New challenges for management of COVID-19 patients: Analysis of MDCT based “Automated pneumonia analysis program”

https://doi.org/10.1016/j.ejro.2021.100370Get rights and content
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Highlights

  • CT pneumonia analysis program is an objective way to determine the disease severity.

  • The population over the age of 60 and with certain comorbidities such as DM, CHF, and COPD are more prone to severe disease than other patients.

  • CRP, Neutrophil/Lymphocyte, troponin levels are positive predictors for clinical worsening.

Abstract

Purpose

The aim of this study is to define the role of an “Automated Multi Detector Computed Tomography (MDCT) Pneumonia Analysis Program’’ as an early outcome predictor for COVID-19 pneumonia in hospitalized patients.

Materials and Methods

A total of 96 patients who had RT-PCR proven COVID-19 pneumonia diagnosed by non-contrast enhanced chest MDCT and hospitalized were enrolled in this retrospective study. An automated CT pneumonia analysis program was used for each patient to see the extent of disease. Patients were divided into two clinical subgroups upon their clinical status as good and bad clinical course. Total opacity scores (TOS), intensive care unit (ICU) entry, and mortality rates were measured for each clinical subgroups and also laboratory values were used to compare each subgroup.

Results

Left lower lobe was the mostly effected side with a percentage of 78.12 % and followed up by right lower lobe with 73.95 %. TOS, ICU entry, and mortality rates were higher in bad clinical course subgroup. TOS values were also higher in patients older than 60 years and in patients with comorbidities including, Hypertension (HT), Diabetes Mellitus (DM), Chronic Obstructive Pulmonary Disease (COPD), Chronic Heart Failure (CHF) and malignancy.

Conclusion

Automated MDCT analysis programs for pneumonia are fast and an objective way to define the disease extent in COVID-19 pneumonia and it is highly correlated with the disease severity and clinical outcome thus providing physicians with valuable knowledge from the time of diagnosis.

Keywords

COVID-19 pneumonia
Automated pneumonia analysis
Pneumonic scoring

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