Benchmarking the Impact of Noise on Deep Learning-based Classification of Atrial Fibrillation in 12-Lead ECG
Theresa Bender, Philip Gemke, Ennio Idrobo-Avila, Henning Dathe,, Dagmar Krefting, Nicolai Spicher

TL;DR
This study benchmarks how different noise types affect deep learning models' ability to detect atrial fibrillation in 12-lead ECGs, showing robustness even with noisy signals and minimal preprocessing needed.
Contribution
It provides a systematic evaluation of noise impact on deep learning ECG classification, highlighting the model's robustness and potential to reduce preprocessing.
Findings
Deep learning models maintain high accuracy despite noise presence.
False positives and negatives increase slightly with noise.
Baseline drift noise has minimal impact on accuracy.
Abstract
Electrocardiography analysis is widely used in various clinical applications and Deep Learning models for classification tasks are currently in the focus of research. Due to their data-driven character, they bear the potential to handle signal noise efficiently, but its influence on the accuracy of these methods is still unclear. Therefore, we benchmark the influence of four types of noise on the accuracy of a Deep Learning-based method for atrial fibrillation detection in 12-lead electrocardiograms. We use a subset of a publicly available dataset (PTBXL) and use the metadata provided by human experts regarding noise for assigning a signal quality to each electrocardiogram. Furthermore, we compute a quantitative signal-to-noise ratio for each electrocardiogram. We analyze the accuracy of the Deep Learning model with respect to both metrics and observe that the method can robustly…
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Taxonomy
TopicsECG Monitoring and Analysis · Atrial Fibrillation Management and Outcomes · EEG and Brain-Computer Interfaces
