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Title:
Automatic Detection of Anatomical Landmarks
In Uterine Cervix Images.
Author(s):
H. Greenspan, S. Gordon, G. Zimmerman, S. Lotenberg, J. Jeronimo, S. Antani,
R. Long.
Institution(s):
1) Tel-Aviv University, Israel
2)
National Library of Medicine, NIH, USA
3)
National Cancer Institute, NIH, USA
Source:
IEEE Transactions on Medical Imaging. March 2009;28(3):454-68.
Abstract:
The work focuses on a unique medical repository
of digital cervicographic images (“Cervigrams”) collected by the
National Cancer Institute (NCI) in longitudinal multiyear studies.
NCI, together with the National Library of Medicine (NLM),
is developing a unique web-accessible database of the digitized
cervix images to study the evolution of lesions related to cervical
cancer. Tools are needed for automated analysis of the cervigram
content to support cancer research. We present a multistage
scheme for segmenting and labeling regions of anatomical interest
within the cervigrams. In particular, we focus on the extraction
of the cervix region and fine detection of the cervix boundary;
specular reflection is eliminated as an important preprocessing
step; in addition, the entrance to the endocervical canal (the “os”),
is detected. Segmentation results are evaluated on three image sets
of cervigrams that were manually labeled by NCI experts.
Publication Type: JOURNAL
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