Login / Signup

Machine Learning-Enabled Multimodal Fusion of Intra-Atrial and Body Surface Signals in Prediction of Atrial Fibrillation Ablation Outcomes.

Siyi TangOrod RazeghiRidhima KapoorMahmood I AlhusseiniMuhammad FazalAlbert J RogersMiguel Rodrigo BortPaul CloptonPaul J WangDaniel L RubinSanjiv M NarayanTina Baykaner
Published in: Circulation. Arrhythmia and electrophysiology (2022)
Deep neural networks trained on electrogram or ECG signals improved the prediction of catheter ablation outcome compared with existing clinical scores, and fusion of electrogram, ECG, and clinical features further improved the prediction. This suggests the promise of using machine learning to help treatment planning for patients after catheter ablation.
Keyphrases