Fulltext:
81026.pdf
Embargo:
until further notice
Size:
1002.Kb
Format:
PDF
Description:
Publisher’s version
Publication year
2009Source
IEEE Transactions on Medical Imaging, 28, 12, (2009), pp. 2033-41ISSN
Publication type
Article / Letter to editor
Display more detailsDisplay less details
Organization
Radiology
Journal title
IEEE Transactions on Medical Imaging
Volume
vol. 28
Issue
iss. 12
Page start
p. 2033
Page end
p. 41
Subject
ONCOL 3: Translational research; ONCOL 5: Aetiology, screening and detectionAbstract
When reading mammograms, radiologists do not only look at local properties of suspicious regions but also take into account more general contextual information. This suggests that context may be used to improve the performance of computer-aided detection (CAD) of malignant masses in mammograms. In this study, we developed a set of context features that represent suspiciousness of normal tissue in the same case. For each candidate mass region, three normal reference areas were defined in the image at hand. Corresponding areas were also defined in the contralateral image and in different projections. Evaluation of the context features was done using 10-fold cross validation and case based bootstrapping. Free response receiver operating characteristic (FROC) curves were computed for feature sets including context features and a feature set without context. Results show that the mean sensitivity in the interval of 0.05-0.5 false positives/image increased more than 6% when context features were added. This increase was significant ( p < 0.0001). Context computed using multiple views yielded a better performance than using a single view (mean sensitivity increase of 2.9%, p < 0.0001). Besides the importance of using multiple views, results show that best CAD performance was obtained when multiple context features were combined that are based on different reference areas in the mammogram.
This item appears in the following Collection(s)
- Academic publications [243984]
- Electronic publications [130695]
- Faculty of Medical Sciences [92811]
Upload full text
Use your RU credentials (u/z-number and password) to log in with SURFconext to upload a file for processing by the repository team.