Litcius/Paper detail

COVID-19 in CXR: From Detection and Severity Scoring to Patient Disease Monitoring

Maayan Frid-Adar, Rula Amer, Ophir Gozes, Jannette Nassar, Hayit Greenspan

2021IEEE Journal of Biomedical and Health Informatics58 citationsDOIOpen Access PDF

Abstract

This work estimates the severity of pneumonia in COVID-19 patients and reports the findings of a longitudinal study of disease progression. It presents a deep learning model for simultaneous detection and localization of pneumonia in chest Xray (CXR) images, which is shown to generalize to COVID-19 pneumonia. The localization maps are utilized to calculate a "Pneumonia Ratio" which indicates disease severity. The assessment of disease severity serves to build a temporal disease extent profile for hospitalized patients. To validate the model's applicability 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.

Topics & Concepts

PneumoniaMedicineDiseaseRemote patient monitoringDisease monitoringRadiographyRadiologyArtificial intelligenceSeverity of illnessPatient dataMedical imagingComputer scienceRespiratory diseaseIntensive care medicineCoronavirus disease 2019 (COVID-19)Machine learningDeep learningPredictive value of testsLongitudinal dataCOVID-19 diagnosis using AIFace recognition and analysisMedical Image Segmentation Techniques