Skin Cancer Classification and Comparison of Pre-trained Models Performance using Transfer Learning

Subroto Singha, Priyangka Roy
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引用次数: 5

Abstract

Background: Skin cancer can quickly become fatal. An examination and biopsy of dermoscopic pictures are required to determine if skin cancer is malignant or benign. However, these examinations can be costly. Objective: In this research, we proposed deep learning (DL)-based approach to identify a melanoma, the most dangerous kind of skin cancer. DL is particularly excellent in learning traits and predicting cancer. However, DL requires a vast number of images. Method: We used image augmentation and transferring learning to categorise images into benign and malignant. We used the public ISIC 2020 database to train and test our models. The ISIC 2020 dataset classifies melanoma as malignant. Along with the categorization, the dataset was examined for variation. The training and validation accuracy of three of the best pre-trained models were compared. To minimise the loss, three optimizers were used: RMSProp, SGD, and ADAM. Results: We attained training accuracy of 98.73%, 99.12%, and 99.76% using ResNet, VGG16, and MobileNetV2, respectively. We achieved a validation accuracy of 98.39% using these three pre-trained models. Conclusion: The validation accuracy of 98.39% outperforms the prior pre-trained model. The findings of this study can be applied in medical science to help physicians diagnose skin cancer early and save lives.   Keywords: Deep Learning, ISIC 2020, Pre-trained Model, Skin Cancer, Transfer Learning
使用迁移学习的皮肤癌分类和预训练模型性能的比较
背景:皮肤癌可以很快致命。需要皮肤镜检查和活检来确定皮肤癌是恶性还是良性。然而,这些检查可能很昂贵。目的:在这项研究中,我们提出了一种基于深度学习(DL)的方法来识别黑色素瘤,这是一种最危险的皮肤癌。DL在学习特征和预测癌症方面尤其出色。然而,深度学习需要大量的图像。方法:采用图像增强和迁移学习的方法对图像进行良性和恶性分类。我们使用公共ISIC 2020数据库来训练和测试我们的模型。ISIC 2020数据集将黑色素瘤归类为恶性。在分类的同时,还检查了数据集的变化。比较了三种最佳预训练模型的训练和验证精度。为了尽量减少损失,使用了三个优化器:RMSProp、SGD和ADAM。结果:我们使用ResNet、VGG16和MobileNetV2分别获得了98.73%、99.12%和99.76%的训练准确率。使用这三个预训练模型,我们获得了98.39%的验证准确率。结论:验证准确率为98.39%,优于先前预训练模型。这项研究的发现可以应用于医学科学,帮助医生早期诊断皮肤癌,挽救生命。关键词:深度学习,ISIC 2020,预训练模型,皮肤癌,迁移学习
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