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contributor authorDu, Pan;Wang, JianXun
date accessioned2023-04-06T13:01:04Z
date available2023-04-06T13:01:04Z
date copyright10/17/2022 12:00:00 AM
date issued2022
identifier issn1480731
identifier otherbio_144_12_121009.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4288928
description abstractComputational hemodynamic modeling has been widely used in cardiovascular research and healthcare. However, the reliability of model predictions is largely dependent on the uncertainties of modeling parameters and boundary conditions, which should be carefully quantified and further reduced with available measurements. In this work, we focus on propagating and reducing the uncertainty of vascular geometries within a Bayesian framework. A novel deep learning (DL)assisted parallel Markov chain Monte Carlo (MCMC) method is presented to enable efficient Bayesian posterior sampling and geometric uncertainty reduction. A DL model is built to approximate the geometrytohemodynamic map, which is trained actively using online data collected from parallel MCMC chains and utilized for early rejection of unlikely proposals to facilitate convergence with less expensive fullorder model evaluations. Numerical studies on twodimensional aortic flows are conducted to demonstrate the effectiveness and merit of the proposed method.
publisherThe American Society of Mechanical Engineers (ASME)
titleReducing Geometric Uncertainty in Computational Hemodynamics by Deep LearningAssisted ParallelChain MCMC
typeJournal Paper
journal volume144
journal issue12
journal titleJournal of Biomechanical Engineering
identifier doi10.1115/1.4055809
journal fristpage121009
journal lastpage12100912
page12
treeJournal of Biomechanical Engineering:;2022:;volume( 144 ):;issue: 012
contenttypeFulltext


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