Semi-automated search for abnormalities in mammographic X-ray images
Breast cancer is the most commonly diagnosed cancer among Canadian women; x-ray mammography is the leading screening technique for early detection. This work introduces a semi-automated technique for analyzing mammographic x-ray images to measure their degree of suspiciousness for containing abnorma...
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ndltd-USASK-oai-usask.ca-etd-10192006-2015502013-01-08T16:33:40Z Semi-automated search for abnormalities in mammographic X-ray images Barnett, Michael Gordon mass detection pattern recognition biophysics computer aided detection wavelet breast cancer bayes classifier mammogram x-ray imaging calcification detection Breast cancer is the most commonly diagnosed cancer among Canadian women; x-ray mammography is the leading screening technique for early detection. This work introduces a semi-automated technique for analyzing mammographic x-ray images to measure their degree of suspiciousness for containing abnormalities. The designed system applies the discrete wavelet transform to parse the images and extracts statistical features that characterize an images content, such as the mean intensity and the skewness of the intensity. A naïve Bayesian classifier uses these features to classify the images, achieving sensitivities as high as 99.5% for a data set containing 1714 images. To generate confidence levels, multiple classifiers are combined in three possible ways: a sequential series of classifiers, a vote-taking scheme of classifiers, and a network of classifiers tuned to detect particular types of abnormalities. The third method offers sensitivities of 99.85% or higher with specificities above 60%, making it an ideal candidate for pre-screening images. Two confidence level measures are developed: first, a real confidence level measures the true probability that an image was suspicious; and second, a normalized confidence level assumes that normal and suspicious images were equally likely to occur. The second confidence measure allows for more flexibility and could be combined with other factors, such as patient age and family history, to give a better true confidence level than assuming a uniform incidence rate. The system achieves sensitivities exceeding those in other current approaches while maintaining reasonable specificity, especially for the sequential series of classifiers and for the network of tuned classifiers. Kendall, Edward J. Eramian, Mark G. Dick, Rainer Degenstein, Douglas A. Bolton, Ronald J. Manson, Alan Pywell, Robert E. University of Saskatchewan 2006-10-24 text application/pdf http://library.usask.ca/theses/available/etd-10192006-201550/ http://library.usask.ca/theses/available/etd-10192006-201550/ en unrestricted I hereby certify that, if appropriate, I have obtained and attached hereto a written permission statement from the owner(s) of each third party copyrighted matter to be included in my thesis, dissertation, or project report, allowing distribution as specified below. I certify that the version I submitted is the same as that approved by my advisory committee. I hereby grant to University of Saskatchewan or its agents the non-exclusive license to archive and make accessible, under the conditions specified below, my thesis, dissertation, or project report in whole or in part in all forms of media, now or hereafter known. I retain all other ownership rights to the copyright of the thesis, dissertation or project report. I also retain the right to use in future works (such as articles or books) all or part of this thesis, dissertation, or project report. |
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mass detection pattern recognition biophysics computer aided detection wavelet breast cancer bayes classifier mammogram x-ray imaging calcification detection |
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mass detection pattern recognition biophysics computer aided detection wavelet breast cancer bayes classifier mammogram x-ray imaging calcification detection Barnett, Michael Gordon Semi-automated search for abnormalities in mammographic X-ray images |
description |
Breast cancer is the most commonly diagnosed cancer among Canadian women; x-ray mammography is the leading screening technique for early detection. This work introduces a semi-automated technique for analyzing mammographic x-ray images to measure their degree of suspiciousness for containing abnormalities. The designed system applies the discrete wavelet transform to parse the images and extracts statistical features that characterize an images content, such as the mean intensity and the skewness of the intensity. A naïve Bayesian classifier uses these features to classify the images, achieving sensitivities as high as 99.5% for a data set containing 1714 images. To generate confidence levels, multiple classifiers are combined in three possible ways: a sequential series of classifiers, a vote-taking scheme of classifiers, and a network of classifiers tuned to detect particular types of abnormalities. The third method offers sensitivities of 99.85% or higher with specificities above 60%, making it an ideal candidate for pre-screening images. Two confidence level measures are developed: first, a real confidence level measures the true probability that an image was suspicious; and second, a normalized confidence level assumes that normal and suspicious images were equally likely to occur. The second confidence measure allows for more flexibility and could be combined with other factors, such as patient age and family history, to give a better true confidence level than assuming a uniform incidence rate. The system achieves sensitivities exceeding those in other current approaches while maintaining reasonable specificity, especially for the sequential series of classifiers and for the network of tuned classifiers. |
author2 |
Kendall, Edward J. |
author_facet |
Kendall, Edward J. Barnett, Michael Gordon |
author |
Barnett, Michael Gordon |
author_sort |
Barnett, Michael Gordon |
title |
Semi-automated search for abnormalities in mammographic X-ray images |
title_short |
Semi-automated search for abnormalities in mammographic X-ray images |
title_full |
Semi-automated search for abnormalities in mammographic X-ray images |
title_fullStr |
Semi-automated search for abnormalities in mammographic X-ray images |
title_full_unstemmed |
Semi-automated search for abnormalities in mammographic X-ray images |
title_sort |
semi-automated search for abnormalities in mammographic x-ray images |
publisher |
University of Saskatchewan |
publishDate |
2006 |
url |
http://library.usask.ca/theses/available/etd-10192006-201550/ |
work_keys_str_mv |
AT barnettmichaelgordon semiautomatedsearchforabnormalitiesinmammographicxrayimages |
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1716532537222758400 |