2018
DOI: 10.1016/j.cmpb.2018.01.003
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Supervised learning based multimodal MRI brain tumour segmentation using texture features from supervoxels

Abstract: The method demonstrates promising results in the segmentation of brain tumour. Adding features from multimodal MRI images can largely increase the segmentation accuracy. The method provides a close match to expert delineation across all tumour grades, leading to a faster and more reproducible method of brain tumour detection and delineation to aid patient management.

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Cited by 178 publications
(89 citation statements)
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References 32 publications
(62 reference statements)
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“…Finally, the challenges of the existing methods lay a platform for proposing an automatic method. A segmentation method, 3D supervoxel-based learning, was developed by Soltaninejad et al, 29 which resulted in the errors in the case of the complex structures. However, the method required to bias the ground truth labels systematically.…”
Section: Review Of the Literaturementioning
confidence: 99%
See 1 more Smart Citation
“…Finally, the challenges of the existing methods lay a platform for proposing an automatic method. A segmentation method, 3D supervoxel-based learning, was developed by Soltaninejad et al, 29 which resulted in the errors in the case of the complex structures. However, the method required to bias the ground truth labels systematically.…”
Section: Review Of the Literaturementioning
confidence: 99%
“…Additionally, DCNN for segmentation was applied by Hussain et al 28 , which rendered poor performance in the whole tumor region. A segmentation method, 3D supervoxel-based learning, was developed by Soltaninejad et al, 29 which resulted in the errors in the case of the complex structures. On the other hand, a 3D CNN-based model was used for segmentation by Chen et al, 30 which was computationally expensive.…”
Section: Review Of the Literaturementioning
confidence: 99%
“…Recently, several techniques have been introduced for features extraction, fusion, selection, and classification such as a combination of K‐Means and Neural Network (Sharma, Purohit, & Mukherjee, ), texture features (Soltaninejad et al, ), genetic algorithm (Szenkovits et al, ), particle swarm optimization (Lahmiri, ), LBP and histogram features (Abbasi & Tajeripour, ), and few more as in (Jamal, Hazim Alkawaz, Rehman, & Saba, ; Khan et al, , ; Sharif, Khan, Faisal, Yasmin, & Fernandes, ; Vidyarthi & Mittal, ). However, still, it is an open research problem and yet improvement is required in accuracy for early detection of brain tumor which can help early medication for its cure.…”
Section: Introductionmentioning
confidence: 99%
“…Brain tumor segmentation of MR images received much attention over the last decade, especially for treatment planning and follow-up. A range of MR image sequences were used as input to segmentation procedure: single MR image sequence with [22] and without [23] contrast agent, or multi-sequence MR images with [24][25][26][27] or without contrast [24,28].…”
Section: Introductionmentioning
confidence: 99%