Uysal Fatih
Department of Electrical and Electronics Engineering, Faculty of Engineering and Architecture, Kafkas University, Kars TR 36100, Turkey.
Diagnostics (Basel). 2023 May 17;13(10):1772. doi: 10.3390/diagnostics13101772.
Monkeypox, a virus transmitted from animals to humans, is a DNA virus with two distinct genetic lineages in central and eastern Africa. In addition to zootonic transmission through direct contact with the body fluids and blood of infected animals, monkeypox can also be transmitted from person to person through skin lesions and respiratory secretions of an infected person. Various lesions occur on the skin of infected individuals. This study has developed a hybrid artificial intelligence system to detect monkeypox in skin images. An open source image dataset was used for skin images. This dataset has a multi-class structure consisting of chickenpox, measles, monkeypox and normal classes. The data distribution of the classes in the original dataset is unbalanced. Various data augmentation and data preprocessing operations were applied to overcome this imbalance. After these operations, CSPDarkNet, InceptionV4, MnasNet, MobileNetV3, RepVGG, SE-ResNet and Xception, which are state-of-the-art deep learning models, were used for monkeypox detection. In order to improve the classification results obtained in these models, a unique hybrid deep learning model specific to this study was created by using the two highest-performing deep learning models and the long short-term memory (LSTM) model together. In this hybrid artificial intelligence system developed and proposed for monkeypox detection, test accuracy was 87% and Cohen's kappa score was 0.8222.
猴痘是一种从动物传播给人类的病毒,是一种在中非和东非具有两种不同遗传谱系的DNA病毒。除了通过直接接触受感染动物的体液和血液进行动物源性传播外,猴痘还可通过感染者的皮肤损伤和呼吸道分泌物在人与人之间传播。受感染个体的皮肤上会出现各种损伤。本研究开发了一种混合人工智能系统,用于在皮肤图像中检测猴痘。一个开源图像数据集用于皮肤图像。该数据集具有由水痘、麻疹、猴痘和正常类别组成的多类结构。原始数据集中类别的数据分布不均衡。应用了各种数据增强和数据预处理操作来克服这种不平衡。在这些操作之后,使用了CSPDarkNet、InceptionV4、MnasNet、MobileNetV3、RepVGG、SE-ResNet和Xception等先进的深度学习模型进行猴痘检测。为了改进在这些模型中获得的分类结果,通过将两个性能最高的深度学习模型与长短期记忆(LSTM)模型一起使用,创建了一个本研究特有的独特混合深度学习模型。在为猴痘检测开发和提出的这种混合人工智能系统中,测试准确率为87%,科恩kappa分数为0.8222。