Hybrid machine learning to localize atrial flutter substrates using the surface 12-lead electrocardiogram
EP Europace Journal

Abstract
Atrial flutter (AFlut) is a common re-entrant atrial tachycardia driven by self-sustainable mechanisms that cause excitations to propagate along pathways different from sinus rhythm. Intra-cardiac electrophysiological mapping and catheter ablation are often performed without detailed prior knowledge of the mechanism perpetuating AFlut, likely prolonging the procedure time of these invasive interventions. We sought to discriminate the AFlut location [cavotricuspid isthmus-dependent (CTI), peri-mitral, and other left atrium (LA) AFlut classes] with a machine learning-based algorithm using only the non-invasive signals from the 12-lead electrocardiogram (ECG).
Hybrid 12-lead ECG dataset of 1769 signals was used (1424
Our results show that a machine learning classifier relying only on non-invasive signals can potentially identify the location of AFlut mechanisms. This method could aid in planning and tailoring patient-specific AFlut treatments.
Contributors

Giorgio Luongo
Author

Gaetano Vacanti
Author

Vincent Nitzke
Author

Deborah Nairn
Author

Claudia Nagel
Author

Diba Kabiri
Author

Tiago P Almeida
Author

Diogo C Soriano
Author

Massimo W Rivolta
Author

Ghulam André Ng
Author

Olaf Dössel
Author

Armin Luik
Author

Roberto Sassi
Author

Claus Schmitt
Author

