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contributor authorAghilinejad, Arian
contributor authorWei, Heng
contributor authorBilgi, Coskun
contributor authorParedes, Alberto
contributor authorDiBartolomeo, Alexander
contributor authorMagee, Gregory A.
contributor authorPahlevan, Niema M.
date accessioned2023-11-29T19:09:36Z
date available2023-11-29T19:09:36Z
date copyright6/13/2023 12:00:00 AM
date issued6/13/2023 12:00:00 AM
date issued2023-06-13
identifier issn0148-0731
identifier otherbio_145_09_091010.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4294622
description abstractType B aortic dissection is a life-threatening medical emergency that can result in rupture of the aorta. Due to the complexity of patient-specific characteristics, only limited information on flow patterns in dissected aortas has been reported in the literature. Leveraging the medical imaging data for patient-specific in vitro modeling can complement the hemodynamic understanding of aortic dissections. We propose a new approach toward fully automated patient-specific type B aortic dissection model fabrication. Our framework uses a novel deep-learning-based segmentation for negative mold manufacturing. Deep-learning architectures were trained on a dataset of 15 unique computed tomography scans of dissection subjects and were blind-tested on 4 sets of scans, which were targeted for fabrication. Following segmentation, the three-dimensional models were created and printed using polyvinyl alcohol. These models were then coated with latex to create compliant patient-specific phantom models. The magnetic resonance imaging (MRI) structural images demonstrate the ability of the introduced manufacturing technique for creating intimal septum walls and tears based on patient-specific anatomy. The in vitro experiments show the fabricated phantoms generate physiologically-accurate pressure results. The deep-learning models also show high similarity metrics between manual segmentation and autosegmentation where Dice metric is as high as 0.86. The proposed deep-learning-based negative mold manufacturing method facilitates an inexpensive, reproducible, and physiologically-accurate patient-specific phantom model fabrication suitable for aortic dissection flow modeling.
publisherThe American Society of Mechanical Engineers (ASME)
titleFramework Development for Patient-Specific Compliant Aortic Dissection Phantom Model Fabrication: Magnetic Resonance Imaging Validation and Deep-Learning Segmentation
typeJournal Paper
journal volume145
journal issue9
journal titleJournal of Biomechanical Engineering
identifier doi10.1115/1.4062539
journal fristpage91010-1
journal lastpage91010-11
page11
treeJournal of Biomechanical Engineering:;2023:;volume( 145 ):;issue: 009
contenttypeFulltext


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