DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images

Abstract Background Melanoma results in the vast majority of skin cancer deaths during the last decades, even though this disease accounts for only one percent of all skin cancers’ instances. The survival rates of melanoma from early to terminal stages is more than fifty percent. Therefore, having t...

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Main Authors: Sara Nasiri, Julien Helsper, Matthias Jung, Madjid Fathi
Format: Article
Language:English
Published: BMC 2020-03-01
Series:BMC Bioinformatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12859-020-3351-y
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spelling doaj-fe7601e93d24439695ab34487c73d56f2020-11-25T02:25:01ZengBMCBMC Bioinformatics1471-21052020-03-0121S211310.1186/s12859-020-3351-yDePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion imagesSara Nasiri0Julien Helsper1Matthias Jung2Madjid Fathi3Department of Electrical Engineering and Computer Science, University of SiegenDepartment of Electrical Engineering and Computer Science, University of SiegenDepartment of Electrical Engineering and Computer Science, University of SiegenDepartment of Electrical Engineering and Computer Science, University of SiegenAbstract Background Melanoma results in the vast majority of skin cancer deaths during the last decades, even though this disease accounts for only one percent of all skin cancers’ instances. The survival rates of melanoma from early to terminal stages is more than fifty percent. Therefore, having the right information at the right time by early detection with monitoring skin lesions to find potential problems is essential to surviving this type of cancer. Results An approach to classify skin lesions using deep learning for early detection of melanoma in a case-based reasoning (CBR) system is proposed. This approach has been employed for retrieving new input images from the case base of the proposed system DePicT Melanoma Deep-CLASS to support users with more accurate recommendations relevant to their requested problem (e.g., image of affected area). The efficiency of our system has been verified by utilizing the ISIC Archive dataset in analysis of skin lesion classification as a benign and malignant melanoma. The kernel of DePicT Melanoma Deep-CLASS is built upon a convolutional neural network (CNN) composed of sixteen layers (excluding input and ouput layers), which can be recursively trained and learned. Our approach depicts an improved performance and accuracy in testing on the ISIC Archive dataset. Conclusions Our methodology derived from a deep CNN, generates case representations for our case base to use in the retrieval process. Integration of this approach to DePicT Melanoma CLASS, significantly improving the efficiency of its image classification and the quality of the recommendation part of the system. The proposed method has been tested and validated on 1796 dermoscopy images. Analyzed results indicate that it is efficient on malignancy detection.http://link.springer.com/article/10.1186/s12859-020-3351-yDeep learningEarly detectionSkin cancerMelanomaClassificationCase-based reasoning
collection DOAJ
language English
format Article
sources DOAJ
author Sara Nasiri
Julien Helsper
Matthias Jung
Madjid Fathi
spellingShingle Sara Nasiri
Julien Helsper
Matthias Jung
Madjid Fathi
DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
BMC Bioinformatics
Deep learning
Early detection
Skin cancer
Melanoma
Classification
Case-based reasoning
author_facet Sara Nasiri
Julien Helsper
Matthias Jung
Madjid Fathi
author_sort Sara Nasiri
title DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
title_short DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
title_full DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
title_fullStr DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
title_full_unstemmed DePicT Melanoma Deep-CLASS: a deep convolutional neural networks approach to classify skin lesion images
title_sort depict melanoma deep-class: a deep convolutional neural networks approach to classify skin lesion images
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2020-03-01
description Abstract Background Melanoma results in the vast majority of skin cancer deaths during the last decades, even though this disease accounts for only one percent of all skin cancers’ instances. The survival rates of melanoma from early to terminal stages is more than fifty percent. Therefore, having the right information at the right time by early detection with monitoring skin lesions to find potential problems is essential to surviving this type of cancer. Results An approach to classify skin lesions using deep learning for early detection of melanoma in a case-based reasoning (CBR) system is proposed. This approach has been employed for retrieving new input images from the case base of the proposed system DePicT Melanoma Deep-CLASS to support users with more accurate recommendations relevant to their requested problem (e.g., image of affected area). The efficiency of our system has been verified by utilizing the ISIC Archive dataset in analysis of skin lesion classification as a benign and malignant melanoma. The kernel of DePicT Melanoma Deep-CLASS is built upon a convolutional neural network (CNN) composed of sixteen layers (excluding input and ouput layers), which can be recursively trained and learned. Our approach depicts an improved performance and accuracy in testing on the ISIC Archive dataset. Conclusions Our methodology derived from a deep CNN, generates case representations for our case base to use in the retrieval process. Integration of this approach to DePicT Melanoma CLASS, significantly improving the efficiency of its image classification and the quality of the recommendation part of the system. The proposed method has been tested and validated on 1796 dermoscopy images. Analyzed results indicate that it is efficient on malignancy detection.
topic Deep learning
Early detection
Skin cancer
Melanoma
Classification
Case-based reasoning
url http://link.springer.com/article/10.1186/s12859-020-3351-y
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