Coronavirus disease 2019 (COVID-19) is one of the most destructive pandemic after millennium, forcing the world to tackle a health crisis. Automated lung infections classification using chest X-ray (CXR) images could strengthen diagnostic capability when handling COVID-19. However, classifying COVID-19 from pneumonia cases using CXR image is a difficult task because of shared spatial characteristics, high feature variation and contrast diversity between cases. Moreover, massive data collection is impractical for a newly emerged disease, which limited the performance of data thirsty deep learning models. To address these challenges, Multiscale Attention Guided deep network with Soft Distance regularization (MAG-SD) is proposed to automatically classify COVID-19 from pneumonia CXR images. In MAG-SD, MA-Net is used to produce prediction vector and attention from multiscale feature maps. To improve the robustness of trained model and relieve the shortage of training data, attention guided augmentations along with a soft distance regularization are posed, which aims at generating meaningful augmentations and reduce noise. Our multiscale attention model achieves better classification performance on our pneumonia CXR image dataset. Plentiful experiments are proposed for MAG-SD which demonstrates its unique advantage in pneumonia classification over cutting-edge models. The code is available at https://github.com/JasonLeeGHub/MAG-SD.
翻译:2019年科罗纳病毒(COVID-19)是千年后最具破坏性的流行病之一,迫使世界应对健康危机。使用胸X射线(CXR)图像自动肺感染分类可以加强处理COVID-19的诊断能力。然而,使用CXR图像将COVID-19从肺炎病例中分类,使用CXR图像将CVID-19从肺炎病例中分类是一项艰巨的任务,因为共同的空间特征、特征差异和病例之间的差异不同。此外,大规模数据收集对于新出现的疾病来说是不切实际的,限制了数据渴求的深层次学习模型的性能。为了应对这些挑战,建议利用软体能引导深度网络将CXR图像(MAG-SD)自动对COVID-19从肺炎CXR图像中分类。在MAGSDSD中,MAGGM/GMIB/SDSD中建议采用独特的模型。