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Open AccessArticle
ACL-ECG: Anatomy-Aware Contrastive Learning for Multi-Lead Electrocardiograms
by
Wenhan Liu
Wenhan Liu
,
Zhijing Wu
Zhijing Wu and
Zhaohui Yuan
Zhaohui Yuan
Zhaohui Yuan received a B.S. degree in computer science in 2004 from Central China and a Ph.D. in in [...]
Zhaohui Yuan received a B.S. degree in computer science in 2004 from Central China Normal University, and a Ph.D. degree in computer science in 2009 from Wuhan University, also in China. He worked as a PostDoc researcher in Michigan State University. Currently, he is a full professor in East China Jiao Tong University. His research interests include AI in edge computing, real-time and embedded systems and mobile computing.
*
School of Information and Software Engineering, East China Jiaotong University, Nanchang 330013, China
*
Author to whom correspondence should be addressed.
Sensors 2026, 26(3), 1080; https://doi.org/10.3390/s26031080 (registering DOI)
Submission received: 14 January 2026
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Revised: 2 February 2026
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Accepted: 4 February 2026
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Published: 6 February 2026
Abstract
Deep learning has achieved impressive progress in automated electrocardiogram (ECG) analysis, yet its performance still relies heavily on large-scale labeled datasets. As ECG annotation requires cardiologists, this process is costly and time-consuming, limiting its scalability in clinical practice. Contrastive learning offers a promising alternative by enabling the extraction of generalizable representations from unlabeled ECG data. In this study, we propose Anatomy-Aware Contrastive Learning for ECG (ACL-ECG), a self-supervised method that incorporates cardiac anatomical relationships into contrastive learning. ACL-ECG employs a physiology-aware augmentation strategy to generate rhythm-preserving augmented views, including random scale cropping, cardiac-cycle masking, and temporal shifting. Furthermore, ECG leads are grouped into four anatomically meaningful regions—anterior, inferior, septal, and lateral—and region-level contrastive objectives are introduced to promote intra-region consistency while enhancing inter-region discriminability. Extensive evaluations of downstream tasks demonstrate that ACL-ECG consistently outperforms state-of-the-art contrastive baselines under linear probing, achieving improvements of up to 1.29% in the area under the receiver operating characteristic curve (AUROC) and 3.57% in the area under the precision–recall curve (AUPRC). Moreover, when fine-tuned using only 10% of labeled data, ACL-ECG attains a performance comparable to fully supervised training, effectively reducing annotation requirements by approximately 5∼8×. Ablation studies further confirm the contributions of both the physiology-aware augmentation strategy and the anatomy-aware contrastive objective. Overall, ACL-ECG enhances representation quality without increasing annotation burden, and provides a promising and anatomy-informed foundation for self-supervised ECG analysis in label-scarce settings.
Share and Cite
MDPI and ACS Style
Liu, W.; Wu, Z.; Yuan, Z.
ACL-ECG: Anatomy-Aware Contrastive Learning for Multi-Lead Electrocardiograms. Sensors 2026, 26, 1080.
https://doi.org/10.3390/s26031080
AMA Style
Liu W, Wu Z, Yuan Z.
ACL-ECG: Anatomy-Aware Contrastive Learning for Multi-Lead Electrocardiograms. Sensors. 2026; 26(3):1080.
https://doi.org/10.3390/s26031080
Chicago/Turabian Style
Liu, Wenhan, Zhijing Wu, and Zhaohui Yuan.
2026. "ACL-ECG: Anatomy-Aware Contrastive Learning for Multi-Lead Electrocardiograms" Sensors 26, no. 3: 1080.
https://doi.org/10.3390/s26031080
APA Style
Liu, W., Wu, Z., & Yuan, Z.
(2026). ACL-ECG: Anatomy-Aware Contrastive Learning for Multi-Lead Electrocardiograms. Sensors, 26(3), 1080.
https://doi.org/10.3390/s26031080
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