An efficient and automatic glioblastoma brain tumor detection using shift‐invariant shearlet transform and neural networks |
| |
Authors: | Murugan Arunachalam Sabeenian Royappan Savarimuthu |
| |
Affiliation: | 1. Department of Electronics and Communication Engineering, Excel College of Engineering and Technology, Namakkal, India;2. Department of Electronics and Communication Engineering, Sona College of Technology, Salem, India |
| |
Abstract: | The detection and segmentation of tumor region in brain image is a critical task due to the similarity between abnormal and normal region. In this article, a computer‐aided automatic detection and segmentation of brain tumor is proposed. The proposed system consists of enhancement, transformation, feature extraction, and classification. The shift‐invariant shearlet transform (SIST) is used to enhance the brain image. Further, nonsubsampled contourlet transform (NSCT) is used as multiresolution transform which transforms the spatial domain enhanced image into multiresolution image. The texture features from grey level co‐occurrence matrix (GLCM), Gabor, and discrete wavelet transform (DWT) are extracted with the approximate subband of the NSCT transformed image. These extracted features are trained and classified into either normal or glioblastoma brain image using feed forward back propagation neural networks. Further, K‐means clustering algorithm is used to segment the tumor region in classified glioblastoma brain image. The proposed method achieves 89.7% of sensitivity, 99.9% of specificity, and 99.8% of accuracy. |
| |
Keywords: | brain image NSCT multiresolution SIST enhancement texture features classification |
|
|