Automatic segmentation of atrial fibrillation and flutter in single-lead electrocardiograms by self-supervised learning and Transformer architecture

被引:8
作者
Yun, Donghwan [1 ,2 ]
Yang, Hyun-Lim [3 ,4 ]
Kwon, Soonil [5 ]
Lee, So-Ryoung [5 ]
Kim, Kyungju [1 ]
Kim, Kwangsoo [6 ]
Lee, Hyung-Chul [3 ]
Jung, Chul-Woo [3 ]
Kim, Yon Su [1 ,2 ]
Han, Seung Seok [1 ]
机构
[1] Seoul Natl Univ, Coll Med, Dept Internal Med, Div Nephrol, 103 Daehak Ro, Seoul 03080, South Korea
[2] Seoul Natl Univ, Coll Med, Dept Biomed Sci, Seoul, South Korea
[3] Seoul Natl Univ, Coll Med, Dept Anesthesiol & Pain Med, Seoul, South Korea
[4] Seoul Natl Univ Hosp, Biomed Res Inst, Seoul, South Korea
[5] Seoul Natl Univ, Coll Med, Dept Internal Med, Div Cardiol, Seoul, South Korea
[6] Seoul Natl Univ Hosp, Transdisciplinary Dept Med & Adv Technol, Seoul, South Korea
关键词
atrial fibrillation; atrial flutter; transformer; electrocardiogram; segmentation; self-supervised learning; DATABASE;
D O I
10.1093/jamia/ocad219
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Objectives Automatic detection of atrial fibrillation and flutter (AF/AFL) is a significant concern in preventing stroke and mitigating hemodynamic instability. Herein, we developed a Transformer-based deep learning model for AF/AFL segmentation in single-lead electrocardiograms (ECGs) by self-supervised learning with masked signal modeling (MSM).Materials and Methods We retrieved data from 11 open-source databases on PhysioNet; 7 of these databases included labeled ECGs, while the other 4 were without labels. Each database contained ECG recordings with durations of >= 30 s. A total of 24 intradialytic ECGs with paroxysmal AF/AFL during 4 h of hemodialysis sessions at Seoul National University Hospital were used for external validation. The model was pretrained by predicting masked areas of ECG signals and fine-tuned by predicting AF/AFL areas. Cross-database validation was used for evaluation, and the intersection over union (IOU) was used as a main performance metric in external database validation.Results In the 7 labeled databases, the areas marked as AF/AFL constituted 41.1% of the total ECG signals, ranging from 0.19% to 51.31%. In the evaluation per ECG segment, the model achieved IOU values of 0.9254 and 0.9477 for AF/AFL segmentation and other segmentation tasks, respectively. When applied to intradialytic ECGs with paroxysmal AF/AFL, the IOUs for the segmentation of AF/AFL and non-AF/AFL were 0.9896 and 0.9650, respectively. Model performance by different training procedure indicated that pretraining with MSM and the application of an appropriate masking ratio both contributed to the model performance. It also showed higher IOUs of AF/AFL labels than in previous studies when training and test databases were matched.Conclusion The present model with self-supervised learning by MSM performs robustly in segmenting AF/AFL.
引用
收藏
页码:79 / 88
页数:10
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