Short-term atrial fibrillation detection using electrocardiograms: A comparison of machine learning approaches

被引:21
|
作者
Jahan, Masud Shah [1 ]
Mansourvar, Marjan [1 ,2 ]
Puthusserypady, Sadasivan [3 ]
Wiil, Uffe Kock [1 ]
Peimankar, Abdolrahman [1 ]
机构
[1] Univ Southern Denmark, Maersk Mc Kinney Moller Inst, Ctr Hlth Informat & Technol, DK-5230 Odense, Denmark
[2] Univ Southern Denmark, Dept Math & Comp Sci, DK-5230 Odense, Denmark
[3] Tech Univ Denmark, Dept Hlth Technol, DK-2800 Lyngby, Denmark
关键词
Atrial fibrillation; Cardiac arrhythmias; Classification; Electrocardiogram (ECG); Machine learning; COST;
D O I
10.1016/j.ijmedinf.2022.104790
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Background: Atrial fibrillation (AF) is one of the most prevalent cardiac arrhythmias, which challenges the healthcare systems globally.Timely detection of AF can potentially reduce the mortality and morbidity rates as well as alleviate the economic burden caused by this.Digital solutions are shown to enhance the diagnosis of cardiac abnormalities. Objectives: By the latest advancements in the field of medical informatics and tele-health monitoring, huge amount of electro-physiological signals, such as electrocardiograms (ECG), can be easily collected.One of the most common ways for physicians/cardiologists to analyse these signals is through visual inspection.However, it is not always easy and in most cases cumbersome to analyse these big amounts of ECG data.Therefore, it is of great interest to develop models that are capable of analyzing these data and help physicians making better decisions.This paper proposes and compares well-known machine learning (ML) algorithms to diagnose short episodes of AF. This also paves the way for real-time detection of AF in clinical settings. Methods: Different ML algorithms such as Support Vector Machine (SVM), Decision Tree (DT), Random Forest (RF), Stacking Classifier (SC), Extreme Gradient Boosting (XGBoost), and Adaptive Boosting (AdaBoost) were applied to detect AF. These models were trained using extracted statistical features from ECG signals. Results: The proposed ML models were trained on a dataset with 23 ECG records of length approximately 10 h each using leave one group out cross validation (LOGO-CV) technique and achieved the best sensitivity (Se), specificity (Sp), positive predictive value (PPV), false positive rate (FPR), and F1-score of 85.67%, 81.25%, 90.85%, 18.75% and 88.18%, respectively, to classify AF from normal sinus rhythms (NSR) in short ECG segments of 20 heartbeats. Additionally, the models were examined on three unseen datasets, namely the Long Term AF dataset, MIT-BIH Arrhythmia dataset, and MIT-BIH Normal Sinus Rhythm dataset, to assess their robustness and generalization. Conclusion: The obtained results show high performance and flexibility of some of the applied ML models compared to other well-known algorithms. In general, the empirical results confirm that ensemble methods, such as AdaBoost, generalized well and perform better than other approaches.
引用
收藏
页数:11
相关论文
共 50 条
  • [31] SHORT-TERM LOAD FORECASTING BY MACHINE LEARNING
    Hsu, Chung-Chian
    Chen, Xiang-Ting
    Chen, Yu-Sheng
    Chang, Arthur
    2020 INTERNATIONAL SYMPOSIUM ON COMMUNITY-CENTRIC SYSTEMS (CCS), 2020,
  • [32] Comparison of Supervised Learning Algorithms for Quality Assessment of Wearable Electrocardiograms With Paroxysmal Atrial Fibrillation
    Huerta, Alvaro
    Martinez, Arturo
    Carneiro, Davide
    Bertomeu-Gonzalez, Vicente
    Rieta, Jose J.
    Alcaraz, Raul
    IEEE ACCESS, 2023, 11 : 106126 - 106140
  • [33] Combining semiparametric and machine learning approaches for short-term prediction of satellite clock bias
    Lihong Jin
    Wanzhuo Zhao
    Xiong Pan
    Qingsong Ai
    Mao Cai
    Xiaoli Ruan
    Scientific Reports, 15 (1)
  • [34] A comparison of P-wave duration and dispersion in patients with short-term and long-term atrial fibrillation
    Dogan, A
    Acar, G
    Gedikli, O
    Ozaydin, M
    Nazli, C
    Altinbas, A
    Ergene, O
    JOURNAL OF ELECTROCARDIOLOGY, 2003, 36 (03) : 251 - 255
  • [35] Short-term water demand forecasting using machine learning techniques
    Antunes, A.
    Andrade-Campos, A.
    Sardinha-Lourenco, A.
    Oliveira, M. S.
    JOURNAL OF HYDROINFORMATICS, 2018, 20 (06) : 1343 - 1366
  • [36] Predicting Short-Term Deformation in the Central Valley Using Machine Learning
    Yazbeck, Joe
    Rundle, John B.
    REMOTE SENSING, 2023, 15 (02)
  • [37] Short-term load forecasting using machine learning and periodicity decomposition
    El Khantach, Abdelkarim
    Hamlich, Mohamed
    Belbounaguia, Nour Eddine
    AIMS ENERGY, 2019, 7 (03) : 382 - 394
  • [38] Short-term Wind Speed Forecasting using Machine Learning Algorithms
    Fonseca, Sebastiao B.
    de Oliveira, Roberto Celio L.
    Affonso, Carolina M.
    2021 IEEE MADRID POWERTECH, 2021,
  • [39] Short-Term Energy Prediction for District-Level Load Management Using Machine Learning Based Approaches
    Ahmad, Tanveer
    Chen, Huanxin
    Huang, Yao
    INNOVATIVE SOLUTIONS FOR ENERGY TRANSITIONS, 2019, 158 : 3331 - 3338
  • [40] Machine learning-based short-term solar power forecasting: a comparison between regression and classification approaches using extensive Australian dataset
    Aouidad, H.I.
    Bouhelal, A.
    Sustainable Energy Research, 11 (01)