A probabilistic reduced-order modeling framework for patient-specific cardio-mechanical analysis
Robin Willems, Peter F\"orster, Sebastian Sch\"ops, Olaf van der Sluis, Clemens V. Verhoosel

TL;DR
This paper introduces a probabilistic reduced-order modeling framework that significantly accelerates patient-specific cardiac simulations while providing uncertainty quantification, aiding clinical decision-making.
Contribution
The work develops a Bayesian-calibrated ROM framework with Gaussian process predictions for efficient, credible cardiac modeling across diverse geometries.
Findings
ROM provides accurate predictions with sufficient training data.
Uncertainty bands indicate model trustworthiness and guide data collection.
Framework applicable to both idealized and scan-based geometries.
Abstract
Cardio-mechanical models can be used to support clinical decision-making. Unfortunately, the substantial computational effort involved in many cardiac models hinders their application in the clinic, despite the fact that they may provide valuable information. In this work, we present a probabilistic reduced-order modeling (ROM) framework to dramatically reduce the computational effort of such models while providing a credibility interval. In the online stage, a fast-to-evaluate generalized one-fiber model is considered. This generalized one-fiber model incorporates correction factors to emulate patient-specific attributes, such as local geometry variations. In the offline stage, Bayesian inference is used to calibrate these correction factors on training data generated using a full-order isogeometric cardiac model (FOM). A Gaussian process is used in the online stage to predict the…
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Taxonomy
TopicsElasticity and Material Modeling · Cardiovascular Function and Risk Factors · Hemodynamic Monitoring and Therapy
