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Breast tumor classification in ultrasound images using support vector machines and neural networks
Nascimento, Carmina Dessana Lima; Silva, Sérgio Deodoro de Souza; Silva, Thales Araújo da; Pereira, Wagner Coelho de Albuquerque; Costa, Marly Guimarães Fernandes; Costa Filho, Cicero Ferreira Fernandes.
  • Nascimento, Carmina Dessana Lima; Universidade Federal do Amazonas. Centro de Tecnologia Eletrônica e da Informação. Manaus. BR
  • Silva, Sérgio Deodoro de Souza; Universidade Federal do Amazonas. Centro de Tecnologia Eletrônica e da Informação. Manaus. BR
  • Silva, Thales Araújo da; Universidade Federal do Amazonas. Centro de Tecnologia Eletrônica e da Informação. Manaus. BR
  • Pereira, Wagner Coelho de Albuquerque; Universidade Federal do Amazonas. Centro de Tecnologia Eletrônica e da Informação. Manaus. BR
  • Costa, Marly Guimarães Fernandes; Universidade Federal do Amazonas. Centro de Tecnologia Eletrônica e da Informação. Manaus. BR
  • Costa Filho, Cicero Ferreira Fernandes; Universidade Federal do Amazonas. Centro de Tecnologia Eletrônica e da Informação. Manaus. BR
Res. Biomed. Eng. (Online) ; 32(3): 283-292, July-Sept. 2016. tab, graf
Article in English | LILACS | ID: biblio-829488
ABSTRACT
Abstract Introduction The use of tools for computer-aided diagnosis (CAD) has been proposed for detection and classification of breast cancer. Concerning breast cancer image diagnosing with ultrasound, some results found in literature show that morphological features perform better than texture features for lesions differentiation, and indicate that a reduced set of features performs better than a larger one. Methods This study evaluated the performance of support vector machines (SVM) with different kernels combinations, and neural networks with different stop criteria, for classifying breast cancer nodules. Twenty-two morphological features from the contour of 100 BUS images were used as input for classifiers and then a scalar feature selection technique with correlation was used to reduce the features dataset. Results The best results obtained for accuracy and area under ROC curve were 96.98% and 0.980, respectively, both with neural networks using the whole set of features. Conclusion The performance obtained with neural networks with the selected stop criterion was better than the ones obtained with SVM. Whilst using neural networks the results were better with all 22 features, SVM classifiers performed better with a reduced set of 6 features.


Full text: Available Index: LILACS (Americas) Type of study: Prognostic study Language: English Journal: Res. Biomed. Eng. (Online) Journal subject: Engenharia Biom‚dica Year: 2016 Type: Article Affiliation country: Brazil Institution/Affiliation country: Universidade Federal do Amazonas/BR

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Full text: Available Index: LILACS (Americas) Type of study: Prognostic study Language: English Journal: Res. Biomed. Eng. (Online) Journal subject: Engenharia Biom‚dica Year: 2016 Type: Article Affiliation country: Brazil Institution/Affiliation country: Universidade Federal do Amazonas/BR