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RawECGNet: Deep Learning Generalization for Atrial Fibrillation Detection From the Raw ECG

Noam Ben-Moshe, Kenta Tsutsui, Shany Biton Brimer, Eran Zvuloni, Leif Sörnmo, Joachim A. Behar

2024IEEE Journal of Biomedical and Health Informatics24 citationsDOI

Abstract

INTRODUCTION: Deep learning models for detecting episodes of atrial fibrillation (AF) using rhythm information in long-term ambulatory ECG recordings have shown high performance. However, the rhythm-based approach does not take advantage of the morphological information conveyed by the different ECG waveforms, particularly the f-waves. As a result, the performance of such models may be inherently limited. METHODS: To address this limitation, we have developed a deep learning model, named RawECGNet, to detect episodes of AF and atrial flutter (AFl) using the raw, single-lead ECG. We compare the generalization performance of RawECGNet on two external data sets that account for distribution shifts in geography, ethnicity, and lead position. RawECGNet is further benchmarked against a state-of-the-art deep learning model, named ArNet2, which utilizes rhythm information as input. RESULTS: Using RawECGNet, the results for the different leads in the external test sets in terms of the F1 score were 0.91-0.94 in RBDB and 0.93 in SHDB, compared to 0.89-0.91 in RBDB and 0.91 in SHDB for ArNet2. The results highlight RawECGNet as a high-performance, generalizable algorithm for detection of AF and AFl episodes, exploiting information on both rhythm and morphology.

Topics & Concepts

Artificial intelligenceDeep learningComputer scienceGeneralizationAtrial fibrillationAtrial flutterMachine learningMathematicsMedicineInternal medicineMathematical analysisECG Monitoring and AnalysisAtrial Fibrillation Management and OutcomesCardiac Arrhythmias and Treatments
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