Assessing the arrhythmogenic propensity of fibrotic substrate using digital twins to inform a mechanisms-based atrial fibrillation ablation strategy

Kensuke Sakata(Johns Hopkins University), Ryan Bradley(Johns Hopkins University), Adityo Prakosa(Johns Hopkins University), Carolyna Yamamoto Alves Pinto(Johns Hopkins University), Syed Yusuf Ali(Johns Hopkins University), Shane Loeffler(Johns Hopkins University), Brock M. Tice(Johns Hopkins University), Patrick M. Boyle(University of Washington), Eugene Kholmovski(Johns Hopkins University), Ritu Yadav(Johns Hopkins University), Sunil Sinha(Johns Hopkins University), Joseph E. Marine(Johns Hopkins University), Hugh Calkins(Johns Hopkins University), David Spragg(Johns Hopkins University), Natalia A. Trayanova(Johns Hopkins University)
Nature Cardiovascular Research
June 18, 2024
Cited by 38Open Access
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Abstract

Atrial fibrillation (AF), the most common heart rhythm disorder, may cause stroke and heart failure. For patients with persistent AF with fibrosis proliferation, the standard AF treatment-pulmonary vein isolation-has poor outcomes, necessitating redo procedures, owing to insufficient understanding of what constitutes good targets in fibrotic substrates. Here we present a prospective clinical and personalized digital twin study that characterizes the arrhythmogenic properties of persistent AF substrates and uncovers locations possessing rotor-attracting capabilities. Among these, a portion needs to be ablated to render the substrate not inducible for rotors, but the rest (37%) lose rotor-attracting capabilities when another location is ablated. Leveraging digital twin mechanistic insights, we suggest ablation targets that eliminate arrhythmia propensity with minimum lesions while also minimizing the risk of iatrogenic tachycardia and AF recurrence. Our findings provide further evidence regarding the appropriate substrate ablation targets in persistent AF, opening the door for effective strategies to mitigate patients' AF burden.


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