A 3D Network Based Shape Prior for Automatic Myocardial Disease Segmentation in Delayed-Enhancement MRI

Affiliation auteurs!!!! Error affiliation !!!!
TitreA 3D Network Based Shape Prior for Automatic Myocardial Disease Segmentation in Delayed-Enhancement MRI
Type de publicationJournal Article
Year of Publication2021
AuteursBrahim K., Qayyum A., Lalande A., Boucher A., Sakly A., Meriaudeau F.
JournalIRBM
Volume42
Pagination424-434
Date PublishedDEC
Type of ArticleArticle
ISSN1959-0318
Mots-clésLGE-MRI, Microvascular-obstructed regions, Myocardial infarction segmentation
Résumé

Objectives: In this work, a new deep learning model for relevant myocardial infarction segmentation from Late Gadolinium Enhancement (LGE)-MRI is proposed. Moreover, our novel segmentation method aims to detect microvascular-obstructed regions accurately. Material and methods: We first segment the anatomical structures, i.e., the left ventricular cavity and the myocardium, to achieve a preliminary segmentation. Then, a shape prior based framework that fuses the 3D U-Net architecture with 3D Autoencoder segmentation framework to constrain the segmentation process of pathological tissues is applied. Results: The proposed network reached outstanding myocardial segmentation compared with the human-level performance with the average Dice score of `0.9507' for myocardium, `0.7656' for scar, and `0.8377' for MVO on the validation set consisting of 16 DE-MRI volumes selected from the training EMIDEC dataset. Conclusion: It is concluded that our approach's extensive validation and comprehensive comparison against existing state-of-the-art deep learning models on three annotated datasets, including healthy and diseased exams, make this proposal a reliable tool to enhance MI diagnosis. (C) 2021 AGBM. Published by Elsevier Masson SAS. All rights reserved.

DOI10.1016/j.irbm.2021.02.005