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Erschienen in: Memetic Computing 4/2014

01.12.2014 | Regular research paper

An ensemble classification approach for melanoma diagnosis

verfasst von: Gerald Schaefer, Bartosz Krawczyk, M. Emre Celebi, Hitoshi Iyatomi

Erschienen in: Memetic Computing | Ausgabe 4/2014

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Abstract

Malignant melanoma is the deadliest form of skin cancer, and has, among cancer types, one of the most rapidly increasing incidence rates in the world. Early diagnosis is crucial, since if detected early, its cure is simple. In this paper, we present an effective approach to melanoma identification from dermoscopic images of skin lesions based on ensemble classification. First, we perform automatic border detection to segment the lesion from the background skin. Based on the extracted border, we extract a series of colour, texture and shape features. The derived features are then employed in a pattern classification stage for which we employ a novel, dedicated ensemble learning approach to address the class imbalance in the training data and to yield improved classification performance. Our classifier committee trains individual classifiers on balanced subspaces, removes redundant predictors based on a diversity measure and combines the remaining classifiers using a neural network fuser. Experimental results on a large dataset of dermoscopic skin lesion images show our approach to work well, to provide both high sensitivity and specificity, and our presented classifier ensemble to lead to statistically better recognition performance compared to other dedicated classification algorithms.

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Metadaten
Titel
An ensemble classification approach for melanoma diagnosis
verfasst von
Gerald Schaefer
Bartosz Krawczyk
M. Emre Celebi
Hitoshi Iyatomi
Publikationsdatum
01.12.2014
Verlag
Springer Berlin Heidelberg
Erschienen in
Memetic Computing / Ausgabe 4/2014
Print ISSN: 1865-9284
Elektronische ISSN: 1865-9292
DOI
https://doi.org/10.1007/s12293-014-0144-8

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