Back to Search Start Over

Automated inter-patient arrhythmia classification with dual attention neural network.

Authors :
Lyu, He
Li, Xiangkui
Zhang, Jian
Zhou, Chenchen
Tang, Xuezhi
Xu, Fanxin
Yang, Ye
Huang, Qinzhen
Xiang, Wei
Li, Dong
Source :
Computer Methods & Programs in Biomedicine. Jun2023, Vol. 236, pN.PAG-N.PAG. 1p.
Publication Year :
2023

Abstract

• We propose a novel single-path hybrid model combined with dual attention mechanism for automatic arrhythmia classification under severe class imbalance. • The novel combination of local attention and global attention at various stages of the hybrid model significantly improves model performance. • Without any data-level augmentation methods, our approach achieves excellent accuracy and improves performance for the few sample classes. • The proposed model alleviates the negative impact of class imbalance in the ECG database and provides a new approach for applying the attention mechanism in arrhythmia classification. Arrhythmia classification based on electrocardiograms (ECG) can enhance clinical diagnostic efficiency. However, due to the significant differences in the number of different categories of heartbeats, the performance of classes with fewer samples in arrhythmia classification have not met expectations under the inter-patient paradigm. This paper aims to mitigate the adverse effects of category imbalance and improve arrhythmia classification performance. We constructed a novel dual attention hybrid network (DA-Net) for arrhythmia classification under sample imbalance, based on modified convolutional networks with channel attention (MCC-Net) and sequence-to-sequence network with global attention (Seq2Seq). The refined local features of the input heartbeat are first extracted by MCC-Net and then sent to Seq2Seq for further feature fusion. By applying local and global attention in the feature extraction and fusion parts, respectively, the method fully fuses low-level feature details and high-level context information and enhances the ability to extract discriminative features. Based on the MIT-BIH arrhythmia database, under the inter-patient paradigm without any data augmentation methods, the proposed method achieved 99.98% accuracy (ACC) for five categories. The various performance indicators are as follows: Class N: sensitivity (SEN) = 99.96%, specificity (SPEC) = 99.93%, positive predictive value (PPV) = 99.99%; Class S: SEN = 99.67%, SPEC = 99.98%, PPV = 99.56%; Class V: SEN = 100%, SPEC = 99.99%, PPV = 99.91%; Class F: SEN = 100%, PPV = 99.98%, SPEC = 97.17%. In further experiments simulating extreme cases, the model still achieved ACC of 99.54% and 98.91% in the three-category and five-category categories when the training sample size was much smaller than the test sample. Without any data augmentation methods, the proposed model not only alleviates the negative impact of class imbalance and achieves excellent performance in all categories but also provides a new approach for dealing with class imbalance in arrhythmia classification. Additionally, our method demonstrates potential in conditions with fewer samples. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
01692607
Volume :
236
Database :
Academic Search Index
Journal :
Computer Methods & Programs in Biomedicine
Publication Type :
Academic Journal
Accession number :
163766638
Full Text :
https://doi.org/10.1016/j.cmpb.2023.107560