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CovidDiagnosis: Deep Diagnosis of COVID-19 Patients Using Chest X-Rays

机译:coviddiagnosis:使用胸部X射线的Covid-19患者的深度诊断

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As the COVID-19 pandemic threatens to overwhelm healthcare systems across the world, there is a need for reducing the burden on medical staff via automated systems for patient screening. Given the limited availability of testing kits with long turn-around test times and the exponentially increasing number of COVID-19 positive cases, X-rays offer an additional cheap and fast modality for screening COVID-19 positive patients, especially for patients exhibiting respiratory symptoms. In this paper, we propose a solution based on a combination of deep learning and radiomic features for assisting radiologists during the diagnosis of COVID-19. The proposed system of CovidDiagnosis takes a chest X-ray image and passes it through a pipeline comprising of a model for lung isolation, followed by classification of the lung regions into four disease classes, namely Healthy, Pneumonia, Tuberculosis and COVID-19. To assist our classification framework, we employ embeddings of disease symptoms produced by the CheXNet network by creating an ensemble. The proposed approach gives remarkable classification results on publicly available datasets of chest X-rays. Additionally, the system produces visualization maps which highlight the symptoms responsible for producing the classification decisions. This provides trustworthy and inter-pretable decisions to radiologists for the clinical deployment of CovidDiagnosis. Further, we calibrate our network using temperature scaling to give confidence scores which are representative of true correctness likelihood.
机译:随着Covid-19大流行威胁到世界各地的医疗保健系统,需要通过患者筛查的自动化系统来降低医疗人员的负担。鉴于测试套件的可用性有限,扭转扭转测试时间和Covid-19阳性病例的指数增加数量,X射线为筛选Covid-19阳性患者提供额外的便宜和快速的方式,特别是对于表现出呼吸系统症状的患者。在本文中,我们提出了一种解决方案,基于深度学习和辐射学特征的组合,用于辅助放射科医师在Covid-19的诊断过程中。所提出的CovidDiagnosis系统采用胸部X射线图像,并通过管道通过,该管道包括肺部分离模型,然后将肺区分为四种疾病课程,即健康,肺炎,结核和Covid-19。为协助我们的分类框架,我们使用ChexNet网络产生的疾病症状通过创建集合来嵌入疾病症状。拟议的方法在胸部X射线的公开可用数据集上提供了显着的分类结果。此外,该系统产生可视化地图,突出了负责产生分类决策的症状。这为辐射学家提供了可靠和可预测的决策,用于临床部署Coviddiagnosis。此外,我们使用温度缩放校准我们的网络,以提供代表真正正确性可能性的置信分数。

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