Irving, B.* ; Franklin, J.M.* ; Papiez, B.W.* ; Anderson, E.M.* ; Sharma, R.A.* ; Gleeson, F.V.* ; Brady, S.M.* ; Schnabel, J.A.*
Pieces-of-parts for supervoxel segmentation with global context: Application to DCE-MRI tumour delineation.
Med. Image Anal. 32, 69-83 (2016)
DOI
PMC
Open Access Green as soon as Postprint is submitted to ZB.
Rectal tumour segmentation in dynamic contrast-enhanced MRI (DCE-MRI) is a challenging task, and an automated and consistent method would be highly desirable to improve the modelling and prediction of patient outcomes from tissue contrast enhancement characteristics - particularly in routine clinical practice. A framework is developed to automate DCE-MRI tumour segmentation, by introducing: perfusion-supervoxels to over-segment and classify DCE-MRI volumes using the dynamic contrast enhancement characteristics; and the pieces-of-parts graphical model, which adds global (anatomic) constraints that further refine the supervoxel components that comprise the tumour. The framework was evaluated on 23 DCE-MRI scans of patients with rectal adenocarcinomas, and achieved a voxelwise area-under the receiver operating characteristic curve (AUC) of 0.97 compared to expert delineations. Creating a binary tumour segmentation, 21 of the 23 cases were segmented correctly with a median Dice similarity coefficient (DSC) of 0.63, which is close to the inter-rater variability of this challenging task. A second study is also included to demonstrate the method's generalisability and achieved a DSC of 0.71. The framework achieves promising results for the underexplored area of rectal tumour segmentation in DCE-MRI, and the methods have potential to be applied to other DCE-MRI and supervoxel segmentation problems.
Impact Factor
Scopus SNIP
Web of Science
Times Cited
Scopus
Cited By
Altmetric
Publication type
Article: Journal article
Document type
Scientific Article
Thesis type
Editors
Keywords
Classification ; Dce-mri ; Parts-based Graphical Models ; Rectal Tumour ; Segmentation ; Supervoxel
Keywords plus
Language
english
Publication Year
2016
Prepublished in Year
HGF-reported in Year
2016
ISSN (print) / ISBN
1361-8415
e-ISSN
1361-8415
ISBN
Book Volume Title
Conference Title
Conference Date
Conference Location
Proceedings Title
Quellenangaben
Volume: 32,
Issue: ,
Pages: 69-83
Article Number: ,
Supplement: ,
Series
Publisher
Elsevier
Publishing Place
Day of Oral Examination
0000-00-00
Advisor
Referee
Examiner
Topic
University
University place
Faculty
Publication date
0000-00-00
Application date
0000-00-00
Patent owner
Further owners
Application country
Patent priority
Reviewing status
Peer reviewed
Institute(s)
Institute for Machine Learning in Biomed Imaging (IML)
POF-Topic(s)
30205 - Bioengineering and Digital Health
Research field(s)
Enabling and Novel Technologies
PSP Element(s)
G-507100-001
Grants
Copyright
Erfassungsdatum
2022-09-06