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A Chest X-ray Image Retrieval System for COVID-19 Detection using Deep Transfer Learning and Denoising Auto Encoder

机译:用于Covid-19检测的胸部X射线图像检索系统,使用深度传输学习和去噪自动编码器

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The COVID-19 pandemic is the defining global health crisis of our time which is currently challenging families, communities, health care systems, and government all over the world. It is critical to detect and isolate the positive cases as early as possible for timely treatment to prevent the further spread of the virus. It was found in few early studies that patients present abnormalities in chest radiography images that are characteristic of those infected with COVID-19. In the current context, a rapid, accessible and automated screening tool based on image processing of chest X-rays (CXRs) would be much needed as a quick alternative to PCR testing, especially with commonly available X-ray machines and without the dedicated test kits in labs and hospitals. Several classifications based approaches have been proposed recently with encouraging results to detect pneumonia based on CXRs using supervised deep transfer learning techniques based on Convolutional Neural Networks (CNNs). These black box approaches are mainly non-interactive in nature and their prediction represents just a cue to the radiologist. This work focuses on issues related to the development of such an automated system for CXRs by performing discriminative feature learning using deep neural networks with a purely data driven approach and retrieving images based on an unknown query image and performing retrieval evaluation on currently available benchmark datasets towards the goal of realistic comparison and real clinical integration. The system is trained and tested on an image collection of 1700 CXRs obtained from two different resources with encouraging results based on precision and recall measures in individual deep feature spaces. It is hoped that the proposed system as diagnostic aid would reduce the visual observation error of human operators and enhance sensitivity in testing for Covid-19 detection.
机译:Covid-19大流行是我们在全球各地挑战家庭,社区,医疗保健系统和政府的全球健康危机。尽早检测和分离阳性病例至关重要,以及时治疗以防止病毒进一步扩散。在少数早期研究中发现,患者患者存在具有Covid-19感染者特征的胸部射线照相图像的异常。在当前的上下文中,基于胸部X射线(CXRS)的图像处理的快速,可访问和自动筛选工具作为PCR测试的快速替代品,特别是与常用的X射线机器和没有专用测试实验室和医院的套件。最近已经提出了几种基于分类的方法,以令人鼓舞的结果是根据CXRS使用基于卷积神经网络(CNNS)的监督深度传输学习技术来检测肺炎的肺炎。这些黑匣子方法主要是非交互性的,其预测代表了放射科学家的提示。这项工作侧重于通过使用深神经网络利用纯粹的数据驱动方法和基于未知查询图像检索图像并对当前可用的基准数据集进行检索评估来检索图像来侧重于CXR开发与CXR的这种自动化系统相关的问题。朝向当前可用的基准数据集进行检索评估现实比较与实际临床一体化的目标。在从两个不同的资源获得的1700cxrs的图像集合上培训并测试,并根据精密和召回各个深度特征空间中的令人鼓舞的结果。希望该系统作为诊断辅助装置将减少人类运营商的视觉观察误差,并提高测试Covid-19检测的灵敏度。

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