Architecture and Computer Technology Department (ATC), E.T.S. Ingeniería Informática, Universidad de Sevilla, 41012 Seville, Spain.
Robotics and Technology of Computers Lab (RTC), E.T.S. Ingeniería Informática, Universidad de Sevilla, 41012 Seville, Spain.
Sensors (Basel). 2023 Aug 12;23(16):7134. doi: 10.3390/s23167134.
Monkeypox is a smallpox-like disease that was declared a global health emergency in July 2022. Because of this resemblance, it is not easy to distinguish a monkeypox rash from other similar diseases; however, due to the novelty of this disease, there are no widely used databases for this purpose with which to develop image-based classification algorithms. Therefore, three significant contributions are proposed in this work: first, the development of a publicly available dataset of monkeypox images; second, the development of a classification system based on convolutional neural networks in order to automatically distinguish monkeypox marks from those produced by other diseases; and, finally, the use of explainable AI tools for ensemble networks. For point 1, free images of monkeypox cases and other diseases have been searched in government databases and processed until we are left with only a section of the skin of the patients in each case. For point 2, various pre-trained models were used as classifiers and, in the second instance, combinations of these were used to form ensembles. And, for point 3, this is the first documented time that an explainable AI technique (like GradCAM) is applied to the results of ensemble networks. Among all the tests, the accuracy reaches 93% in the case of single pre-trained networks, and up to 98% using an ensemble of three networks (ResNet50, EfficientNetB0, and MobileNetV2). Comparing these results with previous work, a substantial improvement in classification accuracy is observed.
猴痘是一种类似于天花的疾病,于 2022 年 7 月被宣布为全球卫生紧急事件。由于这种相似性,猴痘皮疹不容易与其他类似疾病区分开来;然而,由于这种疾病的新颖性,目前没有广泛用于开发基于图像的分类算法的数据库。因此,本工作提出了三个重要贡献:首先,开发了一个公共的猴痘图像数据集;其次,开发了一种基于卷积神经网络的分类系统,以便自动区分猴痘标记与其他疾病产生的标记;最后,使用可解释 AI 工具对集成网络进行解释。对于第 1 点,在政府数据库中搜索了免费的猴痘病例和其他疾病的图像,并对其进行了处理,直到我们只留下每个病例中患者皮肤的一部分。对于第 2 点,使用了各种预训练模型作为分类器,在第二种情况下,将这些模型组合起来形成集成。对于第 3 点,这是首次将可解释 AI 技术(如 GradCAM)应用于集成网络的结果。在所有测试中,单预训练网络的准确率达到 93%,使用三个网络(ResNet50、EfficientNetB0 和 MobileNetV2)的集成网络的准确率最高可达 98%。与之前的工作相比,分类准确率有了显著提高。