A Cross-Stage Partial Network and a Cross-Attention-Based Transformer for an Electrocardiogram-Based Cardiovascular Disease Decision System

Author:

Lee Chien-Ching12,Chuang Chia-Chun12,Yeng Chia-Hong3ORCID,So Edmund-Cheung1ORCID,Chen Yeou-Jiunn3ORCID

Affiliation:

1. Department of Anesthesia, An Nan Hospital, China Medical University, Tainan City 709, Taiwan

2. Department of Medical Sciences Industry, Chang Jung Christian University, Tainan City 709, Taiwan

3. Department of Electrical Engineering, Southern Taiwan University of Science and Technology, Tainan City 71005, Taiwan

Abstract

Cardiovascular disease (CVD) is one of the leading causes of death globally. Currently, clinical diagnosis of CVD primarily relies on electrocardiograms (ECG), which are relatively easier to identify compared to other diagnostic methods. However, ensuring the accuracy of ECG readings requires specialized training for healthcare professionals. Therefore, developing a CVD diagnostic system based on ECGs can provide preliminary diagnostic results, effectively reducing the workload of healthcare staff and enhancing the accuracy of CVD diagnosis. In this study, a deep neural network with a cross-stage partial network and a cross-attention-based transformer is used to develop an ECG-based CVD decision system. To accurately represent the characteristics of ECG, the cross-stage partial network is employed to extract embedding features. This network can effectively capture and leverage partial information from different stages, enhancing the feature extraction process. To effectively distill the embedding features, a cross-attention-based transformer model, known for its robust scalability that enables it to process data sequences with different lengths and complexities, is employed to extract meaningful embedding features, resulting in more accurate outcomes. The experimental results showed that the challenge scoring metric of the proposed approach is 0.6112, which outperforms others. Therefore, the proposed ECG-based CVD decision system is useful for clinical diagnosis.

Funder

An Nan Hospital, China Medical University

Publisher

MDPI AG

Reference30 articles.

1. Misplaced ECG electrodes and the need for continuing training;Bickerton;Br. J. Cardiac Nurs.,2019

2. Ye, C., Coimbra, M.T., and Vijaya Kumar, B.V.K. (September, January 31). Arrhythmia detection and classification using morphological and dynamic features of ECG signals. Proceedings of the 2010 Annual International Conference of the IEEE Engineering in Medicine and Biology, Buenos Aires, Argentina.

3. (2024, May 05). Available online: www.who.int/health-topics/cardiovascular-diseases/#tab=tab_1.

4. (2024, May 05). Available online: https://www.mohw.gov.tw/cp-16-74869-1.html.

5. Cardiovascular disease as a leading cause of death: How are pharmacists getting involved?;McNamara;Integr. Pharm. Res. Pract.,2019

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