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Modelling the progression of atrial fibrillation: A stochastic individual-based approach (1507.07358v2)

Published 27 Jul 2015 in q-bio.PE, physics.med-ph, and physics.soc-ph

Abstract: We propose a stochastic individual-based model of the progression of atrial fibrillation (AF). The model operates at patient level over a lifetime and is based on elements of the physiology and biophysics of AF, making contact with existing mechanistic models. The outputs of the model are times when the patient is in normal rhythm and AF, and we carry out a population-level analysis of the statistics of disease progression. While the model is stylised at present and not directly predictive, future improvements are proposed to tighten the gap between existing mechanistic models of AF, and epidemiological data, with a view towards model-based personalised medicine.

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