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

机译:基于机器学习技术的皮肤损伤分类的多类多级分类算法

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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. 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. (C) 2019 Elsevier Ltd. All rights reserved.
机译:皮肤疾病仍然是全球范围内致残的主要原因,在致残调整生命年中,皮肤疾病约占全球疾病负担的1.79%。仅在英国,一生中就有60%的人口患有皮肤疾病。在本文中,我们提出了一种智能的数字诊断方案,以提高多种疾病的分类准确性。探索了一种基于“分而治之”规则的多类多级(MCML)分类算法,以应对研究挑战。 MCML分类算法是使用传统机器学习和高级深度学习方法实现的。在传统的机器学习方法中,提出了用于消除噪声的改进技术。该算法在3672种分类图像上进行了评估,这些图像是从不同来源收集的,诊断准确率达到96.47%。为了验证所提出算法的性能,将其指标与多类单级分类算法进行了比较,后者是大多数现有文献中使用的主要算法。结果还表明,MCML分类算法能够增强多种皮肤病变的分类性能。 (C)2019 Elsevier Ltd.保留所有权利。

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