Abdominal Aortic Aneurysm (AAA) is a dangerous condition where the
weakening of the aortic wall leads to its deformation and the generation
of a thrombus. To prevent a possible rupture of the aortic wall,
AAAs can be treated non-invasively by means of the Endovascular Aneurysm
Repair technique (EVAR), which consists of placing a stent-graft
inside the aorta in order to exclude the bulge from the blood circulation
and usually leads to its contraction. Nevertheless, the bulge may
continue to grow without any apparent leak. In order to effectively
assess the changes experienced after surgery, it is necessary to
segment the aneurysm, which is a very time-consuming task. Here we
describe the initial results of a novel model-based approach for
the semi-automatic segmentation of both the lumen and the thrombus
of AAAs, using radial functions constrained by a priori knowledge
and spatial coherency.
%0 Conference Paper
%1 Macia2009
%A Macia, Ivan
%A Legarreta, Jon Haitz
%A Paloc, Celine
%A Grana, Manuel
%A Maiora, Josu
%A Garcia, Guillermo
%A de Blas, Mariano
%B Intelligent Data Engineering and Automated Learning, Proceedings
%D 2009
%E Corchado, E and Yin, H,
%I Springer-Verlag Berlin
%K aneurysm aneurysm; aortic endovascular functions} growing; image moments; radial region repair; segmentation; {abdominal
%P 664-671
%T Segmentation of Abdominal Aortic Aneurysms in CT Images Using a
Radial Model Approach
%V 5788
%X Abdominal Aortic Aneurysm (AAA) is a dangerous condition where the
weakening of the aortic wall leads to its deformation and the generation
of a thrombus. To prevent a possible rupture of the aortic wall,
AAAs can be treated non-invasively by means of the Endovascular Aneurysm
Repair technique (EVAR), which consists of placing a stent-graft
inside the aorta in order to exclude the bulge from the blood circulation
and usually leads to its contraction. Nevertheless, the bulge may
continue to grow without any apparent leak. In order to effectively
assess the changes experienced after surgery, it is necessary to
segment the aneurysm, which is a very time-consuming task. Here we
describe the initial results of a novel model-based approach for
the semi-automatic segmentation of both the lumen and the thrombus
of AAAs, using radial functions constrained by a priori knowledge
and spatial coherency.
%@ 978-3-642-04393-2
@inproceedings{Macia2009,
abstract = {{Abdominal Aortic Aneurysm (AAA) is a dangerous condition where the
weakening of the aortic wall leads to its deformation and the generation
of a thrombus. To prevent a possible rupture of the aortic wall,
AAAs can be treated non-invasively by means of the Endovascular Aneurysm
Repair technique (EVAR), which consists of placing a stent-graft
inside the aorta in order to exclude the bulge from the blood circulation
and usually leads to its contraction. Nevertheless, the bulge may
continue to grow without any apparent leak. In order to effectively
assess the changes experienced after surgery, it is necessary to
segment the aneurysm, which is a very time-consuming task. Here we
describe the initial results of a novel model-based approach for
the semi-automatic segmentation of both the lumen and the thrombus
of AAAs, using radial functions constrained by a priori knowledge
and spatial coherency.}},
added-at = {2011-03-11T12:21:24.000+0100},
affiliation = {{Macia, I (Reprint Author), Vicomtech, Biomed Applicat Dept, Donostia
San Sebastian, Spain. {[}Macia, Ivan; Haitz Legarreta, Jon; Paloc,
Celine] Vicomtech, Biomed Applicat Dept, Donostia San Sebastian,
Spain.}},
author = {Macia, Ivan and Legarreta, Jon Haitz and Paloc, Celine and Grana, Manuel and Maiora, Josu and Garcia, Guillermo and de Blas, Mariano},
biburl = {https://www.bibsonomy.org/bibtex/2055421678c7c572ca6b5d0e3dce627a2/jmaiora},
booktitle = {{Intelligent Data Engineering and Automated Learning, Proceedings}},
doc-delivery-number = {{BND11}},
editor = {{Corchado, E and Yin, H}},
interhash = {8dee2bbf7867d08f8b3aeaf22b820e31},
intrahash = {055421678c7c572ca6b5d0e3dce627a2},
isbn = {{978-3-642-04393-2}},
issn = {{0302-9743}},
keywords = {aneurysm aneurysm; aortic endovascular functions} growing; image moments; radial region repair; segmentation; {abdominal},
language = {{English}},
number-of-cited-references = {{7}},
owner = {Josu},
pages = {{664-671}},
publisher = {{Springer-Verlag Berlin}},
series = {{Lecture Notes in Computer Science}},
subject-category = {{Computer Science, Theory \& Methods}},
times-cited = {{0}},
timestamp = {2011-03-11T12:21:26.000+0100},
title = {{Segmentation of Abdominal Aortic Aneurysms in CT Images Using a
Radial Model Approach}},
type = {{Proceedings Paper}},
unique-id = {{ISI:000274188700081}},
volume = {{5788}},
year = {{2009}}
}