NORMAL IMAGE RECOGNITION TECHNICS FOR DIGITAL MAMMOGRAMS
Project Number5R21CA079947-02
Contact PI/Project LeaderHEINE, JOHN J
Awardee OrganizationUNIVERSITY OF SOUTH FLORIDA
Description
Abstract Text
DESCRIPTION (Verbatim from the Applicant's Abstract): This project is a
principal component of a program directed at developing automated techniques
for the recognition of clinically normal mammograms in high resolution digital
mammography (DM). The goal is to reliably recognize 50% of the normal images
while not misclassifying abnormal images as normal. Clinically, the approach
can be considered as a second opinion strategy or as a work load reduction
mechanism since the majority of images are normal. Specifically, this proposal
involves two areas of complementary research: (1) A thorough evaluation of new
multresolution statistical detection method used for identifying normal image
regions at scales relevant to microcalcifications, and (2) A feasibility study
directed at developing a statistical understanding of normal tissue regions at
scales relevant to masses. The first area involves expanding the image with
wavelet analysis into a sum of images each containing different levels of
detail or scale. Each expansion component can be analyzed with simple
parametric probability models as opposed to the analysis of the complicated raw
image. A statistical test following from maximum likelihood arguments can be
derived that will allow the determination of normal image regions at scales
relevant to calcifications. The test is applied independently at the two
relevant scales, and the results are combined. If all image regions pass the
normality test the image can be declared clinically normal with respect to
calcifications, and areas that deviate significantly from the model are
considered as suspicious. The second component of this proposal involves the
investigation of new image formation model. Initial evidence indicates that
mammograms can be considered as resulting from a simple linear filtering
process. That is the filtering induces the irregular image characteristics. A
deconvolution approach results in a regular random field that can be analyzed
with parametric methods. This field will be studied with aim of developing
normal tissue detection methods at large scales and applied to images that
contain masses in an analogous fashion to that of the first research area.
Secondary benefits of this study include developing a parametric description of
digitized mammograms and parametric analysis methods that will translate to
many DM applications including images acquired from direct X-ray detection
imaging.
No Sub Projects information available for 5R21CA079947-02
Publications
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Outcomes
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Clinical Studies
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