Grant Details
Grant Number: |
5R03CA073727-02 Interpret this number |
Primary Investigator: |
Fleming, Matthew |
Organization: |
Medical College Of Wisconsin |
Project Title: |
Structural Analysis of Dermatoscopic Imagery |
Fiscal Year: |
1998 |
Abstract
DESCRIPTION: The long term goal of this work is to ease the burden of
melanoma detection by development of an automated screening device capable
of distinguishing between malignant and benign pigmented lesions (melanomas
and nevi). This device will be based on dermatoscopic imaging and computer
vision technology. Support for this approach includes the increased
diagnostic accuracy associated with clinical use of the dermatoscope and the
documented suitability of dermatoscopic images for automated analysis.
Clinical dermatoscopists base their analysis on a group of features that
includes the p i g m e nt network, brown globules, black dots, diffuse
pigmentation, depigmentation, and blue-gray veil. The histopathologic
correlates of each of these features are known and the contribution that
each of them makes towards a benign or malignant diagnosis is understood in
quantitative terms. The immediate goal of this project is to develop
software for automated detection and characterization of each of these
features in digital images. Binary skeletonization procedures have already
been developed for analysis of pigment network topology, but their
performance varies with the width of the network lines. Pyramidal,
multiscale processing and/or greyscale skeletonization procedures will be
incorporated into algorithms capable of detecting network elements of any
width. Algorithms for evaluation of network line width v a riability, hole
size variability, radial streaming, pseudopods, and abruptness of the
pigment network boundary will be developed. Algorithms will be developed
for evaluation of the size and spatial distribution of black dots and brown
globules, and for evaluation of the other "classical" dermatoscopic features
described above. Algorithms will be developed for rejection of artifacts
caused by air bubbles and hairs. A classifier for discriminating nevi and
melanomas will be constructed from the extracted features, using neural or
Bayesian networks. The entire software package will closely model human
perception and analysis of dermatoscopic images, and will be ready for
incorporation with image acquisition hardware into an integrated screening
device.
Publications
Digital dermoscopy.
Authors: Fleming M.G.
.
Source: Dermatologic Clinics, 2001 Apr; 19(2), p. 359-67, ix.
PMID: 11556244
Related Citations
Techniques for a structural analysis of dermatoscopic imagery.
Authors: Fleming M.G.
, Steger C.
, Zhang J.
, Gao J.
, Cognetta A.B.
, Pollak I.
, Dyer C.R.
.
Source: Computerized Medical Imaging And Graphics : The Official Journal Of The Computerized Medical Imaging Society, 1998 Sep-Oct; 22(5), p. 375-89.
PMID: 9890182
Related Citations