FADE: Forecasting for Anomaly Detection on ECG
Paula Ruiz-Barroso, Francisco M. Castro, Jos\'e Miranda,, Denisa-Andreea Constantinescu, David Atienza, Nicol\'as Guil

TL;DR
FADE is a deep learning system that forecasts normal ECG signals and detects anomalies with high accuracy, reducing reliance on labeled datasets and manual interpretation for early cardiac anomaly detection.
Contribution
This work introduces FADE, a novel self-supervised deep learning approach using a morphological loss function for ECG anomaly detection without extensive labeled data.
Findings
Achieves 83.84% accuracy in anomaly detection
Correctly classifies normal ECG signals with 85.46% accuracy
Outperforms previous methods in early anomaly detection
Abstract
Cardiovascular diseases, a leading cause of noncommunicable disease-related deaths, require early and accurate detection to improve patient outcomes. Taking advantage of advances in machine learning and deep learning, multiple approaches have been proposed in the literature to address the challenge of detecting ECG anomalies. Typically, these methods are based on the manual interpretation of ECG signals, which is time consuming and depends on the expertise of healthcare professionals. The objective of this work is to propose a deep learning system, FADE, designed for normal ECG forecasting and anomaly detection, which reduces the need for extensive labeled datasets and manual interpretation. FADE has been trained in a self-supervised manner with a novel morphological inspired loss function. Unlike conventional models that learn from labeled anomalous ECG waveforms, our approach predicts…
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Taxonomy
TopicsECG Monitoring and Analysis · Anomaly Detection Techniques and Applications
MethodsSparse Evolutionary Training
