Authors
Patrick M Boyle, Tarek Zghaib, Sohail Zahid, Rheeda L Ali, Dongdong Deng, William H Franceschi, Joe B Hakim, Michael J Murphy, Adityo Prakosa, Stefan L Zimmerman, Hiroshi Ashikaga, Joseph E Marine, Aravindan Kolandaivelu, Saman Nazarian, David D Spragg, Hugh Calkins, Natalia A Trayanova
Publication date
2019/11
Journal
Nature biomedical engineering
Volume
3
Issue
11
Pages
870-879
Publisher
Nature Publishing Group UK
Description
Atrial fibrillation (AF)—the most common arrhythmia—significantly increases the risk of stroke and heart failure. Although catheter ablation can restore normal heart rhythms, patients with persistent AF who develop atrial fibrosis often undergo multiple failed ablations, and thus increased procedural risks. Here, we present personalized computational modelling for the reliable predetermination of ablation targets, which are then used to guide the ablation procedure in patients with persistent AF and atrial fibrosis. First, we show that a computational model of the atria of patients identifies fibrotic tissue that, if ablated, will not sustain AF. Then, we report the results of integrating the target ablation sites in a clinical mapping system and testing its feasibility in ten patients with persistent AF. The computational prediction of ablation targets avoids lengthy electrical mapping and could improve the accuracy and efficacy of …
Total citations
20192020202120222023202442763485133
Scholar articles
PM Boyle, T Zghaib, S Zahid, RL Ali, D Deng… - Nature biomedical engineering, 2019