurately extracts interpretable ECG features for automated cardiovascular disease diagnosis, outperforming existing methods and enabling scalable, resource-efficient clinical applications.
Contribution
The paper introduces ECGXtract, a novel deep learning model capable of extracting multiple ECG features with high interpretability and accuracy, including strategies for multi-feature extraction and model optimization.
Findings
ECGXtract achieves a mean correlation score of 0.80 for global features.
ECGXtract outperforms ECGdeli in 90% of features.
Lead II provides the best results among leads.
Abstract
This paper presents ECGXtract, a deep learning-based approach for interpretable ECG feature extraction, addressing the limitations of traditional signal processing and black-box machine learning methods. In particular, we develop convolutional neural network models capable of extracting both temporal and morphological features with strong correlations to a clinically validated ground truth. Initially, each model is trained to extract a single feature, ensuring precise and interpretable outputs. A series of experiments is then carried out to evaluate the proposed method across multiple setups, including global versus lead-specific features, different sampling frequencies, and comparisons with other approaches such as ECGdeli. Our findings show that ECGXtract achieves robust performance across most features with a mean correlation score of 0.80 with the ground truth for global features,…
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Taxonomy
TopicsECG Monitoring and Analysis · Cardiac electrophysiology and arrhythmias · Atrial Fibrillation Management and Outcomes
