Title of article :
Multimodal MRI Brain Tumor Image Segmentation Using Sparse Subspace Clustering Algorithm
Author/Authors :
Liu, Li School of IoT Engineering - Jiangsu Vocational College of Information Technology - Wuxi, China , Kuang, Liang School of IoT Engineering - Jiangsu Vocational College of Information Technology - Wuxi, China , Ji, Yunfeng School of IoT Engineering - Jiangsu Vocational College of Information Technology - Wuxi, China
Abstract :
Brain tumors are one of the most deadly diseases with a high mortality rate. The shape and size of the tumor are random during the
growth process. Brain tumor segmentation is a brain tumor assisted diagnosis technology that separates different brain tumor
structures such as edema and active and tumor necrosis tissues from normal brain tissue. Magnetic resonance imaging (MRI)
technology has the advantages of no radiation impact on the human body, good imaging effect on structural tissues, and an
ability to realize tomographic imaging of any orientation. Therefore, doctors often use MRI brain tumor images to analyze and
process brain tumors. In these images, the tumor structure is only characterized by grayscale changes, and the developed images
obtained by different equipment and different conditions may also be different. This makes it difficult for traditional image
segmentation methods to deal well with the segmentation of brain tumor images. Considering that the traditional single-mode
MRI brain tumor images contain incomplete brain tumor information, it is difficult to segment the single-mode brain tumor
images to meet clinical needs. In this paper, a sparse subspace clustering (SSC) algorithm is introduced to process the diagnosis
of multimodal MRI brain tumor images. In the absence of added noise, the proposed algorithm has better advantages than
traditional methods. Compared with the top 15 in the Brats 2015 competition, the accuracy is not much different, being
basically stable between 10 and 15. In order to verify the noise resistance of the proposed algorithm, this paper adds 5%, 10%,
15%, and 20% Gaussian noise to the test image. Experimental results show that the proposed algorithm has better noise
immunity than a comparable algorithm.
Keywords :
MRI , Algorithm , Clustering , SSC
Journal title :
Computational and Mathematical Methods in Medicine