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Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones

Recent studies on wavelet transform and fractal modeling applied on mammograms for the detection of cancerous tissues indicate that microcalcifications and masses can be utilized for the study of the morphology and diagnosis of cancerous cases. It is shown that the use of fractal modeling, as applie...

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Autores principales: Shirazinodeh, Alireza, Noubari, Hossein Ahmadi, Rabbani, Hossein, Dehnavi, Alireza Mehri
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Medknow Publications & Media Pvt Ltd 2015
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Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4528354/
https://www.ncbi.nlm.nih.gov/pubmed/26284172
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author Shirazinodeh, Alireza
Noubari, Hossein Ahmadi
Rabbani, Hossein
Dehnavi, Alireza Mehri
author_facet Shirazinodeh, Alireza
Noubari, Hossein Ahmadi
Rabbani, Hossein
Dehnavi, Alireza Mehri
author_sort Shirazinodeh, Alireza
collection PubMed
description Recent studies on wavelet transform and fractal modeling applied on mammograms for the detection of cancerous tissues indicate that microcalcifications and masses can be utilized for the study of the morphology and diagnosis of cancerous cases. It is shown that the use of fractal modeling, as applied to a given image, can clearly discern cancerous zones from noncancerous areas. In this paper, for fractal modeling, the original image is first segmented into appropriate fractal boxes followed by identifying the fractal dimension of each windowed section using a computationally efficient two-dimensional box-counting algorithm. Furthermore, using appropriate wavelet sub-bands and image Reconstruction based on modified wavelet coefficients, it is shown that it is possible to arrive at enhanced features for detection of cancerous zones. In this paper, we have attempted to benefit from the advantages of both fractals and wavelets by introducing a new algorithm. By using a new algorithm named F1W2, the original image is first segmented into appropriate fractal boxes, and the fractal dimension of each windowed section is extracted. Following from that, by applying a maximum level threshold on fractal dimensions matrix, the best-segmented boxes are selected. In the next step, the segmented Cancerous zones which are candidates are then decomposed by utilizing standard orthogonal wavelet transform and db2 wavelet in three different resolution levels, and after nullifying wavelet coefficients of the image at the first scale and low frequency band of the third scale, the modified reconstructed image is successfully utilized for detection of breast cancer regions by applying an appropriate threshold. For detection of cancerous zones, our simulations indicate the accuracy of 90.9% for masses and 88.99% for microcalcifications detection results using the F1W2 method. For classification of detected mictocalcification into benign and malignant cases, eight features are identified and utilized in radial basis function neural network. Our simulation results indicate the accuracy of 92% classification using F1W2 method.
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spelling pubmed-45283542015-08-17 Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones Shirazinodeh, Alireza Noubari, Hossein Ahmadi Rabbani, Hossein Dehnavi, Alireza Mehri J Med Signals Sens Original Article Recent studies on wavelet transform and fractal modeling applied on mammograms for the detection of cancerous tissues indicate that microcalcifications and masses can be utilized for the study of the morphology and diagnosis of cancerous cases. It is shown that the use of fractal modeling, as applied to a given image, can clearly discern cancerous zones from noncancerous areas. In this paper, for fractal modeling, the original image is first segmented into appropriate fractal boxes followed by identifying the fractal dimension of each windowed section using a computationally efficient two-dimensional box-counting algorithm. Furthermore, using appropriate wavelet sub-bands and image Reconstruction based on modified wavelet coefficients, it is shown that it is possible to arrive at enhanced features for detection of cancerous zones. In this paper, we have attempted to benefit from the advantages of both fractals and wavelets by introducing a new algorithm. By using a new algorithm named F1W2, the original image is first segmented into appropriate fractal boxes, and the fractal dimension of each windowed section is extracted. Following from that, by applying a maximum level threshold on fractal dimensions matrix, the best-segmented boxes are selected. In the next step, the segmented Cancerous zones which are candidates are then decomposed by utilizing standard orthogonal wavelet transform and db2 wavelet in three different resolution levels, and after nullifying wavelet coefficients of the image at the first scale and low frequency band of the third scale, the modified reconstructed image is successfully utilized for detection of breast cancer regions by applying an appropriate threshold. For detection of cancerous zones, our simulations indicate the accuracy of 90.9% for masses and 88.99% for microcalcifications detection results using the F1W2 method. For classification of detected mictocalcification into benign and malignant cases, eight features are identified and utilized in radial basis function neural network. Our simulation results indicate the accuracy of 92% classification using F1W2 method. Medknow Publications & Media Pvt Ltd 2015 /pmc/articles/PMC4528354/ /pubmed/26284172 Text en Copyright: © Journal of Medical Signals and Sensors http://creativecommons.org/licenses/by-nc-sa/3.0 This is an open-access article distributed under the terms of the Creative Commons Attribution-Noncommercial-Share Alike 3.0 Unported, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Original Article
Shirazinodeh, Alireza
Noubari, Hossein Ahmadi
Rabbani, Hossein
Dehnavi, Alireza Mehri
Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones
title Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones
title_full Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones
title_fullStr Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones
title_full_unstemmed Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones
title_short Detection and classification of Breast Cancer in Wavelet Sub-bands of Fractal Segmented Cancerous Zones
title_sort detection and classification of breast cancer in wavelet sub-bands of fractal segmented cancerous zones
topic Original Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4528354/
https://www.ncbi.nlm.nih.gov/pubmed/26284172
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