Deep learning, sparse coding, and SVM for melanoma recognition in dermoscopy images Conference Paper


Authors: Codella, N.; Cai, J.; Abedini, M.; Garnavi, R.; Halpern, A.; Smith, J. R.
Title: Deep learning, sparse coding, and SVM for melanoma recognition in dermoscopy images
Conference Title: 6th International Workshop on Machine Learning in Medical Imaging (MLMI)/18th International Conference on Medical Image Computing and Computer Assisted Intervention (MICCAI)
Abstract: This work presents an approach for melanoma recognition in dermoscopy images that combines deep learning, sparse coding, and support vector machine (SVM) learning algorithms. One of the beneficial aspects of the proposed approach is that unsupervised learning within the domain, and feature transfer from the domain of natural photographs, eliminates the need of annotated data in the target task to learn good features. The applied feature transfer also allows the system to draw analogies between observations in dermoscopic images and observations in the natural world, mimicking the process clinical experts themselves employ to describe patterns in skin lesions. To evaluate the methodology, performance is measured on a dataset obtained from the International Skin Imaging Collaboration, containing 2624 clinical cases of melanoma (334), atypical nevi (144), and benign lesions (2146). The approach is compared to the prior state-of-art method on this dataset. Two-fold cross-validation is performed 20 times for evaluation (40 total experiments), and two discrimination tasks are examined: 1) melanoma vs. all non-melanoma lesions, and 2) melanoma vs. atypical lesions only. The presented approach achieves an accuracy of 93.1% (94.9% sensitivity, and 92.8% specificity) for the first task, and 73.9% accuracy (73.8% sensitivity, and 74.3% specificity) for the second task. In comparison, prior state-of-art ensemble modeling approaches alone yield 91.2% accuracy (93.0% sensitivity, and 91.0% specificity) first the first task, and 71.5% accuracy (72.7% sensitivity, and 68.9% specificity) for the second. Differences in performance were statistically significant (p < 0.05), suggesting the proposed approach is an effective improvement over prior state-of-art. © Springer International Publishing Switzerland 2015.
Keywords: dermoscopy; oncology; medical imaging; artificial intelligence; diagnosis; dermatology; support vector machines; image coding; learning systems; codes (symbols); learning algorithms; deep learning; melanoma recognition; sparse coding; computer aided instruction; beneficial aspects; discrimination tasks; state-of-art methods; two-fold-cross-validation
Journal Title Lecture Notes in Computer Science
Volume: 9352
Conference Dates: 2015 Oct 5
Conference Location: Munich, Germany
ISBN: 0302-9743
Publisher: Springer  
Date Published: 2015-01-01
Start Page: 118
End Page: 126
Language: English
DOI: 10.1007/978-3-319-24888-2_15
PROVIDER: scopus
DOI/URL:
Notes: Chapter in "Machine Learning in Medical Imaging" (ISBN: 978-3-319-24887-5) -- Conference Paper -- Conference code: 152029 -- Export Date: 3 February 2016 -- Source: Scopus
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  1. Allan C Halpern
    396 Halpern