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Multi-Features-Based Automated Breast Tumor Diagnosis Using Ultrasound Image and Support Vector Machine
Author(s) -
Zhemin Zhuang,
Zengbiao Yang,
Shuxin Zhuang,
Alex Noel Joseph Raj,
Ye Yuan,
Ruban Nersisson
Publication year - 2021
Publication title -
computational intelligence and neuroscience
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.605
H-Index - 52
eISSN - 1687-5273
pISSN - 1687-5265
DOI - 10.1155/2021/9980326
Subject(s) - breast ultrasound , artificial intelligence , support vector machine , computer science , breast tumor , pattern recognition (psychology) , ultrasound , feature vector , feature (linguistics) , feature extraction , orientation (vector space) , contextual image classification , mammography , computer vision , breast cancer , image (mathematics) , radiology , medicine , mathematics , cancer , linguistics , philosophy , geometry
Breast ultrasound examination is a routine, fast, and safe method for clinical diagnosis of breast tumors. In this paper, a classification method based on multi-features and support vector machines was proposed for breast tumor diagnosis. Multi-features are composed of characteristic features and deep learning features of breast tumor images. Initially, an improved level set algorithm was used to segment the lesion in breast ultrasound images, which provided an accurate calculation of characteristic features, such as orientation, edge indistinctness, characteristics of posterior shadowing region, and shape complexity. Simultaneously, we used transfer learning to construct a pretrained model as a feature extractor to extract the deep learning features of breast ultrasound images. Finally, the multi-features were fused and fed to support vector machine for the further classification of breast ultrasound images. The proposed model, when tested on unknown samples, provided a classification accuracy of 92.5% for cancerous and noncancerous tumors.

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