Deep learning for the classification of atrial fibrillation using wavelet transform-based visual images

被引:0
|
作者
Sun, Ling-Chun [1 ]
Lee, Chia-Chiang [2 ]
Ke, Hung-Yen [3 ]
Wei, Chih-Yuan [4 ]
Lin, Ke-Feng [5 ,6 ]
Lin, Shih-Sung [7 ]
Hsiu, Hsin [8 ]
Chen, Ping-Nan [9 ]
机构
[1] Natl Def Med Ctr, Sch Med, Taipei 11490, Taiwan
[2] Natl Taiwan Univ Sci & Technol, Grad Inst Appl Sci & Technol, Taipei 10607, Taiwan
[3] Natl Def Med Ctr, Triserv Gen Hosp, Dept Surg, Div Cardiovasc Surg, Taipei 11490, Taiwan
[4] Natl Def Med Ctr, Grad Inst Life Sci, Taipei 11490, Taiwan
[5] Natl Def Med Ctr, Sch Publ Hlth, Taipei 11490, Taiwan
[6] Natl Def Med Ctr, Triserv Gen Hosp, Med Informat Off, Taipei 11490, Taiwan
[7] Chinese Culture Univ, Dept Comp Sci & Informat Engn, Taipei 11114, Taiwan
[8] Natl Taiwan Univ Sci & Technol, Grad Inst Biomed Engn, Taipei 10607, Taiwan
[9] Natl Def Med Ctr, Dept Biomed Engn, 161,Sec 6,Minquan E Rd, Taipei 11490, Taiwan
关键词
Atrial fibrillation; MsCWT; Convolutional Neural Network; ResNet101;
D O I
10.1186/s12911-025-02872-5
中图分类号
R-058 [];
学科分类号
摘要
BackgroundAs the incidence and prevalence of Atrial Fibrillation (AF) proliferate worldwide, the condition has become the epicenter of a plethora of ECG diagnostic research. In recent diagnostic methodologies, Morse Continuous Wavelet Transform (MsCWT) is a feature extraction technique utilized to draw out distinctive attributes of ECG signals. In our study, we explore the employment of MsCWT in the classification of AF with ECG signals in a continuum.ResultsWe present a MsCWT image-based deep learning machine for AF differentiation. For the training, validation, and test sets, we achieved average accuracies of 97.94%, 97.84%, and 91.32%; and overall F1 scores of 97.13%, 96.86%, and 89.41% respectively. Moreover, AUC ROC curves of over 0.99 were obtained for all classes in the training and validation sets; and were over 0.9679 for the test set.ConclusionsTraining deep learning machines for the classification of AF with MsCWT-based images demonstrated to yield favorable outcomes and achieved superior performance amongst studies utilizing the same dataset. Though minimal, the conversion of signals into wavelet form with MsCWT may drastically improve outcomes not only in future ECG signal studies; but all signal-based diagnostics.
引用
收藏
页数:11
相关论文
共 50 条
  • [1] Atrial Fibrillation Detection Using Stationary Wavelet Transform and Deep Learning
    Xia, Yong
    Wulan, Naren
    Wang, Kuanquan
    Zhang, Henggui
    2017 COMPUTING IN CARDIOLOGY (CINC), 2017, 44
  • [2] Wavelet Transform-Based Land Cover Classification of Satellite Images
    Menaka, D.
    Suresh, L. Padma
    Premkumar, S. Selvin
    ARTIFICIAL INTELLIGENCE AND EVOLUTIONARY ALGORITHMS IN ENGINEERING SYSTEMS, VOL 2, 2015, 325 : 845 - 854
  • [3] A Deep Learning Method to Detect Atrial Fibrillation Based on Continuous Wavelet Transform
    Wu, Ziqian
    Feng, Xujian
    Yang, Cuiwei
    2019 41ST ANNUAL INTERNATIONAL CONFERENCE OF THE IEEE ENGINEERING IN MEDICINE AND BIOLOGY SOCIETY (EMBC), 2019, : 1908 - 1912
  • [4] Wavelet transform-based texture classification using feature weighting
    Wu, Gaohong
    Zhang, Yujin
    Lin, Xinggang
    Moshi Shibie yu Rengong Zhineng/Pattern Recognition and Artificial Intelligence, 1999, 12 (03): : 262 - 267
  • [5] Classification of breast cancer with deep learning from noisy images using wavelet transform
    Cengiz, Enes
    Kelek, Muhammed Mustafa
    Oguz, Yuksel
    Yilmaz, Cemal
    BIOMEDICAL ENGINEERING-BIOMEDIZINISCHE TECHNIK, 2022, 67 (02): : 143 - 150
  • [6] Classification of breast cancer with deep learning from noisy images using wavelet transform
    Cengiz, Enes
    Kelek, Muhammed Mustafa
    Oǧuz, Yüksel
    Yllmaz, Cemal
    Biomedizinische Technik, 2022, 67 (02): : 143 - 150
  • [7] A Q-transform-based deep learning model for the classification of atrial fibrillation types
    Dhananjay, B.
    Kumar, R. Pradeep
    Neelapu, Bala Chakravarthy
    Pal, Kunal
    Sivaraman, J.
    PHYSICAL AND ENGINEERING SCIENCES IN MEDICINE, 2024, 47 (02) : 621 - 631
  • [8] Classification of melanoma using wavelet transform-based optimal feature set
    Walvick, R
    Patel, K
    Patwardhan, SV
    Dhawan, AP
    MEDICAL IMAGING 2004: IMAGE PROCESSING, PTS 1-3, 2004, 5370 : 944 - 951
  • [9] Wavelet Transform-Based Classification of Electromyogram Signals Using an Anova Technique
    Karan, V.
    NEUROPHYSIOLOGY, 2015, 47 (04) : 302 - 309
  • [10] Wavelet Transform-Based Classification of Electromyogram Signals Using an Anova Technique
    V. Karan
    Neurophysiology, 2015, 47 : 302 - 309