An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images

Detecting brain tumours is challenging due to the complex brain anatomy and wide range of tumour sizes, shapes, and locations. A crucial stage in diagnosing and treating brain tumours is automatically segmenting the tumour area from brain MRI. It involves the precise delineation of tumour boundaries...

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Main Authors: Najme Zehra Naqvi, K. R. Seeja
Format: Article
Language:English
Published: IEEE 2025-01-01
Series:IEEE Access
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Online Access:https://ieeexplore.ieee.org/document/10838527/
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author Najme Zehra Naqvi
K. R. Seeja
author_facet Najme Zehra Naqvi
K. R. Seeja
author_sort Najme Zehra Naqvi
collection DOAJ
description Detecting brain tumours is challenging due to the complex brain anatomy and wide range of tumour sizes, shapes, and locations. A crucial stage in diagnosing and treating brain tumours is automatically segmenting the tumour area from brain MRI. It involves the precise delineation of tumour boundaries within MRI scans, which helps to understand the tumour’s extent, monitor its growth, plan treatment strategies, and assess treatment response over time. Hence, this research proposes a novel automated deep-learning approach based on U-Net for segmenting Glioma tumours. The basic U-Net model is enhanced with several components to improve its performance in the proposed model. The U-Net’s encoder has an improved MCA (Multi-scale Context Attention) module designed to extract and collect rich spatial contextual information from the input image. The proposed U-Net’s decoder uses a Squeeze and Excitation module and residual blocks. The residual blocks help reduce network degradation and gradient disappearance, enabling the model to retain important information during decoding. The Squeeze and Excitation module allows the model to retrieve high-level semantic properties and a high level of spatial context, which have been collected from the encoder module and IMCA-Block. The performance of proposed model is evaluated on two datasets BraTS 2020 and BraTS 2018. The experiments on both datasets demonstrate that the proposed framework enhances multi-modal MRI brain tumour segmentation performance on all metrics evaluated. For BraTS 2020 it achieved Dice Coefficient of 0.9978, 0.9378 and 0.9478 for WT (Whole tumour), TC (Tumour core), and ET (Enhancing Tumour) respectively and for BraTS 2018 it achieved Dice Coefficient 98.32, 93.32 and 92.32 for WT (Whole tumour), TC (Tumour core), and ET (Enhancing Tumour) respectively.
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spelling doaj-art-bc4f33c906ac4f5fb395649757800ae92025-01-24T00:01:33ZengIEEEIEEE Access2169-35362025-01-0113102401025110.1109/ACCESS.2025.352865410838527An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain ImagesNajme Zehra Naqvi0https://orcid.org/0000-0002-2312-0342K. R. Seeja1https://orcid.org/0000-0001-6618-6758Department of Computer Science and Engineering, Indira Gandhi Delhi Technical University for Women, New Delhi, IndiaDepartment of Computer Science and Engineering, Indira Gandhi Delhi Technical University for Women, New Delhi, IndiaDetecting brain tumours is challenging due to the complex brain anatomy and wide range of tumour sizes, shapes, and locations. A crucial stage in diagnosing and treating brain tumours is automatically segmenting the tumour area from brain MRI. It involves the precise delineation of tumour boundaries within MRI scans, which helps to understand the tumour’s extent, monitor its growth, plan treatment strategies, and assess treatment response over time. Hence, this research proposes a novel automated deep-learning approach based on U-Net for segmenting Glioma tumours. The basic U-Net model is enhanced with several components to improve its performance in the proposed model. The U-Net’s encoder has an improved MCA (Multi-scale Context Attention) module designed to extract and collect rich spatial contextual information from the input image. The proposed U-Net’s decoder uses a Squeeze and Excitation module and residual blocks. The residual blocks help reduce network degradation and gradient disappearance, enabling the model to retain important information during decoding. The Squeeze and Excitation module allows the model to retrieve high-level semantic properties and a high level of spatial context, which have been collected from the encoder module and IMCA-Block. The performance of proposed model is evaluated on two datasets BraTS 2020 and BraTS 2018. The experiments on both datasets demonstrate that the proposed framework enhances multi-modal MRI brain tumour segmentation performance on all metrics evaluated. For BraTS 2020 it achieved Dice Coefficient of 0.9978, 0.9378 and 0.9478 for WT (Whole tumour), TC (Tumour core), and ET (Enhancing Tumour) respectively and for BraTS 2018 it achieved Dice Coefficient 98.32, 93.32 and 92.32 for WT (Whole tumour), TC (Tumour core), and ET (Enhancing Tumour) respectively.https://ieeexplore.ieee.org/document/10838527/MRI imagesbrain tumourU-Netsegmentationattention modules
spellingShingle Najme Zehra Naqvi
K. R. Seeja
An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images
IEEE Access
MRI images
brain tumour
U-Net
segmentation
attention modules
title An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images
title_full An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images
title_fullStr An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images
title_full_unstemmed An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images
title_short An Attention-Based Residual U-Net for Tumour Segmentation Using Multi-Modal MRI Brain Images
title_sort attention based residual u net for tumour segmentation using multi modal mri brain images
topic MRI images
brain tumour
U-Net
segmentation
attention modules
url https://ieeexplore.ieee.org/document/10838527/
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AT krseeja anattentionbasedresidualunetfortumoursegmentationusingmultimodalmribrainimages
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