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A Distribution-based Regression for Real-time COVID-19 Cases Detection from Chest X-ray and CT Images

机译:基于分布的回归从胸部X射线和CT图像实时检测COVID-19病例

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The novel coronavirus (COVID-19) that started last December in Wuhan, Hubei Province, China has become a serious healthcare threat with over five million confirmed cases in 215 countries around the world as on May 20. The World Health Organization recommends a rapid diagnosis and immediate isolation of suspected cases. Thus, there is an imminent need to develop an automatic real-time detection system as a quick alternative diagnosis option to control the virus spread. In this work, we propose a regression model based on a flexible distribution called shifted-scaled Dirichlet for real-time detection of coronavirus pneumonia infected patient using chest X-ray radiographs. To derive the parameters of our proposed model, we adopt the maximum likelihood method, where we update the parameters based on the stochastic gradient descent. The experimental results demonstrate that our approach is highly effective for detecting COVID-19 cases and understand the infection on a real-time basis with high accuracy up to 97%.
机译:去年12月在中国湖北省武汉市开始的新型冠状病毒(COVID-19)已成为严重的医疗威胁,截至5月20日,在全球215个国家中已确诊的病例超过500万。世界卫生组织建议快速诊断并立即隔离可疑案件。因此,迫切需要开发一种自动实时检测系统,作为控制病毒传播的快速替代诊断选择。在这项工作中,我们提出了一种基于弹性分布的回归模型,该模型称为位移缩放Dirichlet,用于使用胸部X光片实时检测冠状病毒性肺炎感染的患者。为了导出我们提出的模型的参数,我们采用最大似然法,在此方法中,我们根据随机梯度下降来更新参数。实验结果表明,我们的方法对于检测COVID-19病例非常有效,并且可以实时,高达97%的准确度了解感染情况。

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