Detection of Masses and Microcalcifications in Digital Mammogram Images

Breast cancer is the most common health problem among women today. Early detection of breast cancer can be helpful. However, detection of breast lesions (mass and microcalcification) is a challenging task for radiologists. Computer Aided Detection (CAD) systems are designed and implemented to aid ra...

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Main Author: Langarizadesh, Mostafa
Format: Thesis
Language:English
English
Published: 2011
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/21838/1/FPSK%28p%29_2011_6IR.pdf
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spelling my-upm-ir.218382024-07-09T01:40:16Z Detection of Masses and Microcalcifications in Digital Mammogram Images 2011-12 Langarizadesh, Mostafa Breast cancer is the most common health problem among women today. Early detection of breast cancer can be helpful. However, detection of breast lesions (mass and microcalcification) is a challenging task for radiologists. Computer Aided Detection (CAD) systems are designed and implemented to aid radiologists and detect masses and microcalcifications raising the level of sensitivity of breast cancer detection than human eye detection. In this research, a new system is suggested for detecting lesions. In the preparation phase, 18000 small samples (each of size 8 by 8 pixels) were extracted from different tissue types. Textural features were calculated for each sample. The best features were selected using Weikato Environment for Knowledge Analysis (WEKA) software. Subsequently, 7 selected features were used to extract a decision tree. To reduce false negative cases and remove sharp boundaries, the fuzzy logic theory was used. Input and output membership functions were defined based on the decision tree. In the implementation phase, input images were divided into 8 by 8 pixel tiles. For each tile, all selected features were computed as fuzzy inputs. Based on the fuzzy results, a binary image was produced as an output image. In the output image all lesion areas were shown in white while other areas were shown in black. Sobel filter were employed to detect boundaries. Finally, the boundaries were adjusted on the original image. This is to select and show suspicious locations on original image for radiologists. In the evaluation phase, two experiments were presented; first the suggested system was applied to 322 images obtained from the MIAS data set. Based on the data obtained from the first experiment, results showed that the suggested system has an acceptable sensitivity of 82.56% and a specificity of 88.26%. In the second experiment, the suggested system was applied on 326 local images that were obtained from the national cancer society of Malaysia. A sensitivity of 85.61% and specificity of 90.72% was obtained from that study. Breast neoplasms 2011-12 Thesis http://psasir.upm.edu.my/id/eprint/21838/ http://psasir.upm.edu.my/id/eprint/21838/1/FPSK%28p%29_2011_6IR.pdf application/pdf en staffonly doctoral Universiti Putra Malaysia Breast neoplasms Faculty of Medicine and Health Science Mahmud, Rozi English
institution Universiti Putra Malaysia
collection PSAS Institutional Repository
language English
English
advisor Mahmud, Rozi
topic Breast neoplasms


spellingShingle Breast neoplasms


Langarizadesh, Mostafa
Detection of Masses and Microcalcifications in Digital Mammogram Images
description Breast cancer is the most common health problem among women today. Early detection of breast cancer can be helpful. However, detection of breast lesions (mass and microcalcification) is a challenging task for radiologists. Computer Aided Detection (CAD) systems are designed and implemented to aid radiologists and detect masses and microcalcifications raising the level of sensitivity of breast cancer detection than human eye detection. In this research, a new system is suggested for detecting lesions. In the preparation phase, 18000 small samples (each of size 8 by 8 pixels) were extracted from different tissue types. Textural features were calculated for each sample. The best features were selected using Weikato Environment for Knowledge Analysis (WEKA) software. Subsequently, 7 selected features were used to extract a decision tree. To reduce false negative cases and remove sharp boundaries, the fuzzy logic theory was used. Input and output membership functions were defined based on the decision tree. In the implementation phase, input images were divided into 8 by 8 pixel tiles. For each tile, all selected features were computed as fuzzy inputs. Based on the fuzzy results, a binary image was produced as an output image. In the output image all lesion areas were shown in white while other areas were shown in black. Sobel filter were employed to detect boundaries. Finally, the boundaries were adjusted on the original image. This is to select and show suspicious locations on original image for radiologists. In the evaluation phase, two experiments were presented; first the suggested system was applied to 322 images obtained from the MIAS data set. Based on the data obtained from the first experiment, results showed that the suggested system has an acceptable sensitivity of 82.56% and a specificity of 88.26%. In the second experiment, the suggested system was applied on 326 local images that were obtained from the national cancer society of Malaysia. A sensitivity of 85.61% and specificity of 90.72% was obtained from that study.
format Thesis
qualification_level Doctorate
author Langarizadesh, Mostafa
author_facet Langarizadesh, Mostafa
author_sort Langarizadesh, Mostafa
title Detection of Masses and Microcalcifications in Digital Mammogram Images
title_short Detection of Masses and Microcalcifications in Digital Mammogram Images
title_full Detection of Masses and Microcalcifications in Digital Mammogram Images
title_fullStr Detection of Masses and Microcalcifications in Digital Mammogram Images
title_full_unstemmed Detection of Masses and Microcalcifications in Digital Mammogram Images
title_sort detection of masses and microcalcifications in digital mammogram images
granting_institution Universiti Putra Malaysia
granting_department Faculty of Medicine and Health Science
publishDate 2011
url http://psasir.upm.edu.my/id/eprint/21838/1/FPSK%28p%29_2011_6IR.pdf
_version_ 1804888716517310464