Explainable Machine Learning to Predict Anchored Reentry Substrate Created by Persistent Atrial Fibrillation Ablation in Computational Models.
Savannah F BifulcoFima MacheretGriffin D ScottNazem AkoumPatrick M BoylePublished in: Journal of the American Heart Association (2023)
Background Postablation arrhythmia recurrence occurs in ~40% of patients with persistent atrial fibrillation. Fibrotic remodeling exacerbates arrhythmic activity in persistent atrial fibrillation and can play a key role in reentrant arrhythmia, but emergent interaction between nonconductive ablation-induced scar and native fibrosis (ie, residual fibrosis) is poorly understood. Methods and Results We conducted computational simulations in pre- and postablation left atrial models reconstructed from late gadolinium enhanced magnetic resonance imaging scans to test the hypothesis that ablation in patients with persistent atrial fibrillation creates new substrate conducive to recurrent arrhythmia mediated by anchored reentry. We trained a random forest machine learning classifier to accurately pinpoint specific nonconductive tissue regions (ie, areas of ablation-delivered scar or vein/valve boundaries) with the capacity to serve as substrate for anchored reentry-driven recurrent arrhythmia (area under the curve: 0.91±0.03). Our analysis suggests there is a distinctive nonconductive tissue pattern prone to serving as arrhythmogenic substrate in postablation models, defined by a specific size and proximity to residual fibrosis. Conclusions Overall, this suggests persistent atrial fibrillation ablation transforms substrate that favors functional reentry (ie, rotors meandering in excitable tissue) into an arrhythmogenic milieu more conducive to anchored reentry. Our work also indicates that explainable machine learning and computational simulations can be combined to effectively probe mechanisms of recurrent arrhythmia.
Keyphrases
- catheter ablation
- left atrial
- atrial fibrillation
- machine learning
- left atrial appendage
- magnetic resonance imaging
- oral anticoagulants
- direct oral anticoagulants
- computed tomography
- climate change
- molecular dynamics
- percutaneous coronary intervention
- magnetic resonance
- contrast enhanced
- oxidative stress
- heart failure
- coronary artery disease
- big data
- mitral valve
- single molecule
- deep learning
- endothelial cells
- left ventricular
- stress induced
- high glucose
- wound healing
- aortic valve