Abbas Sagheer, Ahmed Fahad, Khan Wasim Ahmad, Ahmad Munir, Khan Muhammad Adnan, Ghazal Taher M
Department of Computer Science, Prince Mohammad Bin Fahd University, 34754, Al-Khobar, Dhahran, KSA, Saudi Arabia.
School of Computer Science, National College of Business Administration and Economics, Lahore, 54000, Pakistan.
Sci Rep. 2025 Jan 11;15(1):1746. doi: 10.1038/s41598-024-83966-4.
Skin diseases impact millions of people around the world and pose a severe risk to public health. These diseases have a wide range of effects on the skin's structure, functionality, and appearance. Identifying and predicting skin diseases are laborious processes that require a complete physical examination, a review of the patient's medical history, and proper laboratory diagnostic testing. Additionally, it necessitates a significant number of histological and clinical characteristics for examination and subsequent treatment. As a disease's complexity and quantity of features grow, identifying and predicting it becomes more challenging. This research proposes a deep learning (DL) model utilizing transfer learning (TL) to quickly identify skin diseases like chickenpox, measles, and monkeypox. A pre-trained VGG16 is used for transfer learning. The VGG16 can identify and predict diseases more quickly by learning symptom patterns. Images of the skin from the four classes of chickenpox, measles, monkeypox, and normal are included in the dataset. The dataset is separated into training and testing. The experimental results performed on the dataset demonstrate that the VGG16 model can identify and predict skin diseases with 93.29% testing accuracy. However, the VGG16 model does not explain why and how the system operates because deep learning models are black boxes. Deep learning models' opacity stands in the way of their widespread application in the healthcare sector. In order to make this a valuable system for the health sector, this article employs layer-wise relevance propagation (LRP) to determine the relevance scores of each input. The identified symptoms provide valuable insights that could support timely diagnosis and treatment decisions for skin diseases.
皮肤病影响着全球数百万人,对公众健康构成严重威胁。这些疾病对皮肤的结构、功能和外观有广泛影响。识别和预测皮肤病是费力的过程,需要进行全面的体格检查、回顾患者病史以及进行适当的实验室诊断测试。此外,这还需要大量的组织学和临床特征用于检查及后续治疗。随着疾病复杂性和特征数量的增加,识别和预测变得更具挑战性。本研究提出一种利用迁移学习(TL)的深度学习(DL)模型,以快速识别水痘、麻疹和猴痘等皮肤病。使用预训练的VGG16进行迁移学习。VGG16通过学习症状模式可以更快地识别和预测疾病。数据集中包含水痘、麻疹、猴痘和正常这四类皮肤的图像。数据集被分为训练集和测试集。在数据集上进行的实验结果表明,VGG16模型能够以93.29%的测试准确率识别和预测皮肤病。然而,VGG16模型无法解释系统为何以及如何运行,因为深度学习模型是黑箱。深度学习模型的不透明性阻碍了它们在医疗保健领域的广泛应用。为了使该系统对卫生部门有价值,本文采用逐层相关性传播(LRP)来确定每个输入的相关性分数。识别出的症状提供了有价值的见解,可为皮肤病的及时诊断和治疗决策提供支持。