Author:
Salman Al-Shaikhli Saif Dawood,Yang Michael Ying,Rosenhahn Bodo
Abstract
AbstractThis paper presents a novel fully automatic framework for multi-class brain tumor classification and segmentation using a sparse coding and dictionary learning method. The proposed framework consists of two steps: classification and segmentation. The classification of the brain tumors is based on brain topology and texture. The segmentation is based on voxel values of the image data. Using K-SVD, two types of dictionaries are learned from the training data and their associated ground truth segmentation: feature dictionary and voxel-wise coupled dictionaries. The feature dictionary consists of global image features (topological and texture features). The coupled dictionaries consist of coupled information: gray scale voxel values of the training image data and their associated label voxel values of the ground truth segmentation of the training data. For quantitative evaluation, the proposed framework is evaluated using different metrics. The segmentation results of the brain tumor segmentation (MICCAI-BraTS-2013) database are evaluated using five different metric scores, which are computed using the online evaluation tool provided by the BraTS-2013 challenge organizers. Experimental results demonstrate that the proposed approach achieves an accurate brain tumor classification and segmentation and outperforms the state-of-the-art methods.
Reference88 articles.
1. Comparison of sparse coding and kernel methods for histopathological classification of glioblastoma multiforme;ISBI,2011
2. State of the art survey on MRI brain tumor segmentation;Magn Reson Imaging,2013
3. Glioma dynamics and computational models: a review of segmentation, registration, and in silico growth algorithms and their clinical applications;Curr Medl Imaging Rev,2007
4. K-SVD: an algorithm for designing overcomplete dictionaries for sparse representation;IEEE T Signal Proces,2006
5. Fully automatic segmentation of brain tumor images using support vector machine classification in combination with hierarchical conditional random field regularization;MICCAI,2011
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