DConv-LSTM-Net: A Novel Architecture for Single and 12-Lead ECG Anomaly Detection

, , , , & (2023) DConv-LSTM-Net: A Novel Architecture for Single and 12-Lead ECG Anomaly Detection. IEEE Sensors Journal, 23(19), pp. 22763-22776.

View at publisher

Description

Electrocardiograms (ECGs) can be considered a viable method for cardiovascular disease (CVD) diagnosis. Recently, machine learning algorithms such as deep neural networks trained on ECG signals have demonstrated the capability to identify CVDs. However, existing models for ECG anomaly detection learn from relatively long (60 s) ECG signals and tend to be heavily parameterized. Thus, they require large time and computational resources during training. To address this, we propose a novel deep learning architecture that exploits dilated convolution layers. Our architecture benefits from a classical ResNet-like formulation, and we introduce a recurrent component to better leverage temporal information in the data, while also benefiting from the dilated convolution operation. Our proposed architecture is capable of learning from single-and 12-lead ECG signals and thus offers a flexible solution for CVD diagnosis. In our experiments, we perform subject-independent ten-fold cross-validations (CVs) and compare our results with two existing benchmark models using the PhysioNet atrial fibrillation (AF) challenge dataset, the China Physiological challenge, the PTB-XL repository from PhysioNet, and the Georgia dataset. For all the four datasets, our model archives state-of-the-art performance, with an upto 8% F1 score gain achieved. Our neural conduction plots demonstrate the effectiveness of having convolution layers with varying dilation factors and the use of recurrent networks to capture rhythmic patterns. Our architecture is explainable and has the ability to learn from short ECG segments. Using neural conductance, we reveal interesting hidden patterns learned by our model, which reflect the medical phenomena/characteristics associated with CVD. Code is publically available here.

Impact and interest:

2 citations in Scopus
Search Google Scholar™

Citation counts are sourced monthly from Scopus and Web of Science® citation databases.

These databases contain citations from different subsets of available publications and different time periods and thus the citation count from each is usually different. Some works are not in either database and no count is displayed. Scopus includes citations from articles published in 1996 onwards, and Web of Science® generally from 1980 onwards.

Citations counts from the Google Scholar™ indexing service can be viewed at the linked Google Scholar™ search.

ID Code: 242278
Item Type: Contribution to Journal (Journal Article)
Refereed: Yes
ORCID iD:
Fernando, Tharinduorcid.org/0000-0002-6935-1816
Denman, Simonorcid.org/0000-0002-0983-5480
Sridharan, Sridhaorcid.org/0000-0003-4316-9001
Fookes, Clintonorcid.org/0000-0002-8515-6324
Measurements or Duration: 14 pages
Keywords: anomaly detection, deep learning, electrocardiogram, interpretation, signal processing
DOI: 10.1109/JSEN.2023.3300752
ISSN: 1530-437X
Pure ID: 142441886
Divisions: Current > QUT Faculties and Divisions > Faculty of Engineering
Current > Schools > School of Electrical Engineering & Robotics
Copyright Owner: 2023 IEEE
Copyright Statement: This work is covered by copyright. Unless the document is being made available under a Creative Commons Licence, you must assume that re-use is limited to personal use and that permission from the copyright owner must be obtained for all other uses. If the document is available under a Creative Commons License (or other specified license) then refer to the Licence for details of permitted re-use. It is a condition of access that users recognise and abide by the legal requirements associated with these rights. If you believe that this work infringes copyright please provide details by email to qut.copyright@qut.edu.au
Deposited On: 15 Aug 2023 00:44
Last Modified: 12 Jul 2024 07:22