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Improving abdominal image segmentation with overcomplete shape priors.

Authors :
Sadikine, Amine
Badic, Bogdan
Tasu, Jean-Pierre
Noblet, Vincent
Ballet, Pascal
Visvikis, Dimitris
Conze, Pierre-Henri
Source :
Computerized Medical Imaging & Graphics. Apr2024, Vol. 113, pN.PAG-N.PAG. 1p.
Publication Year :
2024

Abstract

The extraction of abdominal structures using deep learning has recently experienced a widespread interest in medical image analysis. Automatic abdominal organ and vessel segmentation is highly desirable to guide clinicians in computer-assisted diagnosis, therapy, or surgical planning. Despite a good ability to extract large organs, the capacity of U-Net inspired architectures to automatically delineate smaller structures remains a major issue, especially given the increase in receptive field size as we go deeper into the network. To deal with various abdominal structure sizes while exploiting efficient geometric constraints, we present a novel approach that integrates into deep segmentation shape priors from a semi-overcomplete convolutional auto-encoder (S-OCAE) embedding. Compared to standard convolutional auto-encoders (CAE), it exploits an over-complete branch that projects data onto higher dimensions to better characterize anatomical structures with a small spatial extent. Experiments on abdominal organs and vessel delineation performed on various publicly available datasets highlight the effectiveness of our method compared to state-of-the-art, including U-Net trained without and with shape priors from a traditional CAE. Exploiting a semi-overcomplete convolutional auto-encoder embedding as shape priors improves the ability of deep segmentation models to provide realistic and accurate abdominal structure contours. • A new semi-overcomplete convolutional auto-encoder is proposed to obtain shape priors. • The resulting overcomplete shape priors are integrated into a deep segmentation pipeline. • Experiments focus on abdominal organ and vessel segmentation from public datasets. • Our method outperforms U-Net without/with shape priors from a standard auto-encoder. • A frequency analysis of shape codes is provided in addition to segmentation scores. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
08956111
Volume :
113
Database :
Academic Search Index
Journal :
Computerized Medical Imaging & Graphics
Publication Type :
Academic Journal
Accession number :
175698055
Full Text :
https://doi.org/10.1016/j.compmedimag.2024.102356