» Articles » PMID: 33083788

ECGNET: Learning Where to Attend for Detection of Atrial Fibrillation with Deep Visual Attention

Overview
Date 2020 Oct 21
PMID 33083788
Citations 16
Authors
Affiliations
Soon will be listed here.
Abstract

The complexity of the patterns associated with atrial fibrillation (AF) and the high level of noise affecting these patterns have significantly limited the application of current signal processing and shallow machine learning approaches to accurately detect this condition. Deep neural networks have shown to be very powerful to learn the non-linear patterns in various problems such as computer vision tasks. While deep learning approaches have been utilized to learn complex patterns related to the presence of AF in electrocardiogram (ECG) signals, they can considerably benefit from knowing which parts of the signal is more important to focus on during learning. In this paper, we introduce a two-channel deep neural network to more accurately detect the presence of AF in the ECG signals. The first channel takes in an ECG signal and automatically learns where to attend for detection of AF. The second channel simultaneously takes in the same ECG signal to consider all features of the entire signal. Besides improving detection accuracy, this model can guide the physicians via visualization that what parts of the given ECG signal are important to attend while trying to detect atrial fibrillation. The experimental results confirm that the proposed model significantly improves the performance of AF detection on well-known MIT-BIH AF database with 5-s ECG segments (achieved a sensitivity of 99.53%, specificity of 99.26% and accuracy of 99.40%).

Citing Articles

Deep learning and electrocardiography: systematic review of current techniques in cardiovascular disease diagnosis and management.

Wu Z, Guo C Biomed Eng Online. 2025; 24(1):23.

PMID: 39988715 PMC: 11847366. DOI: 10.1186/s12938-025-01349-w.


An Explainable AI Application (AF'fective) to Support Monitoring of Patients With Atrial Fibrillation After Catheter Ablation: Qualitative Focus Group, Design Session, and Interview Study.

She W, Siriaraya P, Iwakoshi H, Kuwahara N, Senoo K JMIR Hum Factors. 2025; 12:e65923.

PMID: 39946707 PMC: 11888073. DOI: 10.2196/65923.


Higher-Order Spectral Analysis Combined with a Convolution Neural Network for Atrial Fibrillation Detection-Preliminary Study.

Mika B, Komorowski D Sensors (Basel). 2024; 24(13).

PMID: 39000950 PMC: 11243991. DOI: 10.3390/s24134171.


Multiscale dilated convolutional neural network for Atrial Fibrillation detection.

Xia L, He S, Huang Y, Ma H PLoS One. 2024; 19(6):e0301691.

PMID: 38829846 PMC: 11146707. DOI: 10.1371/journal.pone.0301691.


Automated identification of atrial fibrillation from single-lead ECGs using multi-branching ResNet.

Xie J, Stavrakis S, Yao B Front Physiol. 2024; 15:1362185.

PMID: 38655032 PMC: 11035782. DOI: 10.3389/fphys.2024.1362185.


References
1.
Huang C, Ye S, Chen H, Li D, He F, Tu Y . A novel method for detection of the transition between atrial fibrillation and sinus rhythm. IEEE Trans Biomed Eng. 2010; 58(4):1113-9. DOI: 10.1109/TBME.2010.2096506. View

2.
Babaeizadeh S, Gregg R, Helfenbein E, Lindauer J, Zhou S . Improvements in atrial fibrillation detection for real-time monitoring. J Electrocardiol. 2009; 42(6):522-6. DOI: 10.1016/j.jelectrocard.2009.06.006. View

3.
Zhou X, Ding H, Ung B, Pickwell-MacPherson E, Zhang Y . Automatic online detection of atrial fibrillation based on symbolic dynamics and Shannon entropy. Biomed Eng Online. 2014; 13(1):18. PMC: 3996093. DOI: 10.1186/1475-925X-13-18. View

4.
Lee J, Nam Y, McManus D, Chon K . Time-varying coherence function for atrial fibrillation detection. IEEE Trans Biomed Eng. 2013; 60(10):2783-93. DOI: 10.1109/TBME.2013.2264721. View

5.
Jiang K, Huang C, Ye S, Chen H . High accuracy in automatic detection of atrial fibrillation for Holter monitoring. J Zhejiang Univ Sci B. 2012; 13(9):751-6. PMC: 3437373. DOI: 10.1631/jzus.B1200107. View