Cost-Sensitive Learning for Anomaly Detection in Imbalanced ECG Data Using Convolutional Neural Networks

被引:9
|
作者
Zubair, Muhammad [1 ]
Yoon, Changwoo [1 ]
机构
[1] Elect & Telecommun Res Inst, Daejeon 34129, South Korea
关键词
arrhythmia detection; ECG classification; cost-sensitive learning; imbalanced data; convolutional neural networks; HEARTBEAT CLASSIFICATION; MORPHOLOGY; FEATURES; SIGNALS; SYSTEM; MODEL;
D O I
10.3390/s22114075
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Arrhythmia detection algorithms based on deep learning are attracting considerable interest due to their vital role in the diagnosis of cardiac abnormalities. Despite this interest, deep feature representation for ECG is still challenging and intriguing due to the inter-patient variability of the ECG's morphological characteristics. The aim of this study was to learn a balanced deep feature representation that incorporates both the short-term and long-term morphological characteristics of ECG beats. For efficient feature extraction, we designed a temporal transition module that uses convolutional layers with different kernel sizes to capture a wide range of morphological patterns. Imbalanced data are a key issue in developing an efficient and generalized model for arrhythmia detection as they cause over-fitting to minority class samples (abnormal beats) of primary interest. To mitigate the imbalanced data issue, we proposed a novel, cost-sensitive loss function that ensures a balanced deep representation of class samples by assigning effective weights to each class. The cost-sensitive loss function dynamically alters class weights for every batch based on class distribution and model performance. The proposed method acquired an overall accuracy of 99.81% for intra-patient classification and 96.36% for the inter-patient classification of heartbeats. The experimental results reveal that the proposed approach learned a balanced representation of ECG beats by mitigating the issue of imbalanced data and achieved an improved classification performance as compared to other studies.
引用
收藏
页数:15
相关论文
共 50 条
  • [1] Cost-sensitive convolutional neural networks for imbalanced time series classification
    Geng, Yue
    Luo, Xinyu
    [J]. INTELLIGENT DATA ANALYSIS, 2019, 23 (02) : 357 - 370
  • [2] Cost-sensitive Hybrid Neural Networks for Heterogeneous and Imbalanced Data
    Jiang, Xinxin
    Pan, Shirui
    Long, Guodong
    Chang, Jiang
    Jiang, Jing
    Zhang, Chengqi
    [J]. 2018 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2018,
  • [3] Cost-sensitive learning for imbalanced data streams
    Loezer, Lucas
    Enembreck, Fabricio
    Barddal, Jean Paul
    Britto Jr, Alceu de Souza
    [J]. PROCEEDINGS OF THE 35TH ANNUAL ACM SYMPOSIUM ON APPLIED COMPUTING (SAC'20), 2020, : 498 - 504
  • [4] Cost-Sensitive Learning Methods for Imbalanced Data
    Nguyen Thai-Nghe
    Gantner, Zeno
    Schmidt-Thieme, Lars
    [J]. 2010 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS IJCNN 2010, 2010,
  • [5] Cost-sensitive learning with neural networks
    Kukar, M
    Kononenko, I
    [J]. ECAI 1998: 13TH EUROPEAN CONFERENCE ON ARTIFICIAL INTELLIGENCE, PROCEEDINGS, 1998, : 445 - 449
  • [6] Cost-sensitive learning for imbalanced medical data: a review
    Araf, Imane
    Idri, Ali
    Chairi, Ikram
    [J]. ARTIFICIAL INTELLIGENCE REVIEW, 2024, 57 (04)
  • [7] On the Role of Cost-Sensitive Learning in Imbalanced Data Oversampling
    Krawczyk, Bartosz
    Wozniak, Michal
    [J]. COMPUTATIONAL SCIENCE - ICCS 2019, PT III, 2019, 11538 : 180 - 191
  • [8] Cost-sensitive learning for imbalanced medical data: a review
    Imane Araf
    Ali Idri
    Ikram Chairi
    [J]. Artificial Intelligence Review, 57
  • [9] Adaptive learning cost-sensitive convolutional neural network
    Hou, Yun
    Fan, Hong
    Li, Li
    Li, Bailin
    [J]. IET COMPUTER VISION, 2021, 15 (05) : 346 - 355
  • [10] Automatic diagnosis of imbalanced ophthalmic images using a cost-sensitive deep convolutional neural network
    Jiang, Jiewei
    Liu, Xiyang
    Zhang, Kai
    Long, Erping
    Wang, Liming
    Li, Wangting
    Liu, Lin
    Wang, Shuai
    Zhu, Mingmin
    Cui, Jiangtao
    Liu, Zhenzhen
    Lin, Zhuoling
    Li, Xiaoyan
    Chen, Jingjing
    Cao, Qianzhong
    Li, Jing
    Wu, Xiaohang
    Wang, Dongni
    Wang, Jinghui
    Lin, Haotian
    [J]. BIOMEDICAL ENGINEERING ONLINE, 2017, 16