AI Article Synopsis

  • Brugada syndrome (BrS) is a genetic condition that increases the risk of dangerous heart rhythms and can be identified by studying P-wave characteristics on an ECG using AI technology.* -
  • The study analyzed ECG data from 123 patients, extracting numerous P-wave features and training an AI model to differentiate between patients with and without BrS.* -
  • The AI model demonstrated over 81% accuracy in identifying BrS by recognizing specific P-wave patterns, supporting the idea of an atrial signature related to the syndrome.*

Article Abstract

Aims: Brugada syndrome (BrS) is an inherited disease associated with an increased risk of ventricular arrhythmias. Recent studies have reported the presence of an altered atrial phenotype characterized by abnormal P-wave parameters. The aim of this study was to identify BrS based exclusively on P-wave features through an artificial intelligence (AI)-based model.

Methods And Results: Continuous 5 min 12-lead ECG recordings were obtained in sinus rhythm from (i) patients with spontaneous or ajmaline-induced BrS and no history of AF and (ii) subjects with suspected BrS and negative ajmaline challenge. The recorded ECG signals were processed and divided into epochs of 15 s each. Within these epochs, P-waves were first identified and then averaged. From the averaged P-waves, a total of 67 different features considered relevant to the classification task were extracted. These features were then used to train nine different AI-based supervised classifiers. A total of 2228 averaged P-wave observations, resulting from the analysis of 33 420 P-waves, were obtained from 123 patients (79 BrS+ and 44 BrS-). Averaged P-waves were divided using a patient-wise split, allocating 80% for training and 20% for testing, ensuring data integrity and reducing biases in AI-based model training. The BrS+ patients presented with longer P-wave duration (136 ms vs. 124 ms, P < 0.001) and higher terminal force in lead V1 (2.5 au vs. 1.7 au, P < 0.01) compared with BrS- subjects. Among classifiers, AdaBoost model had the highest values of performance for all the considered metrics, reaching an accuracy of over 81% (sensitivity 86%, specificity 73%).

Conclusion: An AI machine-learning model is able to identify patients with BrS based only on P-wave characteristics. These findings confirm the presence of an atrial hallmark and open new horizons for AI-guided BrS diagnosis.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10683037PMC
http://dx.doi.org/10.1093/europace/euad334DOI Listing

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