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An Atrial Fibrillation Detection Strategy in Dynamic ECGs with Significant Individual Differences

IEEE Transactions on Instrumentation and Measurement(2023)

Southeast Univ

Cited 0|Views31
Abstract
Atrial fibrillation (AF) is an insidious disease. Many long-term wearable electrocardiogram (ECG) monitoring devices have been used to monitor AF. The accuracy of detectors used to classify AF/sinus rhythm is already very high on the public database. Due to the significant individual differences and interference from other arrhythmias (e.g., premature beats), the performance of the developed AF detectors can degrade when tested on wearable ECGs. To tackle this, we proposed to use a domain-adversarial (DA) learning strategy to minimize feature distribution between the annotated public ECG database (the MIT-BIH AF database) and unlabeled dynamic ECG recordings to improve AF recognition accuracy. DA algorithms based on the shifted window transformer (DA-ST) and residual neural network (DA-RN) were proposed and validated on the 2021 China Physiological Signal Challenge (CPSC) database including four datasets. The accuracies were 93.85%, 89.78%, 91.93%, and 87.35% on the four datasets when using DA-ST. The corresponding results were 96.67%, 92.25%, 90.58%, and 89.46% when utilizing DA-RN. Importantly, these results demonstrated superior performance compared to the results obtained without DA. The proposed method was validated on 12 wearable long-term recordings, consisting of four recordings with premature beats, four recordings of AF with premature beats, two recordings of sinus rhythms, and two recordings of AF. The average results were 98.67% (DA-ST) and 97.89% (DA-RN), proving that the proposed method could provide reliable AF detection for dynamic ECG recordings with significant individual differences.
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Key words
Electrocardiography,Recording,Databases,Monitoring,Rhythm,Detectors,Biomedical monitoring,Atrial fibrillation (AF),domain-adversarial network (DAN),dynamic electrocardiogram (ECGs),ECG,residual neural network (ResNet),shifted window transformer (Swin-Transformer)
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