Model-based
Framework for the Detection of Spiculated Masses on Mammography
Description
The detection of lesions on mammography
is a repetitive and fatiguing task. Only three or four out
of a thousand examined cases are malignant, and thus an abnormality
may be overlooked. As a result, radiologists fail to detect
10% to 30% of cancers
Computer-Aided Detection (CADe) systems have been developed
to aid radiologists. These systems act as a second reader,
thus eliminating the need for a second radiologist. However,
the detection accuracy of current systems is much higher for
detection of micro calcifications than for spiculated masses.
We have designed a new model-based framework for the detection
of spiculated masses on mammograms.
This technology is a detection algorithm that
a) enhances spicules through Spiculation Filtering and detects
the spatial locations where the spicules converg
b) detects the central mass region of the spiculated masses,
an
c) reduces the false positives due to normal linear structures
The foundation of this algorithm is strong, as all the parameters
are based on actual physical properties of spiculated masses
measured by experienced radiologists.The algorithm, when tested
on a set of 100 challenging images from the publicly available
DDSM database, showed a sensitivity of 88% at 2.7 FPI (sensitivity
is the fraction of regions marked as suspicious that are actually
lesions and FPI (false positives per image) is the number
of regions marked per image that are not lesions). This technique
aims to find the highest risk abnormalities and will be a
useful aid to radiologists in detecting breast cancer
More data on the images used to test the technology can be
made available on request.
Benefits
- The algorithm is modular and could
be easily integrated with the existing CAD Systems.
- Employs a model-based, evidence-based approach
- New knowledge about the physical properties of spiculated
masses or normal tissue structures can be easily incorporated
into the framework of this algorithm.
Features
Features
- Enhancement of linear structures
via filtering in the Radon Domain
- A new class of filters, called spiculation
filters, that were specifically designed to detect locations
at which linear structures converge
- All filter parameters set based on
measurements of spiculated masses made by radiologists
- Explicit models of normal structures
used to reduce the number of false positive detections
Market Potential/Applications
Computer-Aided Detection (CADe) mammography systems
IP Status
One U.S. patent application filed
For further information please contact:
University of Texas,
Austin, USA
Website : www.otc.utexas.edu

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