Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection

Malignant melanoma is the deadliest form of skin cancer and, in recent years, is rapidly growing in terms of the incidence worldwide rate. The most effective approach to targeted treatment is early diagnosis. Deep learning algorithms, specifically convolutional neural networks, represent a methodolo...

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Main Authors: Mario Manzo, Simone Pellino
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Journal of Imaging
Subjects:
Online Access:https://www.mdpi.com/2313-433X/6/12/129
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spelling doaj-5e913c3ca8af4540914321ebb7f6571b2020-11-27T08:11:49ZengMDPI AGJournal of Imaging2313-433X2020-11-01612912910.3390/jimaging6120129Bucket of Deep Transfer Learning Features and Classification Models for Melanoma DetectionMario Manzo0Simone Pellino1Information Technology Services, University of Naples “L’Orientale”, 80121 Naples, ItalyComputer Science Teacher, I.S. Mattei Aversa M.I.U.R., 81031 Rome, ItalyMalignant melanoma is the deadliest form of skin cancer and, in recent years, is rapidly growing in terms of the incidence worldwide rate. The most effective approach to targeted treatment is early diagnosis. Deep learning algorithms, specifically convolutional neural networks, represent a methodology for the image analysis and representation. They optimize the features design task, essential for an automatic approach on different types of images, including medical. In this paper, we adopted pretrained deep convolutional neural networks architectures for the image representation with purpose to predict skin lesion melanoma. Firstly, we applied a transfer learning approach to extract image features. Secondly, we adopted the transferred learning features inside an ensemble classification context. Specifically, the framework trains individual classifiers on balanced subspaces and combines the provided predictions through statistical measures. Experimental phase on datasets of skin lesion images is performed and results obtained show the effectiveness of the proposed approach with respect to state-of-the-art competitors.https://www.mdpi.com/2313-433X/6/12/129melanoma detectiondeep learningtransfer learningensemble classification
collection DOAJ
language English
format Article
sources DOAJ
author Mario Manzo
Simone Pellino
spellingShingle Mario Manzo
Simone Pellino
Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection
Journal of Imaging
melanoma detection
deep learning
transfer learning
ensemble classification
author_facet Mario Manzo
Simone Pellino
author_sort Mario Manzo
title Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection
title_short Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection
title_full Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection
title_fullStr Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection
title_full_unstemmed Bucket of Deep Transfer Learning Features and Classification Models for Melanoma Detection
title_sort bucket of deep transfer learning features and classification models for melanoma detection
publisher MDPI AG
series Journal of Imaging
issn 2313-433X
publishDate 2020-11-01
description Malignant melanoma is the deadliest form of skin cancer and, in recent years, is rapidly growing in terms of the incidence worldwide rate. The most effective approach to targeted treatment is early diagnosis. Deep learning algorithms, specifically convolutional neural networks, represent a methodology for the image analysis and representation. They optimize the features design task, essential for an automatic approach on different types of images, including medical. In this paper, we adopted pretrained deep convolutional neural networks architectures for the image representation with purpose to predict skin lesion melanoma. Firstly, we applied a transfer learning approach to extract image features. Secondly, we adopted the transferred learning features inside an ensemble classification context. Specifically, the framework trains individual classifiers on balanced subspaces and combines the provided predictions through statistical measures. Experimental phase on datasets of skin lesion images is performed and results obtained show the effectiveness of the proposed approach with respect to state-of-the-art competitors.
topic melanoma detection
deep learning
transfer learning
ensemble classification
url https://www.mdpi.com/2313-433X/6/12/129
work_keys_str_mv AT mariomanzo bucketofdeeptransferlearningfeaturesandclassificationmodelsformelanomadetection
AT simonepellino bucketofdeeptransferlearningfeaturesandclassificationmodelsformelanomadetection
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