Automated brain tumor segmentation on multi-modal MR image using SegNet

Abstract The potential of improving disease detection and treatment planning comes with accurate and fully automatic algorithms for brain tumor segmentation. Glioma, a type of brain tumor, can appear at different locations with different shapes and sizes. Manual segmentation of brain tumor regions i...

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Main Authors: Salma Alqazzaz, Xianfang Sun, Xin Yang, Len Nokes
Format: Article
Language:English
Published: SpringerOpen 2019-04-01
Series:Computational Visual Media
Subjects:
Online Access:http://link.springer.com/article/10.1007/s41095-019-0139-y
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spelling doaj-28f3d0eed48c4907afc3004de86d68922020-11-25T02:59:50ZengSpringerOpenComputational Visual Media2096-04332096-06622019-04-015220921910.1007/s41095-019-0139-yAutomated brain tumor segmentation on multi-modal MR image using SegNetSalma Alqazzaz0Xianfang Sun1Xin Yang2Len Nokes3School of Engineering, Cardiff UniversitySchool of Computer Science and Informatics, Cardiff UniversitySchool of Engineering, Cardiff UniversitySchool of Engineering, Cardiff UniversityAbstract The potential of improving disease detection and treatment planning comes with accurate and fully automatic algorithms for brain tumor segmentation. Glioma, a type of brain tumor, can appear at different locations with different shapes and sizes. Manual segmentation of brain tumor regions is not only time-consuming but also prone to human error, and its performance depends on pathologists’ experience. In this paper, we tackle this problem by applying a fully convolutional neural network SegNet to 3D data sets for four MRI modalities (Flair, T1, T1ce, and T2) for automated segmentation of brain tumor and subtumor parts, including necrosis, edema, and enhancing tumor. To further improve tumor segmentation, the four separately trained SegNet models are integrated by post-processing to produce four maximum feature maps by fusing the machine-learned feature maps from the fully convolutional layers of each trained model. The maximum feature maps and the pixel intensity values of the original MRI modalities are combined to encode interesting information into a feature representation. Taking the combined feature as input, a decision tree (DT) is used to classify the MRI voxels into different tumor parts and healthy brain tissue. Evaluating the proposed algorithm on the dataset provided by the Brain Tumor Segmentation 2017 (BraTS 2017) challenge, we achieved F-measure scores of 0.85, 0.81, and 0.79 for whole tumor, tumor core, and enhancing tumor, respectively. Experimental results demonstrate that using SegNet models with 3D MRI datasets and integrating the four maximum feature maps with pixel intensity values of the original MRI modalities has potential to perform well on brain tumor segmentation.http://link.springer.com/article/10.1007/s41095-019-0139-ybrain tumor segmentationmulti-modal MRIconvolutional neural networksfully convolutional networksdecision tree
collection DOAJ
language English
format Article
sources DOAJ
author Salma Alqazzaz
Xianfang Sun
Xin Yang
Len Nokes
spellingShingle Salma Alqazzaz
Xianfang Sun
Xin Yang
Len Nokes
Automated brain tumor segmentation on multi-modal MR image using SegNet
Computational Visual Media
brain tumor segmentation
multi-modal MRI
convolutional neural networks
fully convolutional networks
decision tree
author_facet Salma Alqazzaz
Xianfang Sun
Xin Yang
Len Nokes
author_sort Salma Alqazzaz
title Automated brain tumor segmentation on multi-modal MR image using SegNet
title_short Automated brain tumor segmentation on multi-modal MR image using SegNet
title_full Automated brain tumor segmentation on multi-modal MR image using SegNet
title_fullStr Automated brain tumor segmentation on multi-modal MR image using SegNet
title_full_unstemmed Automated brain tumor segmentation on multi-modal MR image using SegNet
title_sort automated brain tumor segmentation on multi-modal mr image using segnet
publisher SpringerOpen
series Computational Visual Media
issn 2096-0433
2096-0662
publishDate 2019-04-01
description Abstract The potential of improving disease detection and treatment planning comes with accurate and fully automatic algorithms for brain tumor segmentation. Glioma, a type of brain tumor, can appear at different locations with different shapes and sizes. Manual segmentation of brain tumor regions is not only time-consuming but also prone to human error, and its performance depends on pathologists’ experience. In this paper, we tackle this problem by applying a fully convolutional neural network SegNet to 3D data sets for four MRI modalities (Flair, T1, T1ce, and T2) for automated segmentation of brain tumor and subtumor parts, including necrosis, edema, and enhancing tumor. To further improve tumor segmentation, the four separately trained SegNet models are integrated by post-processing to produce four maximum feature maps by fusing the machine-learned feature maps from the fully convolutional layers of each trained model. The maximum feature maps and the pixel intensity values of the original MRI modalities are combined to encode interesting information into a feature representation. Taking the combined feature as input, a decision tree (DT) is used to classify the MRI voxels into different tumor parts and healthy brain tissue. Evaluating the proposed algorithm on the dataset provided by the Brain Tumor Segmentation 2017 (BraTS 2017) challenge, we achieved F-measure scores of 0.85, 0.81, and 0.79 for whole tumor, tumor core, and enhancing tumor, respectively. Experimental results demonstrate that using SegNet models with 3D MRI datasets and integrating the four maximum feature maps with pixel intensity values of the original MRI modalities has potential to perform well on brain tumor segmentation.
topic brain tumor segmentation
multi-modal MRI
convolutional neural networks
fully convolutional networks
decision tree
url http://link.springer.com/article/10.1007/s41095-019-0139-y
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AT xianfangsun automatedbraintumorsegmentationonmultimodalmrimageusingsegnet
AT xinyang automatedbraintumorsegmentationonmultimodalmrimageusingsegnet
AT lennokes automatedbraintumorsegmentationonmultimodalmrimageusingsegnet
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