Validation of an automated artificial intelligence system for 12-lead ECG interpretation

被引:3
|
作者
Herman, Robert [1 ,2 ,3 ,8 ]
Demolder, Anthony [3 ]
Vavrik, Boris [3 ]
Martonak, Michal [3 ]
Boza, Vladimir [3 ,4 ]
Kresnakova, Viera [3 ,5 ]
Iring, Andrej [3 ]
Palus, Timotej [3 ]
Bahyl, Jakub [3 ]
Nelis, Olivier [2 ]
Beles, Monika [2 ]
Fabbricatore, Davide [2 ]
Perl, Leor [6 ]
Bartunek, Jozef [2 ]
Hatala, Robert [7 ,9 ]
机构
[1] Univ Naples Federico II, Dept Adv Biomed Sci, Naples, Italy
[2] Cardiovasc Ctr Aalst, Aalst, Belgium
[3] Powerful Med, Bratislava, Slovakia
[4] Comenius Univ, Fac Math Phys & Informat, Bratislava, Slovakia
[5] Tech Univ Kosice, Dept Cybernet & Artificial Intelligence, Kosice, Slovakia
[6] Rabin Med Ctr, Dept Cardiol, Petah Tiqwa, Israel
[7] Natl Inst Cardiovasc Dis, Dept Arrhythmia & Pacing, Bratislava, Slovakia
[8] Univ Naples Federico II, Dept Biomed Sci, Cso Umberto I 40, I-80138 Naples, Italy
[9] Natl Inst Cardiovasc Dis, Dept Arrhythmia & Pacing, Pod Krsnouhorkou 1, Bratislava 83384, Slovakia
关键词
Artificial intelligence; Computerized electrocardiogram; Rhythm analysis; Acute coronary syndrome; Conduction abnormality; Machine learning; ELECTROCARDIOGRAM INTERPRETATION; COMPUTER; ERRORS;
D O I
10.1016/j.jelectrocard.2023.12.009
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background: The electrocardiogram (ECG) is one of the most accessible and comprehensive diagnostic tools used to assess cardiac patients at the first point of contact. Despite advances in computerized interpretation of the electrocardiogram (CIE), its accuracy remains inferior to physicians. This study evaluated the diagnostic performance of an artificial intelligence (AI)-powered ECG system and compared its performance to current state-of -the-art CIE.Methods: An AI-powered system consisting of 6 deep neural networks (DNN) was trained on standard 12-lead ECGs to detect 20 essential diagnostic patterns (grouped into 6 categories: rhythm, acute coronary syndrome (ACS), conduction abnormalities, ectopy, chamber enlargement and axis). An independent test set of ECGs with diagnostic consensus of two expert cardiologists was used as a reference standard. AI system performance was compared to current state-of-the-art CIE. The key metrics used to compare performances were sensitivity, specificity, positive predictive value (PPV), negative predictive value (NPV), and F1 score.Results: A total of 932,711 standard 12-lead ECGs from 173,949 patients were used for AI system development. The independent test set pooled 11,932 annotated ECG labels. In all 6 diagnostic categories, the DNNs achieved high F1 scores: Rhythm 0.957, ACS 0.925, Conduction abnormalities 0.893, Ectopy 0.966, Chamber enlargement 0.972, and Axis 0.897. The diagnostic performance of DNNs surpassed state-of-the-art CIE for the 13 out of 20 essential diagnostic patterns and was non-inferior for the remaining individual diagnoses.Conclusions: Our results demonstrate the AI-powered ECG model's ability to accurately identify electrocardiographic abnormalities from the 12-lead ECG, highlighting its potential as a clinical tool for healthcare professionals.
引用
收藏
页码:147 / 154
页数:8
相关论文
共 50 条
  • [41] A novel lightweight computerized ECG interpretation approach based on clinical 12-lead data
    LIU YunQing
    QIN ChengJin
    LIU JinLei
    JIN YanRui
    LI ZhiYuan
    ZHAO LiQun
    LIU ChengLiang
    Science China Technological Sciences, 2024, 67 (02) : 449 - 463
  • [42] The 12-lead ECG: a continuous reference for the cardiologist
    Boriani, Giuseppe
    Vitolo, Marco
    JOURNAL OF CARDIOVASCULAR MEDICINE, 2019, 20 (07) : 459 - 463
  • [43] Prehospital 12-lead ECG diagnostic programs
    Urban, MJ
    Edmondson, DA
    Aufderheide, TP
    EMERGENCY MEDICINE CLINICS OF NORTH AMERICA, 2002, 20 (04) : 825 - +
  • [44] Prehospital 12-lead ECG: Efficacy or effectiveness?
    Swor, Robert
    Hegerberg, Stacey
    McHugh-McNally, Ann
    Goldstein, Mark
    McEachin, Christine C.
    PREHOSPITAL EMERGENCY CARE, 2006, 10 (03) : 374 - 377
  • [45] A New 12-Lead ECG Prognostic Score
    Soofi, Muhammad
    Jain, Nikhil A.
    Myers, Jonathan
    Froelicher, V. F.
    ANNALS OF NONINVASIVE ELECTROCARDIOLOGY, 2015, 20 (06) : 554 - 560
  • [46] A comparison of manual electrocardiographic interval and waveform analysis in lead 1 of 12-lead ECG and Apple Watch ECG: A validation study
    Saghir, Nabeel
    Aggarwal, Arjun
    Soneji, Nisha
    Valencia, Victoria
    Rodgers, George
    Kurian, Thomas
    CARDIOVASCULAR DIGITAL HEALTH JOURNAL, 2020, 1 (01): : 30 - 36
  • [47] Development and Validation of an Artificial Intelligence 12-Lead Electrocardiogram- Based Mutation Detector for Congenital Long QT Syndrome
    Bos, Johan M.
    Liu, Kan
    Attia, Zachi
    Noseworthy, Peter A.
    Friedman, Paul
    Ackerman, Michael J.
    CIRCULATION, 2023, 148
  • [48] Sensitivity to noise and artifacts of the Mason-Likar 12-lead ECG and the EASI-derived 12-lead ECG for monitoring applications
    Thulin, A
    Pettersson, J
    Pahlm, O
    CRITICAL CARE MEDICINE, 2002, 30 (12) : A76 - A76
  • [49] Detection of Unicolor ECG Electrode Reversals in Standard 12-Lead ECG
    Jekova, Irena
    Leber, Remo
    Krasteva, Vessela
    Schmid, Ramun
    2018 COMPUTING IN CARDIOLOGY CONFERENCE (CINC), 2018, 45
  • [50] Comparison between a 6-lead smartphone ECG and 12-lead ECG in athletes
    Orchard, Jessica J.
    Orchard, John W.
    Raju, Hariharan
    La Gerche, Andre
    Puranik, Rajesh
    Semsarian, Chris
    JOURNAL OF ELECTROCARDIOLOGY, 2021, 66 : 95 - 97