4.7 Article

Deepaware: A hybrid deep learning and context-aware heuristics-based model for atrial fibrillation detection

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出版社

ELSEVIER IRELAND LTD
DOI: 10.1016/j.cmpb.2022.106899

关键词

Atrial fibrillation; Deep learning; Electrocardiogram (ECG); Arrhythmia; Health informatics; Long short-term memory (LSTM); Context-awareness; Convolutional neural networks

资金

  1. Copenhagen Center for Health Technology
  2. Innovation fund Denmark [6153-0 0 0 09B]

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This paper proposes a novel hybrid model called DeepAware, which combines deep learning and context-aware heuristics to effectively reduce false positive rates and improve atrial fibrillation detection performance in free-living ambulatory electrocardiogram data. The model utilizes various features and demonstrates good generalization on unseen datasets.
Background: State-of-the-art automatic atrial fibrillation (AF) detection models trained on RR-interval (RRI) features generally produce high performance on standard benchmark electrocardiogram (ECG) AF datasets. These models, however, result in a significantly high false positive rates (FPRs) when applied on ECG data collected under free-living ambulatory conditions and in the presence of non-AF arrhythmias. Method: This paper proposes DeepAware, a novel hybrid model combining deep learning (DL) and context-aware heuristics (CAH), which reduces the FPR effectively and improves the AF detection performance on participant-operated ambulatory ECG from free-living conditions. It exploits the RRI and P-wave features, as well as the contextual features from the ambulatory ECG. Results: DeepAware is shown to be very generalizable and superior to the state-of-the-art models when applied on unseen benchmark ECG AF datasets. Most importantly, the model is able to detect AF efficiently when applied on participant-operated ambulatory ECG recordings from free-living conditions and has achieved a sensitivity (Se), specificity (Sp), and accuracy (Acc) of 97.94%, 98.39%, 98.06%, respectively. Results also demonstrate the effect of atrial activity analysis (via P-waves detection) and CAH in reducing the FPR over the RRI features-based AF detection model. Conclusions: The proposed DeepAware model can substantially reduce the physician's workload of manually reviewing the false positives (FPs) and facilitate long-term ambulatory monitoring for early detection of AF. (c) 2022 The Author(s). Published by Elsevier B.V. This is an open access article under the CC BY license ( http://creativecommons.org/licenses/by/4.0/ )

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