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Clinical Cancer Research Vol. 10, 1881-1886, March 2004
© 2004 American Association for Cancer Research


Molecular Oncology, Markers, Clinical Correlates

Melanoma Computer-Aided Diagnosis

Reliability and Feasibility Study

Marco Burroni1, Rosamaria Corona2, Giordana Dell’Eva3, Francesco Sera2, Riccardo Bono2, Pietro Puddu2, Roberto Perotti1, Franco Nobile3, Lucio Andreassi1 and Pietro Rubegni1

1 Department of Dermatology, University of Siena, Italy; 2 Istituto Dermopatico dell’Immacolata, Rome, Italy; and 3 Italian Cancer League, Siena, Italy

ABSTRACT

Background: Differential diagnosis of melanoma from melanocytic nevi is often not straightforward. Thus, a growing interest has developed in the last decade in the automated analysis of digitized images obtained by epiluminescence microscopy techniques to assist clinicians in differentiating early melanoma from benign skin lesions.

Purpose: The aim of this study was to evaluate diagnostic accuracy provided by different statistical classifiers on a large set of pigmented skin lesions grabbed by four digital analyzers located in two different dermatological units.

Experimental Design: Images of 391melanomas and 449 melanocytic nevi were included in the study. A linear classifier was built by using the method of receiver operating characteristic curves to identify a threshold value for a fixed sensitivity of 95%. A K-nearest-neighbor classifier, a nonparametric method of pattern recognition, was constructed using all available image features and trained for a sensitivity of 98% on a large exemplar set of lesions.

Results: On independent test sets of lesions, the linear classifier and the K-nearest-neighbor classifier produced a mean sensitivity of 95% and 98% and a mean specificity of 78% and of 79%, respectively.

Conclusions: In conclusion, our study suggests that computer-aided differentiation of melanoma from benign pigmented lesions obtained with DB-Mips is feasible and, above all, reliable. In fact, the same instrumentations used in different units provided similar diagnostic accuracy. Whether this would improve early diagnosis of melanoma and/or reducing unnecessary surgery needs to be demonstrated by a randomized clinical trial.




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P. Rubegni, M. Burroni, A. Andreassi, and M. Fimiani
The Role of Dermoscopy and Digital Dermoscopy Analysis in the Diagnosis of Pigmented Skin Lesions
Arch Dermatol, November 1, 2005; 141(11): 1444 - 1446.
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HOME HELP FEEDBACK SUBSCRIPTIONS ARCHIVE SEARCH TABLE OF CONTENTS
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Cancer Epidemiology Biomarkers & Prevention Molecular Cancer Therapeutics
Molecular Cancer Research Cancer Prevention Research
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Annual Meeting Education Book Meeting Abstracts Online
Copyright © 2004 by the American Association for Cancer Research.