2024
DOI: 10.1101/2024.07.17.603959
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Synergistic Biophysics and Machine Learning Modeling to Rapidly Predict Cardiac Growth Probability

Clara E. Jones,
Pim J.A. Oomen

Abstract: Computational models that can predict growth and remodeling of the heart could have important clinical applications. However, the time it takes to calibrate and run current models while considering data uncertainty and variability makes them impractical for routine clinical use. This study aims to address this need by creating a computational framework to efficiently predict cardiac growth probability. We utilized a biophysics model to rapidly simulate cardiac growth following mitral valve regurgitation (MVR).… Show more

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