Automated prediction of isthmus areas in scar‐related atrial tachycardias using artificial intelligence

Author:

Saluja Deepak1ORCID,Huang Ziyi2,Majumder Jonah3,Zeldin Lawrence4,Yarmohammadi Hirad1ORCID,Biviano Angelo1,Wan Elaine Y.1ORCID,Ciaccio Edward J.1,Hendon Christine P.3,Garan Hasan1

Affiliation:

1. Division of Cardiology Columbia University Vagelos College of Physicians and Surgeons New York New York USA

2. Department of Electrical Engineering, Fu Foundation School of Engineering and Applied Science (SEAS) Columbia University New York New York USA

3. Department of Biomedical Engineering, Fu Foundation School of Engineering and Applied Science (SEAS) Columbia University New York New York USA

4. Department of Medicine Columbia University Vagelos College of Physicians and Surgeons New York New York USA

Abstract

AbstractIntroductionAblation of scar‐related reentrant atrial tachycardia (SRRAT) involves identification and ablation of a critical isthmus. A graph convolutional network (GCN) is a machine learning structure that is well‐suited to analyze the irregularly‐structured data obtained in mapping procedures and may be used to identify potential isthmuses.MethodsElectroanatomic maps from 29 SRRATs were collected, and custom electrogram features assessing key tissue and wavefront properties were calculated for each point. Isthmuses were labeled off‐line. Training data was used to determine the optimal GCN parameters and train the final model. Putative isthmus points were predicted in the training and test populations and grouped into proposed isthmus areas based on density and distance thresholds. The primary outcome was the distance between the centroids of the true and closest proposed isthmus areas.ResultsA total of 193 821 points were collected. Thirty isthmuses were detected in 29 tachycardias among 25 patients (median age 65.0, 5 women). The median (IQR) distance between true and the closest proposed isthmus area centroids was 8.2 (3.5, 14.4) mm in the training and 7.3 (2.8, 16.1) mm in the test group. The mean overlap in areas, measured by the Dice coefficient, was 11.5 ± 3.2% in the training group and 13.9 ± 4.6% in the test group.ConclusionA GCN can be trained to identify isthmus areas in SRRATs and may help identify critical ablation targets.

Publisher

Wiley

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