HI-Net: Hyperdense Inception 3D UNet for Brain Tumor Segmentation

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dc.contributor.author Qamar, Saqib
dc.contributor.author Ahmad, Parvez
dc.contributor.author Shen, Linlin
dc.contributor.editor Crimi, A
dc.contributor.editor Bakas, S
dc.coverage.spatial ELECTR NETWORK
dc.date.accessioned 2024-06-05T00:18:15Z
dc.date.available 2024-06-05T00:18:15Z
dc.date.issued 2021
dc.identifier.citation (2021). Lecture Notes in Computer Science, 12659, 50-57.
dc.identifier.isbn 9783030720865
dc.identifier.issn 1611-3349
dc.identifier.uri https://hdl.handle.net/2292/68555
dc.description.abstract The brain tumor segmentation task aims to classify tissue into the whole tumor (WT), tumor core (TC) and enhancing tumor (ET) classes using multimodel MRI images. Quantitative analysis of brain tumors is critical for clinical decision making. While manual segmentation is tedious, time-consuming, and subjective, this task is at the same time very challenging to automatic segmentation methods. Thanks to the powerful learning ability, convolutional neural networks (CNNs), mainly fully convolutional networks, have shown promising brain tumor segmentation. This paper further boosts the performance of brain tumor segmentation by proposing hyperdense inception 3D UNet (HI-Net), which captures multi-scale information by stacking factorization of 3D weighted convolutional layers in the residual inception block. We use hyper dense connections among factorized convolutional layers to extract more contexual information, with the help of features reusability. We use a dice loss function to cope with class imbalances. We validate the proposed architecture on the multi-modal brain tumor segmentation challenges (BRATS) 2020 testing dataset. Preliminary results on the BRATS 2020 testing set show that achieved by our proposed approach, the dice (DSC) scores of ET, WT, and TC are 0.79457, 0.87494, and 0.83712, respectively.
dc.publisher Springer Nature
dc.relation.ispartof 6th International MICCAI Brain-Lesion Workshop (BrainLes)
dc.relation.ispartofseries BRAINLESION: GLIOMA, MULTIPLE SCLEROSIS, STROKE AND TRAUMATIC BRAIN INJURIES (BRAINLES 2020), PT II
dc.rights Items in ResearchSpace are protected by copyright, with all rights reserved, unless otherwise indicated. Previously published items are made available in accordance with the copyright policy of the publisher.
dc.rights.uri https://researchspace.auckland.ac.nz/docs/uoa-docs/rights.htm
dc.subject 46 Information and Computing Sciences
dc.subject 4611 Machine Learning
dc.subject Brain Disorders
dc.subject Cancer
dc.subject Networking and Information Technology R&D (NITRD)
dc.subject Neurosciences
dc.subject Neurological
dc.subject Science & Technology
dc.subject Technology
dc.subject Life Sciences & Biomedicine
dc.subject Computer Science, Artificial Intelligence
dc.subject Computer Science, Interdisciplinary Applications
dc.subject Radiology, Nuclear Medicine & Medical Imaging
dc.subject Computer Science
dc.subject Brain tumor
dc.subject 3D UNet
dc.subject Dense connections
dc.subject Factorized convolutional
dc.subject Deep learning
dc.title HI-Net: Hyperdense Inception 3D UNet for Brain Tumor Segmentation
dc.type Conference Item
dc.identifier.doi 10.1007/978-3-030-72087-2_5
pubs.begin-page 50
pubs.volume 12659
dc.date.updated 2024-05-31T06:33:02Z
dc.rights.holder Copyright: Springer Nature Switzerland AG en
pubs.end-page 57
pubs.publication-status Published
pubs.start-date 2020-10-04
dc.rights.accessrights http://purl.org/eprint/accessRights/RetrictedAccess en
pubs.elements-id 1029144
pubs.org-id Bioengineering Institute
dc.identifier.eissn 1611-3349
pubs.record-created-at-source-date 2024-05-31
pubs.online-publication-date 2021-03-26


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