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Left atrial segmentation combining multi-atlas whole heart labeling and shape-based atlas selection

Left atrial segmentation combining multi-atlas whole heart labeling and shape-based atlas selection
Left atrial segmentation combining multi-atlas whole heart labeling and shape-based atlas selection

Segmentation of the left atria (LA) from late gadolinium enhanced magnetic resonance imaging (LGE-MRI) is challenging since atrial borders are not easily distinguishable in the images. We propose a method based on multi-atlas whole heart segmentation and shape modeling of the LA. In the training phase we first construct whole heart LGE-MRI atlases and build a principal component analysis (PCA) model able to capture the high variability of the LA shapes. All atlases are clustered according to their LA shape using an unsupervised clustering method which additionally outputs the most representative case in each cluster. All cluster representatives are registered to the target image and ranked using conditional entropy. A small subset of the most similar representatives is used to find LA shapes with similar morphology in the training set that are used to obtain the final LA segmentation. We tested our approach using 80 LGE-MRI data for training and 20 LGE-MRI data for testing obtaining a Dice score of (Formula Presented).

Atlas selection, Left atrial segmentation, LGE-MRI segmentation, Multi-atlas segmentation
0302-9743
302-310
Springer Cham
Nuñez-Garcia, Marta
84e4ef04-dfa3-453b-afe2-07766721e2e9
Zhuang, Xiahai
c58e977b-e70e-4b37-9acd-b7f8070d98a8
Sanroma, Gerard
7204316c-a989-47fd-ab8b-4c1ac4c3804f
Li, Lei
2da88502-0bd8-4e6b-8f7d-0c01a48b399e
Xu, Lingchao
9001d1ba-d783-4f03-ae04-5c5099e1b037
Butakoff, Constantine
8ede626c-1f7f-4f69-9179-e6f8563c479d
Camara, Oscar
7e3f0a1d-63a2-4025-9520-0b97e0699d28
Young, Alistair
Rhode, Kawal
Zhao, Jichao
Li, Shuo
Mansi, Tommaso
Pop, Mihaela
McLeod, Kristin
Sermesant, Maxime
Nuñez-Garcia, Marta
84e4ef04-dfa3-453b-afe2-07766721e2e9
Zhuang, Xiahai
c58e977b-e70e-4b37-9acd-b7f8070d98a8
Sanroma, Gerard
7204316c-a989-47fd-ab8b-4c1ac4c3804f
Li, Lei
2da88502-0bd8-4e6b-8f7d-0c01a48b399e
Xu, Lingchao
9001d1ba-d783-4f03-ae04-5c5099e1b037
Butakoff, Constantine
8ede626c-1f7f-4f69-9179-e6f8563c479d
Camara, Oscar
7e3f0a1d-63a2-4025-9520-0b97e0699d28
Young, Alistair
Rhode, Kawal
Zhao, Jichao
Li, Shuo
Mansi, Tommaso
Pop, Mihaela
McLeod, Kristin
Sermesant, Maxime

Nuñez-Garcia, Marta, Zhuang, Xiahai, Sanroma, Gerard, Li, Lei, Xu, Lingchao, Butakoff, Constantine and Camara, Oscar (2019) Left atrial segmentation combining multi-atlas whole heart labeling and shape-based atlas selection. Young, Alistair, Rhode, Kawal, Zhao, Jichao, Li, Shuo, Mansi, Tommaso, Pop, Mihaela, McLeod, Kristin and Sermesant, Maxime (eds.) In Statistical Atlases and Computational Models of the Heart. Atrial Segmentation and LV Quantification Challenges. STACOM 2018. vol. 11395 LNCS, Springer Cham. pp. 302-310 . (doi:10.1007/978-3-030-12029-0_33).

Record type: Conference or Workshop Item (Paper)

Abstract

Segmentation of the left atria (LA) from late gadolinium enhanced magnetic resonance imaging (LGE-MRI) is challenging since atrial borders are not easily distinguishable in the images. We propose a method based on multi-atlas whole heart segmentation and shape modeling of the LA. In the training phase we first construct whole heart LGE-MRI atlases and build a principal component analysis (PCA) model able to capture the high variability of the LA shapes. All atlases are clustered according to their LA shape using an unsupervised clustering method which additionally outputs the most representative case in each cluster. All cluster representatives are registered to the target image and ranked using conditional entropy. A small subset of the most similar representatives is used to find LA shapes with similar morphology in the training set that are used to obtain the final LA segmentation. We tested our approach using 80 LGE-MRI data for training and 20 LGE-MRI data for testing obtaining a Dice score of (Formula Presented).

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More information

e-pub ahead of print date: 14 February 2019
Venue - Dates: 9th International Workshop on Statistical Atlases and Computational Models of the Heart: Atrial Segmentation and LV Quantification Challenges, STACOM 2018, held in conjunction with Medical Image Computing and Computer-Assisted Intervention, MICCAI 2018, , Granada, Spain, 2018-09-16 - 2018-09-16
Keywords: Atlas selection, Left atrial segmentation, LGE-MRI segmentation, Multi-atlas segmentation

Identifiers

Local EPrints ID: 488796
URI: http://eprints.soton.ac.uk/id/eprint/488796
ISSN: 0302-9743
PURE UUID: a6f30a3b-d99c-43af-b0af-5a3da523d00f
ORCID for Lei Li: ORCID iD orcid.org/0000-0003-1281-6472

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Date deposited: 05 Apr 2024 16:43
Last modified: 06 Jun 2024 02:20

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Contributors

Author: Marta Nuñez-Garcia
Author: Xiahai Zhuang
Author: Gerard Sanroma
Author: Lei Li ORCID iD
Author: Lingchao Xu
Author: Constantine Butakoff
Author: Oscar Camara
Editor: Alistair Young
Editor: Kawal Rhode
Editor: Jichao Zhao
Editor: Shuo Li
Editor: Tommaso Mansi
Editor: Mihaela Pop
Editor: Kristin McLeod
Editor: Maxime Sermesant

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