Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue
The work presented here is an important component of an on going project of developing an automated mass classification system for breast cancer screening and diagnosis for Digital Mammogram applications. Specifically, in this work the task of automatically separating mass tissue from normal breast...
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ndltd-USF-oai-scholarcommons.usf.edu-etd-24762019-10-28T22:48:04Z Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue Shinde, Monika The work presented here is an important component of an on going project of developing an automated mass classification system for breast cancer screening and diagnosis for Digital Mammogram applications. Specifically, in this work the task of automatically separating mass tissue from normal breast tissue given a region of interest in a digitized mammogram is investigated. This is the crucial stage in developing a robust automated classification system because the classification depends on the accurate assessment of the tumor-normal tissue border as well as information gathered from the tumor area. In this work the Expectation Maximization (EM) method is developed and applied to high resolution digitized screen-film mammograms with the aim of segmenting normal tissue from mass tissue. Both the raw data and summary data generated by Laws' texture analysis are investigated. Since the ultimate goal is robust classification, the merits of the tissue segmentation are assessed by its impact on the overall classification performance. Based on the 300 image dataset consisting of 97 malignant and 203 benign cases, a 63% sensitivity and 89% specificity was achieved. Although, the segmentation requires further investigation, the development and related computer coding of the EM algorithm was successful. The method was developed to take in account the input feature correlation. This development allows other researchers at this facility to investigate various input features without having the intricate understanding of the EM approach. 2003-07-10T07:00:00Z text application/pdf https://scholarcommons.usf.edu/etd/1477 https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=2476&context=etd default Graduate Theses and Dissertations Scholar Commons mass segmentation laws' texture features expectation maximization American Studies Arts and Humanities |
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mass segmentation laws' texture features expectation maximization American Studies Arts and Humanities |
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mass segmentation laws' texture features expectation maximization American Studies Arts and Humanities Shinde, Monika Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue |
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The work presented here is an important component of an on going project of developing an automated mass classification system for breast cancer screening and diagnosis for Digital Mammogram applications. Specifically, in this work the task of automatically separating mass tissue from normal breast tissue given a region of interest in a digitized mammogram is investigated. This is the crucial stage in developing a robust automated classification system because the classification depends on the accurate assessment of the tumor-normal tissue border as well as information gathered from the tumor area. In this work the Expectation Maximization (EM) method is developed and applied to high resolution digitized screen-film mammograms with the aim of segmenting normal tissue from mass tissue. Both the raw data and summary data generated by Laws' texture analysis are investigated. Since the ultimate goal is robust classification, the merits of the tissue segmentation are assessed by its impact on the overall classification performance.
Based on the 300 image dataset consisting of 97 malignant and 203 benign cases, a 63% sensitivity and 89% specificity was achieved. Although, the segmentation requires further investigation, the development and related computer coding of the EM algorithm was successful. The method was developed to take in account the input feature correlation. This development allows other researchers at this facility to investigate various input features without having the intricate understanding of the EM approach. |
author |
Shinde, Monika |
author_facet |
Shinde, Monika |
author_sort |
Shinde, Monika |
title |
Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue |
title_short |
Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue |
title_full |
Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue |
title_fullStr |
Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue |
title_full_unstemmed |
Computer Aided Diagnosis In Digital Mammography: Classification Of Mass And Normal Tissue |
title_sort |
computer aided diagnosis in digital mammography: classification of mass and normal tissue |
publisher |
Scholar Commons |
publishDate |
2003 |
url |
https://scholarcommons.usf.edu/etd/1477 https://scholarcommons.usf.edu/cgi/viewcontent.cgi?article=2476&context=etd |
work_keys_str_mv |
AT shindemonika computeraideddiagnosisindigitalmammographyclassificationofmassandnormaltissue |
_version_ |
1719280200364064768 |