论文标题

使用深度学习模型检测Monkeypox皮肤病变:可行性研究

Monkeypox Skin Lesion Detection Using Deep Learning Models: A Feasibility Study

论文作者

Ali, Shams Nafisa, Ahmed, Md. Tazuddin, Paul, Joydip, Jahan, Tasnim, Sani, S. M. Sakeef, Noor, Nawsabah, Hasan, Taufiq

论文摘要

由于其在非洲以外的40多个国家 /地区的迅速传播,最近的蒙基托斯爆发已成为公共卫生的关注。由于与水痘和麻疹的相似之处,蒙基托斯在早期阶段的临床诊断是具有挑战性的。如果不容易获得验证性聚合酶链反应(PCR)测试,那么计算机辅助检测蒙基氧基病变可能对可疑病例的监视和快速鉴定有益。只要有足够的训练示例,深度学习方法在自动检测皮肤病变中有效。但是,到目前为止,此类数据集尚未用于猴蛋白酶疾病。在当前的研究中,我们首先开发``Monkeypox皮肤病变数据集(MSLD)。即,VGG-16,Resnet50和InceptionV3被用来对Monkeypox和其他疾病进行分类。 $ 79.26(\ pm1.05 \%)$分别是一个原型网络应用程序。

The recent monkeypox outbreak has become a public health concern due to its rapid spread in more than 40 countries outside Africa. Clinical diagnosis of monkeypox in an early stage is challenging due to its similarity with chickenpox and measles. In cases where the confirmatory Polymerase Chain Reaction (PCR) tests are not readily available, computer-assisted detection of monkeypox lesions could be beneficial for surveillance and rapid identification of suspected cases. Deep learning methods have been found effective in the automated detection of skin lesions, provided that sufficient training examples are available. However, as of now, such datasets are not available for the monkeypox disease. In the current study, we first develop the ``Monkeypox Skin Lesion Dataset (MSLD)" consisting skin lesion images of monkeypox, chickenpox, and measles. The images are mainly collected from websites, news portals, and publicly accessible case reports. Data augmentation is used to increase the sample size, and a 3-fold cross-validation experiment is set up. In the next step, several pre-trained deep learning models, namely, VGG-16, ResNet50, and InceptionV3 are employed to classify monkeypox and other diseases. An ensemble of the three models is also developed. ResNet50 achieves the best overall accuracy of $82.96(\pm4.57\%)$, while VGG16 and the ensemble system achieved accuracies of $81.48(\pm6.87\%)$ and $79.26(\pm1.05\%)$, respectively. A prototype web-application is also developed as an online monkeypox screening tool. While the initial results on this limited dataset are promising, a larger demographically diverse dataset is required to further enhance the generalizability of these models.

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