Affiliation:
1. Electrical and Instrumentation Engineering Department, Thapar University, Patiala, India
Abstract
Early detection of medical renal disease is important as the same may lead to chronic kidney disease which is an irreversible stage. The present work proposes an efficient decision support system for detection of medical renal disease using small feature space consisting of only second order GLCM statistical features computed from raw renal ultrasound images. The GLCM mean feature vector and GLCM range feature vector are computed for inter-pixel distance d varying from 1 to 10. These texture feature vectors are combined in various ways yielding GLCM ratio feature vector, GLCM additive feature vector and GLCM concatenated feature vector. The present work explores the potential of five texture feature vectors computed using GLCM statistics exhaustively for differential diagnosis between normal and MRD images using SVM classifier. The result of the study indicates that GLCM range feature vector computed with d = 1 yields the highest overall classification accuracy of 85.7% with individual classification accuracy values of 93.3% and 77.9% for normal and MRD classes respectively.
Reference57 articles.
1. A comparative approach of four different image registration techniques for quantitative assessment of coronary artery calcium lesions using intravascular ultrasound
2. Araki, T., Ikeda, N., Molinari, F., Dey, N., Acharjee, S., Saba, L., & Suri, J. S. (2014). Link between automated coronary calcium volumes from intravascular ultrasound to automated carotid IMT from B-mode ultrasound in coronary artery disease population. International angiology: a journal of the International Union of Angiology, 33(4), 392-403.
3. Representation learning for mammography mass lesion classification with convolutional neural networks
4. In vitro measurement of kidney size: comparison of ultrasonography and MRI
5. Automatic Classification of Focal Lesions in Ultrasound Liver Images using Principal Component Analysis and Neural Networks
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