1. A Noninvasive System for the Automatic Detection of Gliomas Based on Hybrid Features and PSO-KSVM
- Author
-
Xingang Zhao, Yunhui Liu, Peng Li, Guoli Song, Zheng Huang, Yiwen Zhao, Min Bao, and Jianda Han
- Subjects
Normalization (statistics) ,General Computer Science ,Computer science ,Local binary patterns ,Normalization (image processing) ,PSO-KSVM ,02 engineering and technology ,030218 nuclear medicine & medical imaging ,03 medical and health sciences ,0302 clinical medicine ,Histogram ,Glioma ,Pyramid ,0202 electrical engineering, electronic engineering, information engineering ,medicine ,General Materials Science ,Brain magnetic resonance imaging ,Pyramid (image processing) ,hybrid features ,Histogram equalization ,business.industry ,General Engineering ,Glioma detection ,Pattern recognition ,medicine.disease ,Support vector machine ,Kernel (image processing) ,skull removal ,Principal component analysis ,020201 artificial intelligence & image processing ,Anomaly detection ,Modified CLBP ,lcsh:Electrical engineering. Electronics. Nuclear engineering ,Artificial intelligence ,business ,lcsh:TK1-9971 - Abstract
Due to their location, malignant brain tumors are one of humanity's greatest killers, among these tumors, gliomas are the most common. The early detection of gliomas can contribute to the design of proper treatment schemes and, thus, improve the survival rate of patients. However, it is a challenging task to detect the gliomas within the complex structure of the brain. The conventional artificial diagnosis is time-consuming and relies on the clinical experience of radiologists. To detect gliomas more efficiently, this paper proposes a noninvasive automatic diagnosis system for gliomas based on the machine learning methods. First, image standardization, including size normalization and background removal, is applied to produce standard images; then, the modified dynamic histogram equalization is implemented to enhance the low-contrast standard brain images, and skull removal based on outlier detection is presented. Furthermore, hybrid features, including gray-level co-occurrence matrix, pyramid histogram of the oriented gradient, modified completed local binary pattern, and intensity-based features are extracted together from the enhanced images, and their dimensions are reduced by principal component analysis. Kernel support vector machine (KSVM) combined with the particle swarm optimization is eventually adopted to train classifiers; in this paper, brain magnetic resonance imaging images are labeled with normal, glioma, and other. The experimental results show that the accuracy, sensitivity, and specificity of the proposed method can reach 98.36%, 99.17%, and 97.83%, respectively, which indicates that the proposed method performs better than many current systems.
- Published
- 2019
- Full Text
- View/download PDF