Predicting and Recognizing Drug‐Induced Type I Brugada Pattern Using ECG‐Based Deep Learning

Author:

Călburean Paul‐Adrian12ORCID,Pannone Luigi1ORCID,Monaco Cinzia1ORCID,Rocca Domenico Della1ORCID,Sorgente Antonio1ORCID,Almorad Alexandre1ORCID,Bala Gezim1ORCID,Aglietti Filippo1ORCID,Ramak Robbert1ORCID,Overeinder Ingrid1,Ströker Erwin1,Pappaert Gudrun1ORCID,Măru’teri Marius2,Harpa Marius2ORCID,La Meir Mark1ORCID,Brugada Pedro1ORCID,Sieira Juan1,Sarkozy Andrea1ORCID,Chierchia Gian‐Battista1,de Asmundis Carlo1ORCID

Affiliation:

1. Heart Rhythm Management Centre, Postgraduate Program in Cardiac Electrophysiology and Pacing Universitair Ziekenhuis Brussel, Vrije Universiteit Brussel, European Reference Networks Guard‐Heart Brussels Belgium

2. University of Medicine, Pharmacy, Science and Technology “George Emil Palade” of Târgu Mureş Târgu Mureş Romania

Abstract

Background Brugada syndrome (BrS) has been associated with sudden cardiac death in otherwise healthy subjects, and drug‐induced BrS accounts for 55% to 70% of all patients with BrS. This study aims to develop a deep convolutional neural network and evaluate its performance in recognizing and predicting BrS diagnosis. Methods and Results Consecutive patients who underwent ajmaline testing for BrS following a standardized protocol were included. ECG tracings from baseline and during ajmaline were transformed using wavelet analysis and a deep convolutional neural network was separately trained to (1) recognize and (2) predict BrS type I pattern. The resultant networks are referred to as BrS‐Net. A total of 1188 patients were included, of which 361 (30.3%) patients developed BrS type I pattern during ajmaline infusion. When trained and evaluated on ECG tracings during ajmaline, BrS‐Net recognized a BrS type I pattern with an AUC‐ROC of 0.945 (0.921–0.969) and an AUC‐PR of 0.892 (0.815–0.939). When trained and evaluated on ECG tracings at baseline, BrS‐Net predicted a BrS type I pattern during ajmaline with an AUC‐ROC of 0.805 (0.845–0.736) and an AUC‐PR of 0.605 (0.460–0.664). Conclusions BrS‐Net, a deep convolutional neural network, can identify BrS type I pattern with high performance. BrS‐Net can predict from baseline ECG the development of a BrS type I pattern after ajmaline with good performance in an unselected population.

Publisher

Ovid Technologies (Wolters Kluwer Health)

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