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A multi-class skin Cancer classification using deep convolutional neural networks

机译:使用深卷积神经网络的多级皮肤癌分类

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Skin Cancer accounts for one-third of all diagnosed cancers worldwide. The prevalence of skin cancers have been rising over the past decades. In recent years, use of dermoscopy has enhanced the diagnostic capability of skin cancer. The accurate diagnosis of skin cancer is challenging for dermatologists as multiple skin cancer types may appear similar in appearance. The dermatologists have an average accuracy of 62% to 80% in skin cancer diagnosis. The research community has been made significant progress in developing automated tools to assist dermatologists in decision making. In this work, we propose an automated computer-aided diagnosis system for multi-class skin (MCS) cancer classification with an exceptionally high accuracy. The proposed method outperformed both expert dermatologists and contemporary deep learning methods for MCS cancer classification. We performed fine-tuning over seven classes of HAM 10000 dataset and conducted a comparative study to analyse the performance of five pre-trained convolutional neural networks (CNNs) and four ensemble models. The maximum accuracy of 93.20% for individual model amongst the set of models whereas maximum accuracy of 92.83% for ensemble model is reported in this paper. We propose use of ResNeXtlOl for the MCS cancer classification owing to its optimized architecture and ability to gain higher accuracy.
机译:皮肤癌占全世界所有诊断癌症的三分之一。在过去的几十年里,皮肤癌的患病率一直在上升。近年来,使用Dermoscopy提高了皮肤癌的诊断能力。皮肤癌的准确诊断对于皮肤科医生来说是挑战,因为多种皮肤癌类型可能出现类似。皮肤科医生在皮肤癌症诊断中的平均准确性为62%至80%。研究界在开发自动化工具方面取得了重大进展,以帮助Deromatologist在决策中。在这项工作中,我们提出了一种用于多级皮肤(MCS)癌症分类的自动化计算机辅助诊断系统,具有极高的精度。该方法的表现优于专家皮肤科医生和MCS癌症分类的当代深层学习方法。我们在七种类别的火腿10000数据集中进行了微调,并进行了比较研究,以分析五个预先训练的卷积神经网络(CNNS)和四个集合模型的性能。在模型集中的各个模型的最大精度为93.20%,而集合模型的最大精度为92.83%。由于其优化的架构和获得更高准确性的能力,我们建议使用ResnextLol进行MCS癌症分类。

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