2000 character limit reached
A Multi-View Learning Approach to Enhance Automatic 12-Lead ECG Diagnosis Performance (2208.00323v1)
Published 30 Jul 2022 in eess.SP, cs.AI, and cs.LG
Abstract: The performances of commonly used electrocardiogram (ECG) diagnosis models have recently improved with the introduction of deep learning (DL). However, the impact of various combinations of multiple DL components and/or the role of data augmentation techniques on the diagnosis have not been sufficiently investigated. This study proposes an ensemble-based multi-view learning approach with an ECG augmentation technique to achieve a higher performance than traditional automatic 12-lead ECG diagnosis methods. The data analysis results show that the proposed model reports an F1 score of 0.840, which outperforms existing state-ofthe-art methods in the literature.
- Jae-Won Choi (1 paper)
- Dae-Yong Hong (1 paper)
- Chan Jung (1 paper)
- Eugene Hwang (3 papers)
- Sung-Hyuk Park (4 papers)
- Seung-Young Roh (1 paper)