Litcius/Paper detail

Atrial fibrillation: Insights from animal models, computational modeling, and clinical studies

Carolyna Yamamoto Alves Pinto, Natalia A. Trayanova

2022EBioMedicine22 citationsDOIOpen Access PDF

Abstract

Atrial fibrillation (AF) is the most common human arrhythmia, affecting millions of patients worldwide. A combination of risk factors and comorbidities results in complex atrial remodeling, which increases AF vulnerability and persistence. Insights from animal models, clinical studies, and computational modeling have advanced the understanding of the mechanisms and pathophysiology of AF. Areas of heterogeneous pathological remodeling, as well as altered electrophysiological properties, serve as a substrate for AF drivers and spontaneous activations. The complex and individualized presentation of this arrhythmia suggests that mechanisms-based personalized approaches will likely be needed to overcome current challenges in AF management. In this paper, we review the insights on the mechanisms of AF obtained from animal models and clinical studies and how computational models integrate this knowledge to advance AF clinical management. We also assess the challenges that need to be overcome to implement these mechanistic models in clinical practice.

Topics & Concepts

Atrial fibrillationMedicineComputational modelPresentation (obstetrics)Mechanism (biology)Intensive care medicineCardiac electrophysiologyBioinformaticsNeuroscienceRisk analysis (engineering)Computer scienceCardiologyInternal medicineElectrophysiologyPsychologyBiologyArtificial intelligenceRadiologyEpistemologyPhilosophyAtrial Fibrillation Management and OutcomesCardiac electrophysiology and arrhythmiasCardiac Arrhythmias and Treatments