Department of Computer Engineering, Jordan University of Science and Technology, Irbid 22110, Jordan.
Sensors (Basel). 2022 Jun 30;22(13):4963. doi: 10.3390/s22134963.
Skin cancer (melanoma and non-melanoma) is one of the most common cancer types and leads to hundreds of thousands of yearly deaths worldwide. It manifests itself through abnormal growth of skin cells. Early diagnosis drastically increases the chances of recovery. Moreover, it may render surgical, radiographic, or chemical therapies unnecessary or lessen their overall usage. Thus, healthcare costs can be reduced. The process of diagnosing skin cancer starts with dermoscopy, which inspects the general shape, size, and color characteristics of skin lesions, and suspected lesions undergo further sampling and lab tests for confirmation. Image-based diagnosis has undergone great advances recently due to the rise of deep learning artificial intelligence. The work in this paper examines the applicability of raw deep transfer learning in classifying images of skin lesions into seven possible categories. Using the HAM1000 dataset of dermoscopy images, a system that accepts these images as input without explicit feature extraction or preprocessing was developed using 13 deep transfer learning models. Extensive evaluation revealed the advantages and shortcomings of such a method. Although some cancer types were correctly classified with high accuracy, the imbalance of the dataset, the small number of images in some categories, and the large number of classes reduced the best overall accuracy to 82.9%.
皮肤癌(黑色素瘤和非黑色素瘤)是最常见的癌症类型之一,导致全球每年数十万人死亡。它表现为皮肤细胞的异常生长。早期诊断大大增加了康复的机会。此外,它可能使手术、放射学或化学疗法变得不必要或减少其总体使用。因此,可以降低医疗保健成本。皮肤癌的诊断过程始于皮肤镜检查,它检查皮肤病变的一般形状、大小和颜色特征,疑似病变需要进一步进行采样和实验室检查以确认。由于深度学习人工智能的兴起,基于图像的诊断最近取得了很大的进展。本文研究了原始深度迁移学习在将皮肤病变图像分类为七个可能类别中的应用。使用 HAM1000 数据集的皮肤镜图像,开发了一个系统,该系统接受这些图像作为输入,而无需显式特征提取或预处理,使用了 13 个深度迁移学习模型。广泛的评估揭示了这种方法的优缺点。尽管一些癌症类型被正确地分类为高准确率,但数据集的不平衡、某些类别图像数量少和类别数量多,将最佳整体准确率降低到 82.9%。