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Comparison of temporal evolution of computed tomography imaging features in COVID-19 and influenza infections in a multicenter cohort study. | LitMetric

AI Article Synopsis

  • - This study compares how imaging features of COVID-19 and influenza change over time using CT scans from critically ill patients, focusing on patterns like ground glass opacity and consolidation.
  • - Results show that while COVID-19 patients have high lung involvement for over 14 days and shift from ground glass opacities to consolidation, influenza patients show more early consolidation and less long-term lung damage.
  • - Key imaging indicators, such as pleural effusion for influenza and ground glass opacities for COVID-19, can help distinguish between the two diseases, especially when lab tests are delayed.

Article Abstract

Purpose: To compare temporal evolution of imaging features of coronavirus disease 2019 (COVID-19) and influenza in computed tomography and evaluate their predictive value for distinction.

Methods: In this retrospective, multicenter study 179 CT examinations of 52 COVID-19 and 44 influenza critically ill patients were included. Lung involvement, main pattern (ground glass opacity, crazy paving, consolidation) and additional lung and chest findings were evaluated by two independent observers. Additional findings and clinical data were compared patient-wise. A decision tree analysis was performed to identify imaging features with predictive value in distinguishing both entities.

Results: In contrast to influenza patients, lung involvement remains high in COVID-19 patients > 14 days after the diagnosis. The predominant pattern in COVID-19 evolves from ground glass at the beginning to consolidation in later disease. In influenza there is more consolidation at the beginning and overall less ground glass opacity (p = 0.002). Decision tree analysis yielded the following: Earlier in disease course, pleural effusion is a typical feature of influenza (p = 0.007) whereas ground glass opacities indicate COVID-19 (p = 0.04). In later disease, particularly more lung involvement (p < 0.001), but also less pleural (p = 0.005) and pericardial (p = 0.003) effusion favor COVID-19 over influenza. Regardless of time point, less lung involvement (p < 0.001), tree-in-bud (p = 0.002) and pericardial effusion (p = 0.01) make influenza more likely than COVID-19.

Conclusions: This study identified differences in temporal evolution of imaging features between COVID-19 and influenza. These findings may help to distinguish both diseases in critically ill patients when laboratory findings are delayed or inconclusive.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC9226197PMC
http://dx.doi.org/10.1016/j.ejro.2022.100431DOI Listing

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