Back to Search Start Over

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

Authors :
Siyi Tang
Orod Razeghi
Ridhima Kapoor
Mahmood I. Alhusseini
Muhammad Fazal
Albert J. Rogers
Miguel Rodrigo Bort
Paul Clopton
Paul J. Wang
Daniel L. Rubin
Sanjiv M. Narayan
Tina Baykaner
Source :
Tang, Siyi Razeghi, Orod Kapoor, Ridhima Alhusseini, Mahmood I. Fazal, Muhammad Rogers, A. J. Rodrigo Bort, Miguel Clopton, Paul Wang Jiyou, Paul Rubin, Daniel L. 2022 Machine Learning-Enabled Multimodal Fusion of Intra-Atrial and Body Surface Signals in Prediction of Atrial Fibrillation Ablation Outcomes Circulation-Arrhythmia And Electrophysiology 15 8 500 509
Publication Year :
2022
Publisher :
Ovid Technologies (Wolters Kluwer Health), 2022.

Abstract

Background: Machine learning is a promising approach to personalize atrial fibrillation management strategies for patients after catheter ablation. Prior atrial fibrillation ablation outcome prediction studies applied classical machine learning methods to hand-crafted clinical scores, and none have leveraged intracardiac electrograms or 12-lead surface electrocardiograms for outcome prediction. We hypothesized that (1) machine learning models trained on electrograms or electrocardiogram (ECG) signals can perform better at predicting patient outcomes after atrial fibrillation ablation than existing clinical scores and (2) multimodal fusion of electrogram, ECG, and clinical features can further improve the prediction of patient outcomes. Methods: Consecutive patients who underwent catheter ablation between 2015 and 2017 with panoramic left atrial electrogram before ablation and clinical follow-up for at least 1 year following ablation were included. Convolutional neural network and a novel multimodal fusion framework were developed for predicting 1-year atrial fibrillation recurrence after catheter ablation from electrogram, ECG signals, and clinical features. The models were trained and validated using 10-fold cross-validation on patient-level splits. Results: One hundred fifty-six patients (64.5±10.5 years, 74% male, 42% paroxysmal) were analyzed. Using electrogram signals alone, the convolutional neural network achieved an area under the receiver operating characteristics curve (AUROC) of 0.731, outperforming the existing APPLE scores (AUROC=0.644) and CHA2DS2-VASc scores (AUROC=0.650). Similarly using 12-lead ECG alone, the convolutional neural network achieved an AUROC of 0.767. Combining electrogram, ECG, and clinical features, the fusion model achieved an AUROC of 0.859, outperforming single and dual modality models. Conclusions: 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.

Details

ISSN :
19413084 and 19413149
Volume :
15
Database :
OpenAIRE
Journal :
Circulation: Arrhythmia and Electrophysiology
Accession number :
edsair.doi.dedup.....e5d1ef2ff551f28af8b7571db296fa95
Full Text :
https://doi.org/10.1161/circep.122.010850