Onyema Edeh Michael, Gunapriya B, Kavin Balasubramanian Prabhu, Uddin Mueen, Kumar Priyan Malarvizhi, Mazhar Tehseen, Saeed Mamoon M
Department of Science Education, Faculty of Education, Alex Ekwueme Federal University, Ndufu-Alike, Abakaliki, Nigeria.
Research Institute of IoT Cybersecurity, Department of Electronic Engineering, National Kaohsiung University of Science and Technology, Kaohsiung City, Taiwan.
Sci Rep. 2025 Jul 1;15(1):21212. doi: 10.1038/s41598-025-05324-2.
Accurate identification of Mpox is essential for timely diagnosis and treatment. However, traditional image-based diagnostic methods often struggle with challenges such as body hair obscuring skin lesions and complicating accurate assessment. To address this, the study introduces a novel deep learning-based approach to enhance Mpox detection by integrating a hair removal process with an upgraded U-Net model. The research developed the "Mpox Skin Lesion Dataset (MSLD)" by combining images of skin lesions from Mpox, chickenpox, and measles. The proposed methodology includes a pre-processing step to effectively remove hair from dermoscopic images, improving the visibility of skin lesions. This is followed by applying an enhanced U-Net architecture, optimized for efficient feature extraction and segmentation, to detect and classify Mpox lesions accurately. Experimental evaluations indicate that the proposed approach significantly improves the accuracy of Mpox detection, surpassing the performance of existing models. The achieved accuracy, recall, and F1 scores for Mpox detection were 90%, 89%, and 86%, respectively. The proposed method offers a valuable tool for assisting physicians and healthcare practitioners in the early diagnosis of Mpox, contributing to improved clinical outcomes and better management of the disease.
准确识别猴痘对于及时诊断和治疗至关重要。然而,传统的基于图像的诊断方法常常面临诸如体毛遮挡皮肤病变并使准确评估复杂化等挑战。为解决这一问题,该研究引入了一种新颖的基于深度学习的方法,通过将毛发去除过程与升级后的U-Net模型相结合来增强猴痘检测。该研究通过合并猴痘、水痘和麻疹的皮肤病变图像,开发了“猴痘皮肤病变数据集(MSLD)”。所提出的方法包括一个预处理步骤,以有效地从皮肤镜图像中去除毛发,提高皮肤病变的可见性。接下来应用一种经过优化以实现高效特征提取和分割的增强型U-Net架构,以准确检测和分类猴痘病变。实验评估表明,所提出的方法显著提高了猴痘检测的准确性,超过了现有模型的性能。猴痘检测所达到的准确率、召回率和F1分数分别为90%、89%和86%。所提出的方法为协助医生和医疗从业者早期诊断猴痘提供了一个有价值的工具,有助于改善临床结果和更好地管理该疾病。