Machine Learning Prediction for the Recurrence After Electrical Cardioversion of Patients With Persistent Atrial Fibrillation

被引:3
作者
Kwon, Soonil [1 ]
Lee, Eunjung [2 ]
Ju, Hojin [1 ]
Ahn, Hyo-Jeong [1 ]
Lee, So-Ryoung [1 ]
Choi, Eue-Keun [1 ,3 ]
Suh, Jangwon [4 ]
Oh, Seil [1 ,3 ]
Rhee, Wonjong [4 ]
机构
[1] Seoul Natl Univ Hosp, Dept Internal Med, Seoul, South Korea
[2] Mayo Clin, Dept Cardiovasc Med, Rochester, MN USA
[3] Seoul Natl Univ, Dept Internal Med, Coll Med, 101 Daehak Ro, Seoul 03080, South Korea
[4] Seoul Natl Univ, Dept Intelligence & Informat, Seoul, South Korea
关键词
Atrial fibrillation; Electric countershock; Machine learning; Recurrence; SINUS RHYTHM; MAINTENANCE; RISK; EFFICACY;
D O I
10.4070/kcj.2023.0012
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background and Objectives: There is limited evidence regarding machine-learning prediction for the recurrence of atrial fibrillation (AF) after electrical cardioversion (ECV). This study aimed to predict the recurrence of AF after ECV using machine learning of clinical features and electrocardiograms (ECGs) in persistent AF patients. Methods: We analyzed patients who underwent successful ECV for persistent AF. Machine learning was designed to predict patients with 1-month recurrence. Individual 12-lead ECGs were collected before and after ECV. Various clinical features were collected and trained the extreme gradient boost (XGBoost)-based model. Ten-fold cross-validation was used to evaluate the performance of the model. The performance was compared to the C-statistics of the selected clinical features. Results: Among 718 patients (mean age 63.5 +/- 9.3 years, men 78.8%), AF recurred in 435 (60.6%) patients after 1 month. With the XGBoost-based model, the areas under the receiver operating characteristic curves (AUROCs) were 0.57, 0.60, and 0.63 if the model was trained by clinical features, ECGs, and both (the final model), respectively. For the final model, the sensitivity, specificity, and F1-score were 84.7%, 28.2%, and 0.73, respectively. Although the AF duration showed the best predictive performance (AUROC, 0.58) among the clinical features, it was significantly lower than that of the final machine-learning model (p < 0.001). Additional training of extended monitoring data of 15-minute single-lead ECG and photoplethysmography in available patients (n=261) did not significantly improve the model's performance. Conclusions: Machine learning showed modest performance in predicting AF recurrence after ECV in persistent AF patients, warranting further validation studies.
引用
收藏
页码:677 / 689
页数:13
相关论文
共 22 条
  • [1] Clinical applications of machine learning in cardiovascular disease and its relevance to cardiac imaging
    Al'Aref, Subhi J.
    Anchouche, Khalil
    Singh, Gurpreet
    Slomka, Piotr J.
    Kolli, Kranthi K.
    Kumar, Amit
    Pandey, Mohit
    Maliakal, Gabriel
    van Rosendael, Alexander R.
    Beecy, Ashley N.
    Berman, Daniel S.
    Leipsic, Jonathan
    Nieman, Koen
    Andreini, Daniele
    Pontone, Gianluca
    Schoepf, U. Joseph
    Shaw, Leslee J.
    Chang, Hyuk-Jae
    Narula, Jagat
    Bax, Jeroen J.
    Guan, Yuanfang
    Min, James K.
    [J]. EUROPEAN HEART JOURNAL, 2019, 40 (24) : 1975 - +
  • [2] NT-proBNP predicts maintenance of sinus rhythm after electrical cardioversion
    Andersson, Jonas
    Rosenqvist, Marten
    Tornvall, Per
    Boman, Kurt
    [J]. THROMBOSIS RESEARCH, 2015, 135 (02) : 289 - 291
  • [3] Low stroke risk after elective cardioversion of atrial fibrillation: An analysis of the Flec-SL trial
    Apostolakis, Stavros
    Haeusler, Karl Georg
    Oeff, Michael
    Treszl, Andras
    Andresen, Dietrich
    Borggrefe, Martin
    Lip, Gregory Y. H.
