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Learning to Predict Global Atrial Fibrillation Dynamics from Sparse Measurements

Authors :
Jenkins, Alexander
Cini, Andrea
Barker, Joseph
Sharp, Alexander
Sau, Arunashis
Valentine, Varun
Valasang, Srushti
Li, Xinyang
Wong, Tom
Betts, Timothy
Mandic, Danilo
Alippi, Cesare
Ng, Fu Siong
Publication Year :
2025

Abstract

Catheter ablation of Atrial Fibrillation (AF) consists of a one-size-fits-all treatment with limited success in persistent AF. This may be due to our inability to map the dynamics of AF with the limited resolution and coverage provided by sequential contact mapping catheters, preventing effective patient phenotyping for personalised, targeted ablation. Here we introduce FibMap, a graph recurrent neural network model that reconstructs global AF dynamics from sparse measurements. Trained and validated on 51 non-contact whole atria recordings, FibMap reconstructs whole atria dynamics from 10% surface coverage, achieving a 210% lower mean absolute error and an order of magnitude higher performance in tracking phase singularities compared to baseline methods. Clinical utility of FibMap is demonstrated on real-world contact mapping recordings, achieving reconstruction fidelity comparable to non-contact mapping. FibMap's state-spaces and patient-specific parameters offer insights for electrophenotyping AF. Integrating FibMap into clinical practice could enable personalised AF care and improve outcomes.<br />Comment: Under review

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2502.09473
Document Type :
Working Paper