Quantitative chest CT analysis in COVID-19 to predict the need for oxygenation support and intubation

Objective Lombardy (Italy) was the epicentre of the COVID-19 pandemic in March 2020. The healthcare system suffered from a shortage of ICU beds and oxygenation support devices. In our Institution, most patients received chest CT at admission, only interpreted visually. Given the proven value of quan...

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Veröffentlicht in:European radiology 2020-12, Vol.30 (12), p.6770-6778
Hauptverfasser: Lanza, Ezio, Muglia, Riccardo, Bolengo, Isabella, Santonocito, Orazio Giuseppe, Lisi, Costanza, Angelotti, Giovanni, Morandini, Pierandrea, Savevski, Victor, Politi, Letterio Salvatore, Balzarini, Luca
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Sprache:eng
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Zusammenfassung:Objective Lombardy (Italy) was the epicentre of the COVID-19 pandemic in March 2020. The healthcare system suffered from a shortage of ICU beds and oxygenation support devices. In our Institution, most patients received chest CT at admission, only interpreted visually. Given the proven value of quantitative CT analysis (QCT) in the setting of ARDS, we tested QCT as an outcome predictor for COVID-19. Methods We performed a single-centre retrospective study on COVID-19 patients hospitalised from January 25, 2020, to April 28, 2020, who received CT at admission prompted by respiratory symptoms such as dyspnea or desaturation. QCT was performed using a semi-automated method (3D Slicer). Lungs were divided by Hounsfield unit intervals. Compromised lung (%CL) volume was the sum of poorly and non-aerated volumes (− 500, 100 HU). We collected patient’s clinical data including oxygenation support throughout hospitalisation. Results Two hundred twenty-two patients (163 males, median age 66, IQR 54–6) were included; 75% received oxygenation support (20% intubation rate). Compromised lung volume was the most accurate outcome predictor (logistic regression, p  
ISSN:0938-7994
1432-1084
1432-1084
DOI:10.1007/s00330-020-07013-2