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Classification of Prostate Cancerous Tissues by Support Vector Machine Algorithm With Different Kernels From T2-Weighted Magnetic Resonance Images Publisher



Azizian M1 ; Etehadtavakol M1 ; Khanbabapour S2 ; Baradaran A3 ; Baradaran M1 ; Shanei A1
Authors
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Authors Affiliations
  1. 1. Department of Medical Physics, School of Medicine, Isfahan University of Medical Sciences, Isfahan, Iran
  2. 2. Department of Radiology, Asgariyeh Hospital, Isfahan, Iran
  3. 3. Department of Pathology, School of Medicine, Isfahan University of Medical Sciences, Isfahan, Iran

Source: Journal of Isfahan Medical School Published:2021


Abstract

Background: Prostate cancer is one of the most prevalent cancer types in Iran and worldwide. Prostate cancer imaging had been promoted using magnetic resonance imaging (MRI). The aim of present study was to estimate prostate tumors volume by a computerized approach. Methods: By using a Matlab command, the regions of interest were precisely identified. The Haralick features were applied. In addition, using the principal component analysis algorithm, five important features were selected among 17 features. Then, a support vector machine classifier was applied to classify cancerous and normal tissues. To increase the accuracy of the machine vector classifier, the proposed solutions were applied: 1) a new feature was introduced and extracted, 2) all features were normalized, 3) to optimize mutual validation, k-fold changed from 5 to 10. In addition, the support vector machine classifier was implemented by using the Gaussian kernel, radial basis function, and linear kernel. If the tumor was identified in more than one slice, all identified regions of interest (ROIs) in different slices were considered in the feature extractions and tumor volume estimation processes. Findings: Among the Haralick features, contrast, correlation, homogeneity, energy, and entropy were the most powerful features in this study that confirmed the findings of previous studies. The sensitivity of the classifier was obtained 0.9180 using Gaussian kernel, while with radial basis function and linear kernels obtained 0.7097 and 0.8571, respectively. In addition, the specificity of Gaussian, radial basis function, and linear kernels were obtained 0.6500, 0.8305, and 0.7069, respectively. The accuracy with Gaussian and linear kernels was obtained 0.7851 which was greater than with the radial basis function. The feature extraction of the regions of interest, feature reduction, and classification steps took less than one minute which indicated the proposed algorithm was fast. It was also repeatable. Conclusion: The proposed computerized estimation of prostate tumors volume can increase the accuracy of the diagnosis. It is quick and simply repeatable. © 2021 Isfahan University of Medical Sciences(IUMS). All rights reserved.
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