Srinivasan M Nuthal, Sikkandar Mohamed Yacin, Alhashim Maryam, Chinnadurai M
Department of Electronics and Communication Engineering, E.G.S. Pillay Engineering College, Nagapattinam, 611002, Tamil Nadu, India.
Department of Medical Equipment Technology, College of Applied Medical Sciences, Majmaah University, Al Majmaah, 11952, Saudi Arabia.
Sci Rep. 2025 Jan 26;15(1):3296. doi: 10.1038/s41598-025-87993-7.
In response to the pressing need for the detection of Monkeypox caused by the Monkeypox virus (MPXV), this study introduces the Enhanced Spatial-Awareness Capsule Network (ESACN), a Capsule Network architecture designed for the precise multi-class classification of dermatological images. Addressing the shortcomings of traditional Machine Learning and Deep Learning models, our ESACN model utilizes the dynamic routing and spatial hierarchy capabilities of CapsNets to differentiate complex patterns such as those seen in monkeypox, chickenpox, measles, and normal skin presentations. CapsNets' inherent ability to recognize and process crucial spatial relationships within images outperforms conventional CNNs, particularly in tasks that require the distinction of visually similar classes. Our model's superior performance, demonstrated through rigorous evaluation, exhibits significant improvements in accuracy, precision, recall, and F1 score, even with limited data. The results highlight the potential of ESACN as a reliable tool for enhancing diagnostic accuracy in medical settings. In our case study, the ESACN model was applied to a dataset comprising 659 images across four classes: 178 images of Monkeypox, 171 of Chickenpox, 80 of Measles, and 230 of Normal skin conditions. This case study underscores the model's effectiveness in real-world applications, providing robust and accurate classification that could greatly aid in early diagnosis and treatment planning in clinical environments.
为满足对猴痘病毒(MPXV)引起的猴痘进行检测的迫切需求,本研究引入了增强空间感知胶囊网络(ESACN),这是一种专为皮肤病图像的精确多类分类而设计的胶囊网络架构。针对传统机器学习和深度学习模型的缺点,我们的ESACN模型利用胶囊网络的动态路由和空间层次能力来区分复杂模式,如在猴痘、水痘、麻疹和正常皮肤表现中看到的模式。胶囊网络识别和处理图像内关键空间关系的固有能力优于传统的卷积神经网络(CNN),特别是在需要区分视觉上相似类别的任务中。通过严格评估证明,我们的模型具有卓越性能,即使在数据有限的情况下,在准确率、精确率、召回率和F1分数方面也有显著提高。结果突出了ESACN作为提高医疗环境中诊断准确性的可靠工具的潜力。在我们的案例研究中,ESACN模型被应用于一个包含四个类别的659张图像的数据集:178张猴痘图像、171张水痘图像、80张麻疹图像和230张正常皮肤状况图像。该案例研究强调了该模型在实际应用中的有效性,提供了强大而准确的分类,这对临床环境中的早期诊断和治疗规划有很大帮助。