Title of article :
A Benign and Malignant Breast Tumor Classification Method via Efficiently Combining Texture and Morphological Features on Ultrasound Images
Author/Authors :
Wei, Mengwan Huaqiao University - Quanzhou, China , Du, Yongzhao Huaqiao University - Quanzhou, China , Wu, Xiuming Fujian Medical University - Quanzhou, China , Su, Qichen Department of Medical Ultrasonics - The Second Affiliated Hospital of Fujian Medical University - Quanzhou, China , Zhu, Jianqing Huaqiao University - Quanzhou, China , Zheng, Lixin Huaqiao University - Quanzhou, China , Lv, Guorong Department of Medical Ultrasonics - The Second Affiliated Hospital of Fujian Medical University - Quanzhou, China , Zhuang, Jiafu Quanzhou Institute of Equipment Manufacturing - Haixi Institutes - Chinese Academy of Sciences - Quanzhou, China
Pages :
11
From page :
1
To page :
11
Abstract :
The classification of benign and malignant based on ultrasound images is of great value because breast cancer is an enormous threat to women’s health worldwide. Although both texture and morphological features are crucial representations of ultrasound breast tumor images, their straightforward combination brings little effect for improving the classification of benign and malignant since high-dimensional texture features are too aggressive so that drown out the effect of low-dimensional morphological features. For that, an efficient texture and morphological feature combing method is proposed to improve the classification of benign and malignant. Firstly, both texture (i.e., local binary patterns (LBP), histogram of oriented gradients (HOG), and gray-level cooccurrence matrixes (GLCM)) and morphological (i.e., shape complexities) features of breast ultrasound images are extracted. Secondly, a support vector machine (SVM) classifier working on texture features is trained, and a naive Bayes (NB) classifier acting on morphological features is designed, in order to exert the discriminative power of texture features and morphological features, respectively. Thirdly, the classification scores of the two classifiers (i.e., SVM and NB) are weighted fused to obtain the final classification result. The low-dimensional nonparameterized NB classifier is effectively control the parameter complexity of the entire classification system combine with the high-dimensional parametric SVM classifier. Consequently, texture and morphological features are efficiently combined. Comprehensive experimental analyses are presented, and the proposed method obtains a 91.11% accuracy, a 94.34% sensitivity, and an 86.49% specificity, which outperforms many related benign and malignant breast tumor classification methods.
Keywords :
Tumor , Morphological , Ultrasound , GLCM
Journal title :
Computational and Mathematical Methods in Medicine
Serial Year :
2020
Full Text URL :
Record number :
2613088
Link To Document :
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