Explainable localization of premature ventricular contraction using deep learning-based semantic segmentation of 12-lead electrocardiogram

被引:0
|
作者
Kujime, Kota [1 ]
Seno, Hiroshi [1 ]
Nakajima, Kenzaburo [2 ]
Yamazaki, Masatoshi [1 ,3 ]
Sakuma, Ichiro [1 ]
Yamagata, Kenichiro [4 ]
Kusano, Kengo [2 ]
Tomii, Naoki [1 ]
机构
[1] Univ Tokyo, Grad Sch Engn, Dept Precis Engn, Tokyo, Japan
[2] Natl Cerebral & Cardiovasc Ctr, Dept Cardiovasc Med, Osaka, Japan
[3] Nagano Hosp, Dept Cardiol, Okayama, Japan
[4] Univ Tokyo, Grad Sch Med, Dept Cardiovasc Med, Tokyo, Japan
基金
日本学术振兴会;
关键词
automatic ECG diagnosis; deep neural network; premature ventricular contraction; TRACT TACHYCARDIA ORIGIN; OPTIMAL ABLATION SITE; OUTFLOW TRACT; ECG ALGORITHM; CRITERION; SPECTRUM;
D O I
10.1002/joa3.13096
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
BackgroundPredicting the origin of premature ventricular contraction (PVC) from the preoperative electrocardiogram (ECG) is important for catheter ablation therapies. We propose an explainable method that localizes PVC origin based on the semantic segmentation result of a 12-lead ECG using a deep neural network, considering suitable diagnosis support for clinical application.MethodsThe deep learning-based semantic segmentation model was trained using 265 12-lead ECG recordings from 84 patients with frequent PVCs. The model classified each ECG sampling time into four categories: background (BG), sinus rhythm (SR), PVC originating from the left ventricular outflow tract (PVC-L), and PVC originating from the right ventricular outflow tract (PVC-R). Based on the ECG segmentation results, a rule-based algorithm classified ECG recordings into three categories: PVC-L, PVC-R, as well as Neutral, which is a group for the recordings requiring the physician's careful assessment before separating them into PVC-L and PVC-R. The proposed method was evaluated with a public dataset which was used in previous research.ResultsThe evaluation of the proposed method achieved neutral rate, accuracy, sensitivity, specificity, F1-score, and area under the curve of 0.098, 0.932, 0.963, 0.882, 0.945, and 0.852 on a private dataset, and 0.284, 0.916, 0.912, 0.930, 0.943, and 0.848 on a public dataset, respectively. These quantitative results indicated that the proposed method outperformed almost all previous studies, although a significant number of recordings resulted in requiring the physician's assessment.ConclusionsThe feasibility of explainable localization of premature ventricular contraction was demonstrated using deep learning-based semantic segmentation of 12-lead ECG. Clinical trial registration: M26-148-8.ConclusionsThe feasibility of explainable localization of premature ventricular contraction was demonstrated using deep learning-based semantic segmentation of 12-lead ECG. Clinical trial registration: M26-148-8. Deep learning-based semantic segmentation on multiple leads ECG and a rule-based localization algorithm based on the preceding segmentation results were proposed. Except for neutral cases, which are the recordings requiring the physician's careful assessment, the model outperformed the conventional PVC localization methods.image
引用
收藏
页码:948 / 957
页数:10
相关论文
共 50 条
  • [1] Localization of Premature Ventricular Contractions Using Convolutional Neural Network From 12-lead Electrocardiogram
    Yang, Ting
    Yu, Long
    He, Bin
    [J]. CIRCULATION, 2017, 136
  • [2] Deep-Learning Premature Contraction Localization in 12-lead ECG From Whole Signal Annotations
    Novotna, Petra
    Vicar, Tomas
    Ronzhina, Marina
    Hejc, Jakub
    Kolarova, Jana
    [J]. 2020 COMPUTING IN CARDIOLOGY, 2020,
  • [3] Localization of ventricular premature contractions by 12-lead ECG
    Fries B.
    Johnson V.
    Rutsatz W.
    Schmitt J.
    Bogossian H.
    [J]. Herzschrittmachertherapie + Elektrophysiologie, 2021, 32 (1) : 21 - 26
  • [4] Quantitative localization of premature ventricular contractions using myocardial activation ECGI from the standard 12-lead electrocardiogram
    van Dam, Peter M.
    Tung, Roderick
    Shivkumar, Kalyanam
    Laks, Michael
    [J]. JOURNAL OF ELECTROCARDIOLOGY, 2013, 46 (06) : 574 - 579
  • [5] Deep Learning Pipeline for Frailty Screening Using the 12-Lead Electrocardiogram
    Afilalo, Jonathan
    Zhang, Ding Yi
    Tiwari, Abhishek
    Warrick, Philip
    [J]. CIRCULATION, 2022, 146
  • [7] Localization of origins of premature ventricular contraction in the whole ventricle based on machine learning and automatic beat recognition from 12-lead ECG
    He, Kaiyue
    Nie, Zhenning
    Zhong, Gaoyan
    Yang, Cuiwei
    Sun, Jian
    [J]. PHYSIOLOGICAL MEASUREMENT, 2020, 41 (05)
  • [8] Identifying Myocardial Infarction Using Clinical 12-Lead Electrocardiogram and Deep Learning
    Xiao, Ran
    Yang, Fan
    Ding, Cheng
    Zegre-Hemsey, Jessica K.
    Hu, Xiao
    [J]. CIRCULATION, 2021, 144
  • [9] Localization of Origins of Premature Ventricular Contraction by Means of Convolutional Neural Network From 12-Lead ECG
    Yang, Ting
    Yu, Long
    Jin, Qi
    Wu, Liqun
    He, Bin
    [J]. IEEE TRANSACTIONS ON BIOMEDICAL ENGINEERING, 2018, 65 (07) : 1662 - 1671
  • [10] Association of Markers of Electrical Heterogeneity With Premature Ventricular Contractions on 12-Lead Electrocardiogram
    Maan, Abhishek
    Waks, Jonathan W.
    German, David
    Kabir, Muammar
    Thomas, Jason
    Sedhaghat, Golriz
    Sitlani, Colleen
    Biggs, Mary
    Sotoodehnia, Nona
    Siscovick, David
    Biering-Soresen, Tor
    Soliman, Elsayed Z.
    Heist, E. Kevin
    Solomon, Scott
    Post, Wendy
    Buxton, Alfred E.
    Josephson, Mark
    Tereshchenko, Larisa
    [J]. CIRCULATION, 2016, 134