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Classifying mammography images by using fuzzy cognitive maps and a new segmentation algorithm

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Auteur
Amirkhani A., Kolahdoozi M., Papageorgiou E.I., Mosavi M.R.
Date
2018
Language
en
DOI
10.1007/978-3-319-77911-9_6
Sujet
Cognitive systems
Fuzzy rules
Image classification
Image segmentation
Large scale systems
Learning systems
Medical imaging
Particle swarm optimization (PSO)
Statistical tests
Tumors
Breast tumor
Curse of dimensionality
Early detection of breast cancer
Fuzzy cognitive map
Mammography images
Particle swarm optimization algorithm
Region growing
Segmentation algorithms
Learning algorithms
Springer Science and Business Media Deutschland GmbH
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Résumé
Mammography is one of the best techniques for the early detection of breast cancer. In this chapter, a method based on fuzzy cognitive map (FCM) and its evolutionary-based learning capabilities is presented for classifying mammography images. The main contribution of this work is two-fold: (a) to propose a new segmentation approach called the threshold based region growing (TBRG) algorithm for segmentation of mammography images, and (b) to implement FCM method in the context of mammography image classification by developing a new FCM learning algorithm efficient for tumor classification. By applying the proposed (TBRG) algorithm, a possible tumor is delineated against the background tissue. We extracted 36 features from the tissue, describing the texture and the boundary of the segmented region. Due to the curse of dimensionality of features space, the features were selected with the help of the continuous particle swarm optimization algorithm. The FCM was trained using a new evolutionary approach based on the area under curve (AUC) of the output concept. In order to evaluate the efficacy of the presented scheme, comparisons with benchmark machine learning algorithms were conducted and known metrics like ROC, AUC were calculated. The AUC obtained for the test data set is 87.11%, which indicates the excellent performance of the proposed FCM. © 2018 by the Oncology Nursing Society.
URI
http://hdl.handle.net/11615/70476
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