Abbas Asmaa, Abdelsamea Mohammed M, Gaber Mohamed Medhat
Mathematics Department, Faculty of Science, Assiut University, Assiut, Egypt.
School of Computing and Digital Technology, Birmingham City University, Birmingham, UK.
Appl Intell (Dordr). 2021;51(2):854-864. doi: 10.1007/s10489-020-01829-7. Epub 2020 Sep 5.
Chest X-ray is the first imaging technique that plays an important role in the diagnosis of COVID-19 disease. Due to the high availability of large-scale annotated image datasets, great success has been achieved using convolutional neural networks ( s) for image recognition and classification. However, due to the limited availability of annotated medical images, the classification of medical images remains the biggest challenge in medical diagnosis. Thanks to transfer learning, an effective mechanism that can provide a promising solution by transferring knowledge from generic object recognition tasks to domain-specific tasks. In this paper, we validate and a deep , called Decompose, Transfer, and Compose (), for the classification of COVID-19 chest X-ray images. can deal with any irregularities in the image dataset by investigating its class boundaries using a class decomposition mechanism. The experimental results showed the capability of in the detection of COVID-19 cases from a comprehensive image dataset collected from several hospitals around the world. High accuracy of 93.1% (with a sensitivity of 100%) was achieved by in the detection of COVID-19 X-ray images from normal, and severe acute respiratory syndrome cases.
胸部X光检查是在COVID-19疾病诊断中发挥重要作用的首要成像技术。由于大规模标注图像数据集的高可用性,使用卷积神经网络进行图像识别和分类已取得巨大成功。然而,由于标注医学图像的可用性有限,医学图像分类仍然是医学诊断中的最大挑战。得益于迁移学习,这是一种有效的机制,它可以通过将知识从通用对象识别任务转移到特定领域任务来提供一个有前景的解决方案。在本文中,我们验证了一种名为分解、迁移和合成(DTC)的深度学习方法用于COVID-19胸部X光图像的分类。DTC可以通过使用类分解机制研究其类边界来处理图像数据集中的任何不规则情况。实验结果表明DTC能够从全球多家医院收集的综合图像数据集中检测出COVID-19病例。DTC在从正常、疑似和严重急性呼吸综合征病例中检测COVID-19X光图像时达到了93.1%的高精度(灵敏度为100%)。