Model-based detection of spiculated lesions in mammograms
β Scribed by Reyes Zwiggelaar; Timothy C. Parr; James E. Schumm; Ian W. Hutt; Christopher J. Taylor; Susan M. Astley; Caroline R.M. Boggis
- Book ID
- 104404573
- Publisher
- Elsevier Science
- Year
- 1999
- Tongue
- English
- Weight
- 855 KB
- Volume
- 3
- Category
- Article
- ISSN
- 1361-8415
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β¦ Synopsis
Computer-aided mammographic prompting systems require the reliable detection of a variety of signs of cancer. In this paper we concentrate on the detection of spiculated lesions in mammograms. A spiculated lesion is typically characterized by an abnormal pattern of linear structures and a central mass. Statistical models have been developed to describe and detect both these aspects of spiculated lesions. We describe a generic method of representing patterns of linear structures, which relies on the use of factor analysis to separate the systematic and random aspects of a class of patterns. We model the appearance of central masses using local scale-orientation signatures based on recursive median filtering, approximated using principalcomponent analysis. For lesions of 16 mm and larger the pattern detection technique results in a sensitivity of 80% at 0.014 false positives per image, whilst the mass detection approach results in a sensitivity 80% at 0.23 false positives per image. Simple combination techniques result in an improved sensitivity and specificity close to that required to improve the performance of a radiologist in a prompting environment.
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