Deep learning-based electrocardiogram rhythm and beat features for heart abnormality classification

被引:17
|
作者
Darmawahyuni, Annisa [1 ]
Nurmaini, Siti [1 ]
Rachmatullah, Muhammad Naufal [1 ]
Tutuko, Bambang [1 ]
Sapitri, Ade Iriani [1 ]
Firdaus, Firdaus [1 ]
Fansyuri, Ahmad [1 ]
Predyansyah, Aldi [1 ]
机构
[1] Univ Sriwijaya, Fac Comp Sci, Intelligent Syst Res Grp, Palembang, Indonesia
关键词
Deep learning; Electrocardiogram; Heart rhythm; Heart beat; Convolutional neural network; Classification; Heart abnormality; ATRIAL-FIBRILLATION; ARTIFICIAL-INTELLIGENCE; NEURAL-NETWORK; ECG;
D O I
10.7717/peerj-cs.825
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Background. Electrocardiogram (ECG) signal classification plays a critical role in the automatic diagnosis of heart abnormalities. While most ECG signal patterns cannot be recognized by a human interpreter, they can be detected with precision using artificial intelligence approaches, making theECGa powerful non-invasive biomarker. However, performing rapid and accurate ECG signal classification is difficult due to the low amplitude, complexity, and non-linearity. The widely-available deep learning (DL) method we propose has presented an opportunity to substantially improve the accuracy of automatedECGclassification analysis using rhythm or beat features. Unfortunately, a comprehensive and general evaluation of the specific DL architecture for ECG analysis across a wide variety of rhythm and beat features has not been previously reported. Some previous studies have been concerned with detecting ECG class abnormalities only through rhythm or beat features separately. Methods. This study proposes a single architecture based on the DL method with one-dimensional convolutional neural network (1D-CNN) architecture, to automatically classify 24 patterns of ECG signals through both rhythm and beat. To validate the proposed model, five databases which consisted of nine-class of ECG-base rhythm and 15-class of ECG-based beat were used in this study. The proposed DL network was applied and studied with varying datasets with different frequency samplings in intra and inter-patient scheme. Results. Using a 10-fold cross-validation scheme, the performance results had an accuracy of 99.98%, a sensitivity of 99.90%, a specificity of 99.89%, a precision of 99.90%, and an F1-score of 99.99% for ECG rhythm classification. Additionally, for ECG beat classification, the model obtained an accuracy of 99.87%, a sensitivity of 96.97%, a specificity of 99.89%, a precision of 92.23%, and an F1-score of 94.39%. In conclusion, this study provides clinicians with an advanced methodology for detecting and discriminating heart abnormalities between different ECG rhythm and beat assessments by using one outstanding proposed DL architecture.
引用
收藏
页数:26
相关论文
共 50 条
  • [1] Deep learning-based electrocardiogram rhythm and beat features for heart abnormality classification
    Darmawahyuni, Annisa
    Nurmaini, Siti
    Rachmatullah, Muhammad Naufal
    Tutuko, Bambang
    Sapitri, Ade Iriani
    Firdaus, Firdaus
    Fansyuri, Ahmad
    Predyansyah, Aldi
    [J]. PeerJ Computer Science, 2022, 8
  • [2] Explainable Deep Learning-Based Approach for Multilabel Classification of Electrocardiogram
    Ganeshkumar, M.
    Ravi, Vinayakumar
    Sowmya, V.
    Gopalakrishnan, E. A.
    Soman, K. P.
    [J]. IEEE TRANSACTIONS ON ENGINEERING MANAGEMENT, 2023, 70 (08) : 2787 - 2799
  • [3] Transfer learning-based electrocardiogram classification using wavelet scattered features
    Sabeenian, R.
    Janani, K. Sree
    [J]. BIOMEDICAL AND BIOTECHNOLOGY RESEARCH JOURNAL, 2023, 7 (01): : 52 - 59
  • [4] A Novel Deep Learning-based Model for the Efficient Classification of Electrocardiogram Signals
    Mehata, Saurabh
    Bhongade, Rakesh Ashok
    Rangaswamy, Roopashree
    [J]. CARDIOMETRY, 2022, (24): : 1033 - 1039
  • [5] Hygeia: A Multilabel Deep Learning-Based Classification Method for Imbalanced Electrocardiogram Data
    Xu, Xiaolong
    Xu, Haoyan
    Wang, Liying
    Zhang, Yuanyuan
    Xaio, Fu
    [J]. IEEE-ACM TRANSACTIONS ON COMPUTATIONAL BIOLOGY AND BIOINFORMATICS, 2023, 20 (04) : 2480 - 2493
  • [6] An Optimal Set of Features for Multi-Class Heart Beat Abnormality Classification
    Deriche, Mohamed
    Aljabri, Saeed
    Al-Akhras, Mohammed
    Siddiqui, Mohammed
    Deriche, Naziha
    [J]. 2019 16TH INTERNATIONAL MULTI-CONFERENCE ON SYSTEMS, SIGNALS & DEVICES (SSD), 2019, : 418 - 422
  • [7] Heart Rhythm Classification From an Optimal Lead Subset of the 12-lead Electrocardiogram by Deep Learning
    Lai, Changxin
    Zhou, Shijie
    Trayanova, Natalia
    [J]. CIRCULATION, 2020, 142
  • [8] Local Deep Field for Electrocardiogram Beat Classification
    Li, Wei
    Li, Jianqing
    [J]. IEEE SENSORS JOURNAL, 2018, 18 (04) : 1656 - 1664
  • [9] Deep learning-based abnormality classification in 123I-ioflupane SPECT imaging
    Yamao, T.
    Yamakuni, R.
    Takahashi, N.
    Miwa, K.
    Kaneko, Y.
    Miyaji, N.
    Ito, H.
    [J]. EUROPEAN JOURNAL OF NUCLEAR MEDICINE AND MOLECULAR IMAGING, 2023, 50 (SUPPL 1) : S86 - S86
  • [10] Deep Learning-based Models For Complete Atrioventricular Block Heart Rhythm Analysis
    Choi, Dahim
    Kim, Nam Kyun
    Son, Young H.
    Gao, Yuming
    Sheng, Christina
    Jang, Jeongin
    Lee, Kihong
    Cho, Hee C.
    Park, Sung Jin
    [J]. CIRCULATION RESEARCH, 2021, 129