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Communication Dans Un Congrès Année : 2017

Longitudinal Parameter Estimation in 3D Electromechanical Models: Application to Cardiovascular Changes in Digestion

Résumé

Computer models of the heart are of increasing interest for clinical applications due to their discriminative and predictive abilities. However the number of simulation parameters in these models can be high and expert knowledge is required to properly design studies involving these models, and analyse the results. In particular it is important to know how the parameters vary in various clinical or physiological settings. In this paper we build a data-driven model of cardiovascular parameter evolution during digestion, from a clinical study involving more than 80 patients. We first present a method for longitudinal parameter estimation in 3D cardiac models, which we apply to 21 patient-specific hearts geometries at two instants of the study, for 6 parameters (two fixed and four time-varying parameters). From these personalised hearts, we then extract and validate a law which links the changes of cardiac output and heart rate under constant arterial pressure to the evolution of these parameters, thus enabling the fast simulation of hearts during digestion for future patients.
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Dates et versions

hal-01522598 , version 1 (15-05-2017)

Identifiants

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Roch Molléro, Jakob Hauser, Xavier Pennec, Manasi Datar, Hervé Delingette, et al.. Longitudinal Parameter Estimation in 3D Electromechanical Models: Application to Cardiovascular Changes in Digestion. FIMH 2017 - 9th international conference on Functional Imaging and Modeling of the Heart, Jun 2017, Toronto, Canada. pp.432-440, ⟨10.1007/978-3-319-59448-4_41⟩. ⟨hal-01522598⟩

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