TL;DR
This paper introduces ROM-KF, a reduced-order data assimilation method combining Kalman filtering and DMD, to improve blood flow modeling accuracy in cardiovascular research despite low-resolution and noisy data.
Contribution
The study presents a novel, computationally efficient data assimilation approach that enhances blood flow and near-wall hemodynamics estimation in cardiovascular models.
Findings
ROM-KF outperforms traditional methods in accuracy.
Improves near-wall hemodynamics quantification.
Effective across 1D, 2D, and 3D models.
Abstract
High-fidelity patient-specific modeling of cardiovascular flows and hemodynamics is challenging. Direct blood flow measurement inside the body with in-vivo measurement modalities such as 4D flow magnetic resonance imaging (4D flow MRI) suffer from low resolution and acquisition noise. In-vitro experimental modeling and patient-specific computational fluid dynamics (CFD) models are subject to uncertainty in patient-specific boundary conditions and model parameters. Furthermore, collecting blood flow data in the near-wall region (e.g., wall shear stress) with experimental measurement modalities poses additional challenges. In this study, a computationally efficient data assimilation method called reduced-order modeling Kalman filter (ROM-KF) was proposed, which combined a sequential Kalman filter with reduced-order modeling using a linear model provided by dynamic mode decomposition…
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