Azeem Muhammad, Kiani Kaveh, Mansouri Taha, Topping Nathan
School of Science, Engineering & Environment, University of Salford, Manchester M5 4WT, UK.
Cancers (Basel). 2023 Dec 24;16(1):108. doi: 10.3390/cancers16010108.
Skin cancer is a widespread disease that typically develops on the skin due to frequent exposure to sunlight. Although cancer can appear on any part of the human body, skin cancer accounts for a significant proportion of all new cancer diagnoses worldwide. There are substantial obstacles to the precise diagnosis and classification of skin lesions because of morphological variety and indistinguishable characteristics across skin malignancies. Recently, deep learning models have been used in the field of image-based skin-lesion diagnosis and have demonstrated diagnostic efficiency on par with that of dermatologists. To increase classification efficiency and accuracy for skin lesions, a cutting-edge multi-layer deep convolutional neural network termed SkinLesNet was built in this study. The dataset used in this study was extracted from the PAD-UFES-20 dataset and was augmented. The PAD-UFES-20-Modified dataset includes three common forms of skin lesions: seborrheic keratosis, nevus, and melanoma. To comprehensively assess SkinLesNet's performance, its evaluation was expanded beyond the PAD-UFES-20-Modified dataset. Two additional datasets, HAM10000 and ISIC2017, were included, and SkinLesNet was compared to the widely used ResNet50 and VGG16 models. This broader evaluation confirmed SkinLesNet's effectiveness, as it consistently outperformed both benchmarks across all datasets.
皮肤癌是一种常见疾病,通常由于频繁暴露于阳光下而在皮肤上发生。尽管癌症可出现在人体的任何部位,但皮肤癌在全球所有新增癌症诊断病例中占相当大的比例。由于皮肤病变的形态多样且不同皮肤恶性肿瘤的特征难以区分,因此对皮肤病变进行精确诊断和分类存在很大障碍。最近,深度学习模型已被应用于基于图像的皮肤病变诊断领域,并已证明其诊断效率与皮肤科医生相当。为了提高皮肤病变的分类效率和准确性,本研究构建了一种名为SkinLesNet的前沿多层深度卷积神经网络。本研究中使用的数据集是从PAD-UFES-20数据集中提取并进行了扩充。PAD-UFES-20修改数据集包括三种常见的皮肤病变形式:脂溢性角化病、痣和黑色素瘤。为了全面评估SkinLesNet的性能,其评估范围扩展到了PAD-UFES-20修改数据集之外。另外纳入了两个数据集HAM10000和ISIC2017,并将SkinLesNet与广泛使用的ResNet50和VGG16模型进行了比较。这种更广泛的评估证实了SkinLesNet的有效性,因为它在所有数据集中始终优于这两个基准模型。