Author: Amer, Rula; Frid-Adar, Maayan; Gozes, Ophir; Nassar, Jannette; Greenspan, Hayit
Title: COVID-19 in CXR: from Detection and Severity Scoring to Patient Disease Monitoring Cord-id: mxifdxcq Document date: 2020_8_4
ID: mxifdxcq
Snippet: 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 f
Document: 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.
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