Gouda Walaa, Sama Najm Us, Al-Waakid Ghada, Humayun Mamoona, Jhanjhi Noor Zaman
Department of Computer Engineering and Network, College of Computer and Information Sciences, Jouf University, Sakaka 72341, Al Jouf, Saudi Arabia.
Electrical Engineering Department, Faculty of Engineering at Shoubra, Benha University, Cairo 4272077, Egypt.
Healthcare (Basel). 2022 Jun 24;10(7):1183. doi: 10.3390/healthcare10071183.
An increasing number of genetic and metabolic anomalies have been determined to lead to cancer, generally fatal. Cancerous cells may spread to any body part, where they can be life-threatening. Skin cancer is one of the most common types of cancer, and its frequency is increasing worldwide. The main subtypes of skin cancer are squamous and basal cell carcinomas, and melanoma, which is clinically aggressive and responsible for most deaths. Therefore, skin cancer screening is necessary. One of the best methods to accurately and swiftly identify skin cancer is using deep learning (DL). In this research, the deep learning method convolution neural network (CNN) was used to detect the two primary types of tumors, malignant and benign, using the ISIC2018 dataset. This dataset comprises 3533 skin lesions, including benign, malignant, nonmelanocytic, and melanocytic tumors. Using ESRGAN, the photos were first retouched and improved. The photos were augmented, normalized, and resized during the preprocessing step. Skin lesion photos could be classified using a CNN method based on an aggregate of results obtained after many repetitions. Then, multiple transfer learning models, such as Resnet50, InceptionV3, and Inception Resnet, were used for fine-tuning. In addition to experimenting with several models (the designed CNN, Resnet50, InceptionV3, and Inception Resnet), this study's innovation and contribution are the use of ESRGAN as a preprocessing step. Our designed model showed results comparable to the pretrained model. Simulations using the ISIC 2018 skin lesion dataset showed that the suggested strategy was successful. An 83.2% accuracy rate was achieved by the CNN, in comparison to the Resnet50 (83.7%), InceptionV3 (85.8%), and Inception Resnet (84%) models.
越来越多的遗传和代谢异常已被确定会导致癌症,通常是致命的。癌细胞可能扩散到身体的任何部位,在那里它们可能会危及生命。皮肤癌是最常见的癌症类型之一,其发病率在全球范围内呈上升趋势。皮肤癌的主要亚型是鳞状细胞癌和基底细胞癌,以及黑色素瘤,黑色素瘤在临床上具有侵袭性,是导致大多数死亡的原因。因此,皮肤癌筛查是必要的。准确快速识别皮肤癌的最佳方法之一是使用深度学习(DL)。在本研究中,使用深度学习方法卷积神经网络(CNN),利用ISIC2018数据集检测两种主要类型的肿瘤,即恶性肿瘤和良性肿瘤。该数据集包含3533个皮肤病变,包括良性、恶性、非黑素细胞性和黑素细胞性肿瘤。使用ESRGAN对照片进行了首次修饰和改进。在预处理步骤中对照片进行了增强、归一化和调整大小。基于多次重复后获得的结果汇总,使用CNN方法对皮肤病变照片进行分类。然后,使用多个迁移学习模型,如Resnet50、InceptionV3和Inception Resnet进行微调。除了对几种模型(设计的CNN、Resnet50、InceptionV3和Inception Resnet)进行实验外,本研究的创新和贡献在于将ESRGAN用作预处理步骤。我们设计的模型显示出与预训练模型相当的结果。使用ISIC 2018皮肤病变数据集进行的模拟表明,所提出的策略是成功的。CNN的准确率为83.2%,相比之下,Resnet50(83.7%)、InceptionV3(85.8%)和Inception Resnet(84%)模型的准确率分别为83.7%、85.8%和84%。