Integrating stem cell models with computational modelling creates a novel pipeline for patient-specific drug discovery and personalized ablation strategies in atrial fibrillation.
Atrial fibrillation
Stem cell and in silico disease models
Atrial fibrillation (AF) is the most common cardiac arrhythmia and is associated with substantial morbidity. There is considerable inter-patient variability in the pathologic processes that promote AF, and this variability likely has a significant genetic basis. Clinically this is reflected by the observation that anti-arrhythmic drugs and interventional procedures have highly variable efficacy, and this highlights the need for adopting a more efficacious personalized approach. We explore recent advancements in both in silico and stem cell disease models that set the stage for a personalized approach. Specifically we highlight new mechanistic insights in AF; the future role of computational models in planning personalized ablation strategies; the potential role of stem cell models as a preclinical platform for drug development; and the potential to use gene-editing technology to create patient-specific stem cell models. Finally, we introduce the concept of integrating stem cell models with computational modelling to create a novel pipeline for patient-specific drug discovery and development.
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Scott Barichello
University of Toronto
Jason D. Roberts
Electrophysiology
Peter H. Backx
Electrophysiology
Cardiovascular Research
Johns Hopkins University
University of Toronto
University of British Columbia
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Barichello et al. (Fri,) conducted a review in Atrial fibrillation. Stem cell and in silico disease models was evaluated. Integrating stem cell models with computational modelling creates a novel pipeline for patient-specific drug discovery and personalized ablation strategies in atrial fibrillation.
synapsesocial.com/papers/6a12cedd86514ddae6c099bd — DOI: https://doi.org/10.1093/cvr/cvy090