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Atrial scar segmentation via potential learning in the graph-cut framework

Atrial scar segmentation via potential learning in the graph-cut framework
Atrial scar segmentation via potential learning in the graph-cut framework

Late Gadolinium Enhancement Magnetic Resonance Imaging (LGE MRI) emerges as a routine scan for patients with atrial fibrillation (AF). However, due to the low image quality automating the quantification and analysis of the atrial scars is challenging. In this study, we proposed a fully automated method based on the graph-cut framework, where the potential of the graph is learned on a surface mesh of the left atrium (LA), using an equidistant projection and a deep neural network (DNN). For validation, we employed 100 datasets with manual delineation. The results showed that the performance of the proposed method was improved and converged with respect to the increased size of training patches, which provide important features of the structural and texture information learned by the DNN. The segmentation could be further improved when the contribution from the t-link and n-link is balanced, thanks to the inter-relationship learned by the DNN for the graph-cut algorithm. Compared with the existing methods which mostly acquired an initialization from manual delineation of the LA or LA wall, our method is fully automated and has demonstrated great potentials in tackling this task. The accuracy of quantifying the LA scars using the proposed method was 0.822, and the Dice score was 0.566. The results are promising and the method can be useful in diagnosis and prognosis of AF.

0302-9743
152-160
Springer Cham
Li, Lei
2da88502-0bd8-4e6b-8f7d-0c01a48b399e
Yang, Guang
19f7479e-304e-40df-9504-bd3770ea3adf
Wu, Fuping
cee10409-dfca-4d75-9b28-ed5747aab173
Wong, Tom
d7ddec6a-c082-4ef2-b224-2c45a058b0fb
Mohiaddin, Raad
dd8235ec-41f2-4a54-bf22-16088df01765
Firmin, David
9f62653f-537b-48e4-a102-47a352c1479e
Keegan, Jenny
6a9e3a51-99f0-430e-8891-bc9fb971a3a5
Xu, Lingchao
9001d1ba-d783-4f03-ae04-5c5099e1b037
Zhuang, Xiahai
c58e977b-e70e-4b37-9acd-b7f8070d98a8
Mansi, Tommaso
McLeod, Kristin
Li, Shuo
Pop, Mihaela
Zhao, Jichao
Young, Alistair
Rhode, Kawal
Sermesant, Maxime
Li, Lei
2da88502-0bd8-4e6b-8f7d-0c01a48b399e
Yang, Guang
19f7479e-304e-40df-9504-bd3770ea3adf
Wu, Fuping
cee10409-dfca-4d75-9b28-ed5747aab173
Wong, Tom
d7ddec6a-c082-4ef2-b224-2c45a058b0fb
Mohiaddin, Raad
dd8235ec-41f2-4a54-bf22-16088df01765
Firmin, David
9f62653f-537b-48e4-a102-47a352c1479e
Keegan, Jenny
6a9e3a51-99f0-430e-8891-bc9fb971a3a5
Xu, Lingchao
9001d1ba-d783-4f03-ae04-5c5099e1b037
Zhuang, Xiahai
c58e977b-e70e-4b37-9acd-b7f8070d98a8
Mansi, Tommaso
McLeod, Kristin
Li, Shuo
Pop, Mihaela
Zhao, Jichao
Young, Alistair
Rhode, Kawal
Sermesant, Maxime

Li, Lei, Yang, Guang, Wu, Fuping, Wong, Tom, Mohiaddin, Raad, Firmin, David, Keegan, Jenny, Xu, Lingchao and Zhuang, Xiahai (2019) Atrial scar segmentation via potential learning in the graph-cut framework. Mansi, Tommaso, McLeod, Kristin, Li, Shuo, Pop, Mihaela, Zhao, Jichao, Young, Alistair, Rhode, Kawal 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. 152-160 . (doi:10.1007/978-3-030-12029-0_17).

Record type: Conference or Workshop Item (Paper)

Abstract

Late Gadolinium Enhancement Magnetic Resonance Imaging (LGE MRI) emerges as a routine scan for patients with atrial fibrillation (AF). However, due to the low image quality automating the quantification and analysis of the atrial scars is challenging. In this study, we proposed a fully automated method based on the graph-cut framework, where the potential of the graph is learned on a surface mesh of the left atrium (LA), using an equidistant projection and a deep neural network (DNN). For validation, we employed 100 datasets with manual delineation. The results showed that the performance of the proposed method was improved and converged with respect to the increased size of training patches, which provide important features of the structural and texture information learned by the DNN. The segmentation could be further improved when the contribution from the t-link and n-link is balanced, thanks to the inter-relationship learned by the DNN for the graph-cut algorithm. Compared with the existing methods which mostly acquired an initialization from manual delineation of the LA or LA wall, our method is fully automated and has demonstrated great potentials in tackling this task. The accuracy of quantifying the LA scars using the proposed method was 0.822, and the Dice score was 0.566. The results are promising and the method can be useful in diagnosis and prognosis of AF.

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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

Identifiers

Local EPrints ID: 488795
URI: http://eprints.soton.ac.uk/id/eprint/488795
ISSN: 0302-9743
PURE UUID: add13c89-acfe-4004-a199-3ea428528a5e
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: Lei Li ORCID iD
Author: Guang Yang
Author: Fuping Wu
Author: Tom Wong
Author: Raad Mohiaddin
Author: David Firmin
Author: Jenny Keegan
Author: Lingchao Xu
Author: Xiahai Zhuang
Editor: Tommaso Mansi
Editor: Kristin McLeod
Editor: Shuo Li
Editor: Mihaela Pop
Editor: Jichao Zhao
Editor: Alistair Young
Editor: Kawal Rhode
Editor: Maxime Sermesant

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