In this work, we estimate the severity of pneumonia in COVID-19 patients and conduct a longitudinal study of disease progression. To achieve this goal, we developed a deep learning model for simultaneous detection and segmentation of pneumonia in chest Xray (CXR) images and generalized to COVID-19 pneumonia. The segmentations were utilized to calculate a "Pneumonia Ratio" which indicates the disease severity. The measurement of disease severity enables to build a disease extent profile over time for hospitalized patients. To validate the model relevance to the patient monitoring task, we developed a validation strategy which involves a synthesis of Digital Reconstructed Radiographs (DRRs - synthetic Xray) from serial CT scans; we then compared the disease progression profiles that were generated from the DRRs to those that were generated from CT volumes.
翻译:在这项工作中,我们估计了COVID-19病人肺炎的严重程度,并对病情的发展进行了纵向研究。为了实现这一目标,我们开发了一个深度学习模型,用于同时检测胸X射线(CXR)图像中的肺炎并将肺炎切除为COVID-19肺炎。这些分块被用于计算表明疾病严重程度的“肺炎比率”。疾病严重程度的测量有助于长期为住院病人建立疾病程度概况。为了验证模型与病人监测任务的相关性,我们制定了一项验证战略,其中包括从连续CT扫描中合成数字再构射线(DRR-合成X光);然后我们将DRR生成的疾病发病情况与从CT量中生成的疾病发病情况作了比较。