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Predicting and Recognizing Drug-Induced Type I Brugada Pattern Using ECG-Based Deep Learning. | LitMetric

AI Article Synopsis

  • Brugada syndrome (BrS) is linked to sudden cardiac death, with drug-induced cases making up a significant portion, and this study focuses on developing a deep learning model called BrS-Net to recognize and predict BrS diagnosis.
  • The research included 1,188 patients undergoing ajmaline testing, showing that BrS-Net effectively identified a BrS type I pattern during ajmaline with high accuracy (AUC-ROC of 0.945) and had moderate prediction accuracy from baseline ECG (AUC-ROC of 0.805).
  • The study concludes that BrS-Net demonstrates strong performance in both recognizing and predicting BrS type I patterns, presenting a potential tool for monitoring at-risk populations.

Article 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.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11179812PMC
http://dx.doi.org/10.1161/JAHA.123.033148DOI Listing

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