IEEE J Biomed Health Inform. 2023 Feb;27(2):835-841. doi: 10.1109/JBHI.2022.3149288. Epub 2023 Feb 3.
Human skin disease, the most infectious dermatological ailment globally, is initially diagnosed by sight. Some clinical screening and dermoscopic analysis of skin biopsies and scrapings for accurate classification are medically compulsory. Classification of skin diseases using medical images is more challenging because of the complex formation and variant colors of the disease and data security concerns. Both the Convolution Neural Network (CNN) for classification and a federated learning approach for data privacy preservation show significant performance in the realm of medical imaging fields. In this paper, a custom image dataset was prepared with four classes of skin disease, a CNN model was suggested and compared with several benchmark CNN algorithms, and an experiment was carried out to ensure data privacy using a federated learning approach. An image augmentation strategy was followed to enlarge the dataset and make the model more general. The proposed model achieved a precision of 86%, 43%, and 60%, and a recall of 67%, 60%, and 60% for acne, eczema, and psoriasis. In the federated learning approach, after distributing the dataset among 1000, 1500, 2000, and 2500 clients, the model showed an average accuracy of 81.21%, 86.57%, 91.15%, and 94.15%. The CNN-based skin disease classification merged with the federated learning approach is a breathtaking concept to classify human skin diseases while ensuring data security.
人类皮肤病是全球最具传染性的皮肤科疾病,最初通过肉眼进行诊断。为了进行准确的分类,医学上必须进行一些临床筛选和皮肤活检及刮片的皮肤镜分析。由于疾病的复杂形态和多样颜色,以及对数据安全的担忧,使用医学图像对皮肤病进行分类更具挑战性。分类神经网络(CNN)和用于数据隐私保护的联邦学习方法在医学成像领域都表现出了显著的性能。在本文中,我们准备了一个包含四类皮肤病的自定义图像数据集,提出了一个 CNN 模型,并与几个基准 CNN 算法进行了比较,还通过联邦学习方法进行了确保数据隐私的实验。我们采用图像增强策略来扩大数据集,使模型更具通用性。所提出的模型在痤疮、湿疹和银屑病方面的精度分别达到了 86%、43%和 60%,召回率分别达到了 67%、60%和 60%。在联邦学习方法中,在将数据集分配给 1000、1500、2000 和 2500 个客户端后,模型的平均准确率分别为 81.21%、86.57%、91.15%和 94.15%。基于 CNN 的皮肤病分类与联邦学习方法相结合,是一种在确保数据安全的同时对人类皮肤病进行分类的惊人概念。