2023
DOI: 10.1002/cnm.3783
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Efficient approximation of cardiac mechanics through reduced‐order modeling with deep learning‐based operator approximation

Ludovica Cicci,
Stefania Fresca,
Andrea Manzoni
et al.

Abstract: Reducing the computational time required by high‐fidelity, full‐order models (FOMs) for the solution of problems in cardiac mechanics is crucial to allow the translation of patient‐specific simulations into clinical practice. Indeed, while FOMs, such as those based on the finite element method, provide valuable information on the cardiac mechanical function, accurate numerical results can be obtained at the price of very fine spatio‐temporal discretizations. As a matter of fact, simulating even just a few hear… Show more

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Cited by 6 publications
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