Multi-class multi-level classification algorithm for skin lesions classification using machine learning techniques

•Proposed an intelligent diagnosis framework for skin lesion classification.•Designed a multi-class multi-level algorithm to enhance the accuracy.•Proposed improved techniques for noise removal from the images.•Deep learning and  other machine learning approaches developed and compared.•So far, the...

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Veröffentlicht in:Expert systems with applications 2020-03, Vol.141, p.112961, Article 112961
Hauptverfasser: Hameed, Nazia, Shabut, Antesar M., Ghosh, Miltu K., Hossain, M.A.
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container_start_page 112961
container_title Expert systems with applications
container_volume 141
creator Hameed, Nazia
Shabut, Antesar M.
Ghosh, Miltu K.
Hossain, M.A.
description •Proposed an intelligent diagnosis framework for skin lesion classification.•Designed a multi-class multi-level algorithm to enhance the accuracy.•Proposed improved techniques for noise removal from the images.•Deep learning and  other machine learning approaches developed and compared.•So far, the best multi-class result (∼96.5% accuracy) achieved using deep learning. Skin diseases remain a major cause of disability worldwide and contribute approximately 1.79% of the global burden of disease measured in disability-adjusted life years. In the United Kingdom alone, 60% of the population suffer from skin diseases during their lifetime. In this paper, we propose an intelligent digital diagnosis scheme to improve the classification accuracy of multiple diseases. A Multi-Class Multi-Level (MCML) classification algorithm inspired by the “divide and conquer” rule is explored to address the research challenges. The MCML classification algorithm is implemented using traditional machine learning and advanced deep learning approaches. Improved techniques are proposed for noise removal in the traditional machine learning approach. The proposed algorithm is evaluated on 3672 classified images, collected from different sources and the diagnostic accuracy of 96.47% is achieved. To verify the performance of the proposed algorithm, its metrics are compared with the Multi-Class Single-Level classification algorithm which is the main algorithm used in most of the existing literature. The results also indicate that the MCML classification algorithm is capable of enhancing the classification performance of multiple skin lesions.
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Skin diseases remain a major cause of disability worldwide and contribute approximately 1.79% of the global burden of disease measured in disability-adjusted life years. In the United Kingdom alone, 60% of the population suffer from skin diseases during their lifetime. In this paper, we propose an intelligent digital diagnosis scheme to improve the classification accuracy of multiple diseases. A Multi-Class Multi-Level (MCML) classification algorithm inspired by the “divide and conquer” rule is explored to address the research challenges. The MCML classification algorithm is implemented using traditional machine learning and advanced deep learning approaches. Improved techniques are proposed for noise removal in the traditional machine learning approach. The proposed algorithm is evaluated on 3672 classified images, collected from different sources and the diagnostic accuracy of 96.47% is achieved. 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subjects Algorithms
Artificial intelligence
Classification
Computer-aided diagnosise
Deep learning
Diagnostic systems
Eczema classification
Lesions
Machine learning
Melanoma classification
Skin diseases
Skin lesion classification
Texture & colour features
title Multi-class multi-level classification algorithm for skin lesions classification using machine learning techniques
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