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SEG.A@MICCAI 2023: Vancouver, BC, Canada
- Antonio Pepe
, Gian Marco Melito
, Jan Egger
:
Segmentation of the Aorta. Towards the Automatic Segmentation, Modeling, and Meshing of the Aortic Vessel Tree from Multicenter Acquisition - First Challenge, SEG.A. 2023, Held in Conjunction with MICCAI 2023, Vancouver, BC, Canada, October 8, 2023, Proceedings. Lecture Notes in Computer Science 14539, Springer 2024, ISBN 978-3-031-53240-5 - Yunsu Byeon
, Hyeseong Kim
, Kyungwon Kim
, Doohyun Park
, Euijoon Choi
, Dosik Hwang
:
M3F: Multi-Field-of-View Feature Fusion Network for Aortic Vessel Tree Segmentation in CT Angiography. 1-12 - Andriy Myronenko, Dong Yang, Yufan He, Daguang Xu:
Aorta Segmentation from 3D CT in MICCAI SEG.A. 2023 Challenge. 13-18 - Ayman El-Ghotni
, Mohamed Nabil
, Hossam El-Kady
, Ahmed Ayyad
, Amr Nasr
:
A Data-Centric Approach for Segmenting the Aortic Vessel Tree: A Solution to SEG.A. Challenge 2023 Segmentation Task. 19-41 - Marek Wodzinski
, Henning Müller
:
Automatic Aorta Segmentation with Heavily Augmented, High-Resolution 3-D ResUNet: Contribution to the SEG.A Challenge. 42-54 - Hyeongyu Kim
, Yejee Shin
, Dosik Hwang
:
Position-Encoded Pixel-to-Prototype Contrastive Learning for Aortic Vessel Tree Segmentation. 55-66 - Abbas Khan, Muhammad Asad, Alexander M. Zolotarev, Caroline H. Roney, Anthony Mathur, Martin Benning
, Gregory G. Slabaugh:
Misclassification Loss for Segmentation of the Aortic Vessel Tree. 67-79 - Theodoros P. Vagenas
, Konstantinos Georgas
, George K. Matsopoulos:
Deep Learning-Based Segmentation and Mesh Reconstruction of the Aortic Vessel Tree from CTA Images. 80-94 - Jihan Zhang
, Zhen Zhang
, Liqin Huang
:
RASNet: U-Net-Based Robust Aortic Segmentation Network for Multicenter Datasets. 95-109 - Gian Marco Melito
, Antonio Pepe
, Alireza Jafarinia
, Thomas Krispel
, Jan Egger
:
Optimizing Aortic Segmentation with an Innovative Quality Assessment: The Role of Global Sensitivity Analysis. 110-126 - Domagoj Bosnjak
, Thomas-Peter Fries
:
A Mini Guide on Mesh Generation of Blood Vessels for CFD Applications. 127-134 - Christian Mayer
, Melanie Arnreiter, Barbara Karner, Sophie Hossain, Hannes Deutschmann, Daniel Zimpfer, Heinrich Mächler:
Aortic Segmentations and Their Possible Clinical Benefits. 135-140
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