Literature DB >> 30465152

Localization of Ventricular Activation Origin from the 12-Lead ECG: A Comparison of Linear Regression with Non-Linear Methods of Machine Learning.

Shijie Zhou1, Amir AbdelWahab2, John L Sapp2, James W Warren3, B Milan Horáček4.   

Abstract

We have previously developed an automated localization method based on multiple linear regression (MLR) model to estimate the activation origin on a generic left-ventricular (LV) endocardial surface in real time from the 12-lead ECG. The present study sought to investigate whether machine learning-namely, random-forest regression (RFR) and support-vector regression (SVR)-can improve the localization accuracy compared to MLR. For 38 patients the 12-lead ECG was acquired during LV endocardial pacing at 1012 sites with known coordinates exported from an electroanatomic mapping system; each pacing site was then registered to a generic LV endocardial surface subdivided into 16 segments tessellated into 238 triangles. ECGs were reduced to one variable per lead, consisting of 120-ms time integral of the QRS. To compare three regression models, the entire dataset ([Formula: see text]) was partitioned at random into a design set with 80% and a test set with the remaining 20% of the entire set, and the localization error-measured as geodesic distance on the generic LV surface-was assessed. Bootstrap method with replacement, using 1000 resampling trials, estimated each model's error distribution for the left-out sample ([Formula: see text]). In the design set ([Formula: see text]), the mean accuracy was 8.8, 12.1, and 12.9 mm, respectively for SVR, RVR and MLR. In the test set ([Formula: see text]), the mean value of the localization error in the SVR model was consistently lower than the other two models, both in comparison with the MLR (11.4 vs. 12.5 mm), and with the RFR (11.4 vs. 12.0 mm); the RFR model was also better than the MLR model for estimating localization accuracy (12.0 vs. 12.5 mm). The bootstrap method with 1,000 trials confirmed that the SVR and RFR models had significantly higher predictive accurate than the MLR in the bootstrap assessment with the left-out sample (SVR vs. MLR ([Formula: see text]), RFR vs. MLR ([Formula: see text])). The performance comparison of regression models showed that a modest improvement in localization accuracy can be achieved by SVR and RFR models, in comparison with MLR. The "population" coefficients generated by the optimized SVR model from our dataset are superior to the previously-derived "population" coefficients generated by the MLR model and can supersede them to improve the localization of ventricular activation on the generic LV endocardial surface.

Entities:  

Keywords:  12-Lead ECG; Catheter ablation; Multiple linear regression; Pace-mapping; Random forest regression; Support vector regression; Ventricular tachycardia

Mesh:

Year:  2018        PMID: 30465152     DOI: 10.1007/s10439-018-02168-y

Source DB:  PubMed          Journal:  Ann Biomed Eng        ISSN: 0090-6964            Impact factor:   3.934


  8 in total

1.  A hybrid machine learning approach to localizing the origin of ventricular tachycardia using 12-lead electrocardiograms.

Authors:  Ryan Missel; Prashnna K Gyawali; Jaideep Vitthal Murkute; Zhiyuan Li; Shijie Zhou; Amir AbdelWahab; Jason Davis; James Warren; John L Sapp; Linwei Wang
Journal:  Comput Biol Med       Date:  2020-09-23       Impact factor: 4.589

2.  Feasibility study shows concordance between image-based virtual-heart ablation targets and predicted ECG-based arrhythmia exit-sites.

Authors:  Shijie Zhou; Eric Sung; Adityo Prakosa; Konstantinos N Aronis; Jonathan Chrispin; Harikrishna Tandri; Amir AbdelWahab; B Milan Horáček; John L Sapp; Natalia A Trayanova
Journal:  Pacing Clin Electrophysiol       Date:  2021-02-12       Impact factor: 1.976

3.  A Novel Model Based on Spatial and Morphological Domains to Predict the Origin of Premature Ventricular Contraction.

Authors:  Kaiyue He; Jian Sun; Yiwen Wang; Gaoyan Zhong; Cuiwei Yang
Journal:  Front Physiol       Date:  2021-02-24       Impact factor: 4.566

4.  Assessment of an ECG-Based System for Localizing Ventricular Arrhythmias in Patients With Structural Heart Disease.

Authors:  Shijie Zhou; Amir AbdelWahab; John L Sapp; Eric Sung; Konstantinos N Aronis; James W Warren; Paul J MacInnis; Rushil Shah; B Milan Horáček; Ronald Berger; Harikrishna Tandri; Natalia A Trayanova; Jonathan Chrispin
Journal:  J Am Heart Assoc       Date:  2021-10-06       Impact factor: 5.501

5.  An interpretable stacking ensemble learning framework based on multi-dimensional data for real-time prediction of drug concentration: The example of olanzapine.

Authors:  Xiuqing Zhu; Jinqing Hu; Tao Xiao; Shanqing Huang; Yuguan Wen; Dewei Shang
Journal:  Front Pharmacol       Date:  2022-09-27       Impact factor: 5.988

6.  Automated Localization of Focal Ventricular Tachycardia From Simulated Implanted Device Electrograms: A Combined Physics-AI Approach.

Authors:  Sofia Monaci; Karli Gillette; Esther Puyol-Antón; Ronak Rajani; Gernot Plank; Andrew King; Martin Bishop
Journal:  Front Physiol       Date:  2021-07-01       Impact factor: 4.566

7.  Impact of 25-Hydroxyvitamin D on the Prognosis of Acute Ischemic Stroke: Machine Learning Approach.

Authors:  Chulho Kim; Sang-Hwa Lee; Jae-Sung Lim; Yerim Kim; Min Uk Jang; Mi Sun Oh; San Jung; Ju-Hun Lee; Kyung-Ho Yu; Byung-Chul Lee
Journal:  Front Neurol       Date:  2020-01-31       Impact factor: 4.003

8.  A machine learning approach to personalized dose adjustment of lamotrigine using noninvasive clinical parameters.

Authors:  Xiuqing Zhu; Wencan Huang; Haoyang Lu; Zhanzhang Wang; Xiaojia Ni; Jinqing Hu; Shuhua Deng; Yaqian Tan; Lu Li; Ming Zhang; Chang Qiu; Yayan Luo; Hongzhen Chen; Shanqing Huang; Tao Xiao; Dewei Shang; Yuguan Wen
Journal:  Sci Rep       Date:  2021-03-10       Impact factor: 4.379

  8 in total

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