CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES

Breast cancer is the primary and most common disease found in women which causes second highest rate of death after lung cancer. The digital mammogram is the X-ray of breast captured for the analysis, interpretation and diagnosis. According to Breast Imaging Reporting and Data System (BIRADS) benign...

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Main Authors: B. Surendiran, A. Vadivel
Format: Article
Language:English
Published: ICT Academy of Tamil Nadu 2011-11-01
Series:ICTACT Journal on Image and Video Processing
Subjects:
Online Access:http://ictactjournals.in/paper/IJIVP_2_5_Paper319to326.pdf
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spelling doaj-2a0d26f1b27c499da9f1f3cfb54f610a2020-11-25T00:08:39ZengICT Academy of Tamil NaduICTACT Journal on Image and Video Processing0976-90990976-91022011-11-0122319326CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURESB. Surendiran0A. Vadivel1Department of Computer Applications, National Institute of Technology Tiruchirappalli, IndiaDepartment of Computer Applications, National Institute of Technology Tiruchirappalli, IndiaBreast cancer is the primary and most common disease found in women which causes second highest rate of death after lung cancer. The digital mammogram is the X-ray of breast captured for the analysis, interpretation and diagnosis. According to Breast Imaging Reporting and Data System (BIRADS) benign and malignant can be differentiated using its shape, size and density, which is how radiologist visualize the mammograms. According to BIRADS mass shape characteristics, benign masses tend to have round, oval, lobular in shape and malignant masses are lobular or irregular in shape. Measuring regular and irregular shapes mathematically is found to be a difficult task, since there is no single measure to differentiate various shapes. In this paper, the malignant and benign masses present in mammogram are classified using Hue, Saturation and Value (HSV) weight function based statistical measures. The weight function is robust against noise and captures the degree of gray content of the pixel. The statistical measures use gray weight value instead of gray pixel value to effectively discriminate masses. The 233 mammograms from the Digital Database for Screening Mammography (DDSM) benchmark dataset have been used. The PASW data mining modeler has been used for constructing Neural Network for identifying importance of statistical measures. Based on the obtained important statistical measure, the C5.0 tree has been constructed with 60-40 data split. The experimental results are found to be encouraging. Also, the results will agree to the standard specified by the American College of Radiology-BIRADS Systems.http://ictactjournals.in/paper/IJIVP_2_5_Paper319to326.pdfBenign and Malignant Mammogram MassesFeature ExtractionWeight FunctionStatistical MeasuresNeural NetworkC5.0 Decision Tree Classifier
collection DOAJ
language English
format Article
sources DOAJ
author B. Surendiran
A. Vadivel
spellingShingle B. Surendiran
A. Vadivel
CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES
ICTACT Journal on Image and Video Processing
Benign and Malignant Mammogram Masses
Feature Extraction
Weight Function
Statistical Measures
Neural Network
C5.0 Decision Tree Classifier
author_facet B. Surendiran
A. Vadivel
author_sort B. Surendiran
title CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES
title_short CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES
title_full CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES
title_fullStr CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES
title_full_unstemmed CLASSIFYING BENIGN AND MALIGNANT MASSES USING STATISTICAL MEASURES
title_sort classifying benign and malignant masses using statistical measures
publisher ICT Academy of Tamil Nadu
series ICTACT Journal on Image and Video Processing
issn 0976-9099
0976-9102
publishDate 2011-11-01
description Breast cancer is the primary and most common disease found in women which causes second highest rate of death after lung cancer. The digital mammogram is the X-ray of breast captured for the analysis, interpretation and diagnosis. According to Breast Imaging Reporting and Data System (BIRADS) benign and malignant can be differentiated using its shape, size and density, which is how radiologist visualize the mammograms. According to BIRADS mass shape characteristics, benign masses tend to have round, oval, lobular in shape and malignant masses are lobular or irregular in shape. Measuring regular and irregular shapes mathematically is found to be a difficult task, since there is no single measure to differentiate various shapes. In this paper, the malignant and benign masses present in mammogram are classified using Hue, Saturation and Value (HSV) weight function based statistical measures. The weight function is robust against noise and captures the degree of gray content of the pixel. The statistical measures use gray weight value instead of gray pixel value to effectively discriminate masses. The 233 mammograms from the Digital Database for Screening Mammography (DDSM) benchmark dataset have been used. The PASW data mining modeler has been used for constructing Neural Network for identifying importance of statistical measures. Based on the obtained important statistical measure, the C5.0 tree has been constructed with 60-40 data split. The experimental results are found to be encouraging. Also, the results will agree to the standard specified by the American College of Radiology-BIRADS Systems.
topic Benign and Malignant Mammogram Masses
Feature Extraction
Weight Function
Statistical Measures
Neural Network
C5.0 Decision Tree Classifier
url http://ictactjournals.in/paper/IJIVP_2_5_Paper319to326.pdf
work_keys_str_mv AT bsurendiran classifyingbenignandmalignantmassesusingstatisticalmeasures
AT avadivel classifyingbenignandmalignantmassesusingstatisticalmeasures
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