Abstract

ObjectiveTo evaluate by means of regression models the relationships between baseline clinical and laboratory data and lung involvement on baseline chest CT and to quantify the thoracic disease using an artificial intelligence tool and a visual scoring system to predict prognosis in patients with COVID-19 pneumonia.Materials and methodsThis study included 103 (41 women and 62 men; 68.8 years of mean age—range, 29–93 years) with suspicious COVID-19 viral infection evaluated by reverse transcription real-time fluorescence polymerase chain reaction (RT-PCR) test. All patients underwent CT examinations at the time of admission in addition to clinical and laboratory findings recording. All chest CT examinations were reviewed using a structured report. Moreover, using an artificial intelligence tool we performed an automatic segmentation on CT images based on Hounsfield unit to calculate residual healthy lung parenchyma, ground-glass opacities (GGO), consolidations and emphysema volumes for both right and left lungs. Two expert radiologists, in consensus, attributed at the CT pulmonary disease involvement a severity score using a scale of 5 levels; the score was attributed for GGO and consolidation for each lung, and then, an overall radiological severity visual score was obtained summing the single score. Univariate and multivariate regression analysis was performed.ResultsSymptoms and comorbidities did not show differences statistically significant in terms of patient outcome. Instead, SpO2 was significantly lower in patients hospitalized in critical conditions or died while age, HS CRP, leukocyte count, neutrophils, LDH, d-dimer, troponin, creatinine and azotemia, ALT, AST and bilirubin values were significantly higher. GGO and consolidations were the main CT patterns (a variable combination of GGO and consolidations was found in 87.8% of patients). CT COVID-19 disease was prevalently bilateral (77.6%) with peripheral distribution (74.5%) and multiple lobes localizations (52.0%). Consolidation, emphysema and residual healthy lung parenchyma volumes showed statistically significant differences in the three groups of patients based on outcome (patients discharged at home, patients hospitalized in stable conditions and patient hospitalized in critical conditions or died) while GGO volume did not affect the patient's outcome. Moreover, the overall radiological severity visual score (cutoff ≥ 8) was a predictor of patient outcome. The highest value of R-squared (R2 = 0.93) was obtained by the model that combines clinical/laboratory findings at CT volumes. The highest accuracy was obtained by clinical/laboratory and CT findings model with a sensitivity, specificity and accuracy, respectively, of 88%, 78% and 81% to predict discharged/stable patients versus critical/died patients.ConclusionIn conclusion, both CT visual score and computerized software-based quantification of the consolidation, emphysema and residual healthy lung parenchyma on chest CT images were independent predictors of outcome in patients with COVID-19 pneumonia.

Highlights

  • The severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has been indicated the virus responsible of SARS-CoV-2 disease (COVID-19), which has spread worldwide since December 2019 [1,2,3,4].COVID-19 diagnosis is made using “reverse transcription real-time fluorescence polymerase chain reaction” (RT-PCR) test obtained by respiratory tract or blood specimens.Triage of the COVID-19 patients is based on clinical and laboratory parameters, whilst chest imaging might be required for second-level triage by means of chest radiography as the first step and supplementary computed tomography (CT) in more severe cases or in case of discrepancy between clinical and radiographic findings [5, 6]

  • CT examinations can be used for lung involvement monitoring and several publications attempted to show that CT could identify COVID-19 viral pneumonia, the field is highly debated and several radiological organizations not have recommended the CT as a routine screening tool in the COVID-19 pneumonia [7,8,9,10,11,12,13,14,15,16]

  • The presence of ground-glass opacities (GGO) and consolidations were assessed by defining their localization, axial distribution, distribution on the cranio-caudal plane and the two expert radiologists in consensus, blinded to clinical/laboratory and RT-PCR findings, attributed at the CT pulmonary involvement by GGO and consolidations a radiological severity visual score using a scale of 5 levels: none (0%), mild (1–25%), moderate (26–50%), severe (51–75%) and critic (76–100%) involvement for each lung

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Summary

Introduction

The severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has been indicated the virus responsible of SARS-CoV-2 disease (COVID-19), which has spread worldwide since December 2019 [1,2,3,4].COVID-19 diagnosis is made using “reverse transcription real-time fluorescence polymerase chain reaction” (RT-PCR) test obtained by respiratory tract or blood specimens.Triage of the COVID-19 patients is based on clinical and laboratory parameters, whilst chest imaging might be required for second-level triage by means of chest radiography as the first step and supplementary computed tomography (CT) in more severe cases or in case of discrepancy between clinical and radiographic findings [5, 6]. The severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has been indicated the virus responsible of SARS-CoV-2 disease (COVID-19), which has spread worldwide since December 2019 [1,2,3,4]. CT examination was used to evaluate the grade and the extension of the viral pneumonia by COVID-19 [12, 13]. Lung involvement of COVID-19 pneumonia could be quantified automatically by artificial intelligence (AI) and deep learning-based algorithms on baseline chest CT [11,12,13]. CT quantification of healthy residual lung parenchyma was shown to be helpful either to estimate the alveolar recruitment during ventilation or to predict the patient’s prognosis of patients with acute respiratory distress syndrome [14, 15]

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