Volume 13, Issue 1 pp. 25-33

Combination of features from skin pattern and ABCD analysis for lesion classification

Zhishun She

Zhishun She

Faculty of Technology and Computer Science, NEWI, University of Wales, Wrexham, UK,

School of Electronic & Information Engineering, Southwest University, China

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Y. Liu

Y. Liu

Faculty of Technology and Computer Science, NEWI, University of Wales, Wrexham, UK,

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A. Damatoa

A. Damatoa

Faculty of Technology and Computer Science, NEWI, University of Wales, Wrexham, UK,

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First published: 22 January 2007
Citations: 68
Address:
Zhishun She
Faculty of Technology and Computer Science
University of Wales
NEWI
Wrexham
LL11 2AW, UK
Tel: +44 1978 293414
Fax: +44 1978 293168
e-mail:[email protected]

Abstract

Background/Purpose: It is known that the standard features for lesion classification are ABCD features, that is, asymmetry, border irregularity, colour variegation and diameter of lesion. However, the observation that skin patterning tends to be disrupted by malignant but not by benign skin lesions suggests that measurements of skin pattern disruption on simply captured white light optical skin images could be a useful contribution to a diagnostic feature set. Previous work using both skin line direction and intensity for lesion classification was encouraging. But these features have not been combined with the ABCD features. This paper explores the possibility of combing features from skin pattern and ABCD analysis to enhance classification performance.

Methods: The skin line direction and intensity were extracted from a local tensor matrix of skin pattern. Meanwhile, ABCD analysis was conducted to generate six features. They were asymmetry, border irregularity, colour (red, green and blue) variegations and diameter of lesion. The eight features of each case were combined using a principal component analysis (PCA) to produce two dominant features for lesion classification.

Results: A larger set of images containing malignant melanoma (MM) and benign naevi were processed as above and the scatter plot in a two-dimensional dominant feature space showed excellent separation of benign and malignant lesions. An ROC (receiver operating characteristic) plot enclosed an area of 0.94.

Conclusions: The classification results showed that the individual features have a limited discrimination capability and the combined features were promising to distinguish MM from benign lesion.

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