Deep Learning-Based ECG Classification for Arterial Fibrillation Detection

被引:1
作者
Irshad, Muhammad Sohail [1 ,2 ]
Masood, Tehreem [1 ,2 ]
Jaffar, Arfan [1 ,2 ]
Rashid, Muhammad [3 ]
Akram, Sheeraz [1 ,2 ,4 ]
Aljohani, Abeer [5 ]
机构
[1] Super Univ, Fac Comp Sci & Informat Technol, Lahore 54000, Pakistan
[2] Intelligent Data Visual Comp Res IDVCR, Lahore 54000, Pakistan
[3] Natl Univ Technol, Dept Comp Sci, Islamabad 45000, Pakistan
[4] Imam Mohammad Ibn Saud Islamic Univ IMSIU, Coll Comp & Informat Sci, Informat Syst Dept, Riyadh 11432, Saudi Arabia
[5] Taibah Univ, Appl Coll, Dept Comp Sci, Medina 42353, Saudi Arabia
来源
CMC-COMPUTERS MATERIALS & CONTINUA | 2024年 / 79卷 / 03期
关键词
Convolution neural network; atrial fibrillation; area under curve; ECG; false positive rate; deep learning; classification; ATRIAL-FIBRILLATION; ARRHYTHMIA DETECTION; FEATURES;
D O I
10.32604/cmc.2024.050931
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
The application of deep learning techniques in the medical field, specifically for Atrial Fibrillation (AFib) detection through Electrocardiogram (ECG) signals, has witnessed significant interest. Accurate and timely diagnosis increases the patient's chances of recovery. However, issues like overfitting and inconsistent accuracy across datasets remain challenges. In a quest to address these challenges, a study presents two prominent deep learning architectures, ResNet-50 and DenseNet-121, to evaluate their effectiveness in AFib detection. The aim was to create a robust detection mechanism that consistently performs well. Metrics such as loss, accuracy, precision, sensitivity, and Area Under the Curve (AUC) were utilized for evaluation. The findings revealed that ResNet-50 surpassed DenseNet-121 in all evaluated categories. It demonstrated lower loss rate 0.0315 and 0.0305 superior accuracy of 98.77% and 98.88%, precision of 98.78% and 98.89% and sensitivity of 98.76% and 98.86% for training and validation, hinting at its advanced capability for AFib detection. These insights offer a substantial contribution to the existing literature on deep learning applications for AFib detection from ECG signals. The comparative performance data assists future researchers in selecting suitable deep-learning architectures for AFib detection. Moreover, the outcomes of this study are anticipated to stimulate the development of more advanced and efficient ECG-based AFib detection methodologies, for more accurate and early detection of AFib, thereby fostering improved patient care and outcomes.
引用
收藏
页码:4805 / 4824
页数:20
相关论文
共 32 条
[1]  
[Anonymous], Atrial Fibrillation
[2]   An artificial intelligence-enabled ECG algorithm for the identification of patients with atrial fibrillation during sinus rhythm: a retrospective analysis of outcome prediction [J].
Attia, Zachi, I ;
Noseworthy, Peter A. ;
Lopez-Jimenez, Francisco ;
Asirvatham, Samuel J. ;
Deshmukh, Abhishek J. ;
Gersh, Bernard J. ;
Carter, Rickey E. ;
Yao, Xiaoxi ;
Rabinstein, Alejandro A. ;
Erickson, Brad J. ;
Kapa, Suraj ;
Friedman, Paul A. .
LANCET, 2019, 394 (10201) :861-867
[3]   Atrial Fibrillation Detection Using Convolutional Neural Networks [J].
Chandra, B. S. ;
Sastry, C. S. ;
Jana, S. ;
Patidar, S. .
2017 COMPUTING IN CARDIOLOGY (CINC), 2017, 44
[4]   Atrial Fibrillation Detection Using a Feedforward Neural Network [J].
Chen, Yunfan ;
Zhang, Chong ;
Liu, Chengyu ;
Wang, Yiming ;
Wan, Xiangkui .
JOURNAL OF MEDICAL AND BIOLOGICAL ENGINEERING, 2022, 42 (01) :63-73
[5]   Optimization of Using Multiple Machine Learning Approaches in Atrial Fibrillation Detection Based on a Large-Scale Data Set of 12-Lead Electrocardiograms: Cross-Sectional Study [J].
Chuang, Beau Bo-Sheng ;
Yang, Albert C. .
JMIR FORMATIVE RESEARCH, 2024, 8
[6]   AF Classification from a Short Single Lead ECG Recording: the PhysioNet/Computing in Cardiology Challenge 2017 [J].
Clifford, Gari D. ;
Liu, Chengyu ;
Moody, Benjamin ;
Lehman, Li-Wei H. ;
Silva, Ikaro ;
Li, Qiao ;
Johnson, A. E. ;
Mark, Roger G. .
2017 COMPUTING IN CARDIOLOGY (CINC), 2017, 44
[7]   Deep learning-based electrocardiogram rhythm and beat features for heart abnormality classification [J].
Darmawahyuni, Annisa ;
Nurmaini, Siti ;
Rachmatullah, Muhammad Naufal ;
Tutuko, Bambang ;
Sapitri, Ade Iriani ;
Firdaus, Firdaus ;
Fansyuri, Ahmad ;
Predyansyah, Aldi .
PEERJ COMPUTER SCIENCE, 2022, 8
[8]   A Q-transform-based deep learning model for the classification of atrial fibrillation types [J].
Dhananjay, B. ;
Kumar, R. Pradeep ;
Neelapu, Bala Chakravarthy ;
Pal, Kunal ;
Sivaraman, J. .
PHYSICAL AND ENGINEERING SCIENCES IN MEDICINE, 2024, 47 (02) :621-631
[9]   Arrhythmia recognition and classification using combined linear and nonlinear features of ECG signals [J].
Elhaj, Fatin A. ;
Salim, Naomie ;
Harris, Arief R. ;
Swee, Tan Tian ;
Ahmed, Taquia .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2016, 127 :52-63
[10]   Deep learning for healthcare applications based on physiological signals: A review [J].
Faust, Oliver ;
Hagiwara, Yuki ;
Hong, Tan Jen ;
Lih, Oh Shu ;
Acharya, U. Rajendra .
COMPUTER METHODS AND PROGRAMS IN BIOMEDICINE, 2018, 161 :1-13