    Meinertz, Thomas
    Parade, Ulrich
    Samol, Alexander
    Steinbeck, Gerhard
    Wegscheider, Karl
    Breithardt, Guenter
    Kirchhof, Paulus
    [J]. INTERNATIONAL JOURNAL OF CARDIOLOGY, 2013, 168 (04) : 3977 - 3981
  • [4] Cardioversion of atrial fibrillation and atrial flutter revisited: current evidence and practical guidance for a common procedure
    Brandes, Axel
    Crijns, Harry J. G. M.
    Rienstra, Michiel
    Kirchhof, Paulus
    Grove, Erik L.
    Pedersen, Kenneth Bruun
    Van Gelder, Isabelle C.
    [J]. EUROPACE, 2020, 22 (08): : 1149 - 1161
  • [5] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [6] Prediction of early recurrence of atrial fibrillation after external cardioversion by means of P wave signal-averaged electrocardiogram
    Ehrlich, JR
    Schadow, K
    Steul, K
    Zhang, GQ
    Israel, CW
    Hohnloser, SH
    [J]. ZEITSCHRIFT FUR KARDIOLOGIE, 2003, 92 (07): : 540 - 546
  • [7] Artificial Intelligence and Machine Learning in Arrhythmias and Cardiac Electrophysiology
    Feeny, Albert K.
    Chung, Mina K.
    Madabhushi, Anant
    Attia, Zachi I.
    Cikes, Maja
    Firouznia, Marjan
    Friedman, Paul A.
    Kalscheur, Matthew M.
    Kapa, Suraj
    Narayan, Sanjiv M.
    Noseworthy, Peter A.
    Passman, Rod S.
    Perez, Marco V.
    Peters, Nicholas S.
    Piccini, Jonathan P.
    Tarakji, Khaldoun G.
    Thomas, Suma A.
    Trayanova, Natalia A.
    Turakhia, Mintu P.
    Wang, Paul J.
    [J]. CIRCULATION-ARRHYTHMIA AND ELECTROPHYSIOLOGY, 2020, 13 (08) : E007952
  • [8] Thromboembolic risk in 16 274 atrial fibrillation patients undergoing direct current cardioversion with and without oral anticoagulant therapy
    Hansen, Morten Lock
    Jepsen, Rikke Malene H. G.
    Olesen, Jonas Bjerring
    Ruwald, Martin Huth
    Karasoy, Deniz
    Gislason, Gunnar Hilmar
    Hansen, Jim
    Kober, Lars
    Husted, Steen
    Torp-Pedersens, Christian
    [J]. EUROPACE, 2015, 17 (01): : 18 - 23
  • [9] 2020 ESC Guidelines for the diagnosis and management of atrial fibrillation developed in collaboration with the European Association for Cardio-Thoracic Surgery (EACTS)
    Hindricks, Gerhard
    Potpara, Tatjana
    Dagres, Nikolaos
    Arbelo, Elena
    Bax, Jeroen J.
    Blomstroem-Lundqvist, Carina
    Boriani, Giuseppe
    Castella, Manuel
    Dan, Gheorghe-Andrei
    Dilaveris, Polychronis E.
    Fauchier, Laurent
    Filippatos, Gerasimos
    Kalman, Jonathan M.
    La Meir, Mark
    Lane, Deirdre A.
    Lebeau, Jean-Pierre
    Lettino, Maddalena
    Lip, Gregory Y. H.
    Pinto, Fausto J.
    Thomas, G. Neil
    Valgimigli, Marco
    Van Gelder, Isabelle C.
    Van Putte, Bart P.
    Watkins, Caroline L.
    [J]. EUROPEAN HEART JOURNAL, 2021, 42 (05) : 373 - 498
  • [10] Trigger-Based Mechanism of the Persistence of Atrial Fibrillation and Its Impact on the Efficacy of Catheter Ablation
    Inoue, Koichi
    Kurotobi, Toshiya
    Kimura, Ryusuke
    Toyoshima, Yuko
    Itoh, Norihisa
    Masuda, Masaharu
    Higuchi, Yoshiharu
    Date, Motoo
    Koyama, Yasushi
    Okamura, Atsunori
    Iwakura, Katsuomi
    Fujii, Kenshi
    [J]. CIRCULATION-ARRHYTHMIA AND ELECTROPHYSIOLOGY, 2012, 5 (02) : 295 - 301