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Published in: European Radiology 3/2021

Open Access 01-03-2021 | Artificial Intelligence | Imaging Informatics and Artificial Intelligence

Initial chest radiographs and artificial intelligence (AI) predict clinical outcomes in COVID-19 patients: analysis of 697 Italian patients

Authors: Junaid Mushtaq, Renato Pennella, Salvatore Lavalle, Anna Colarieti, Stephanie Steidler, Carlo M. A. Martinenghi, Diego Palumbo, Antonio Esposito, Patrizia Rovere-Querini, Moreno Tresoldi, Giovanni Landoni, Fabio Ciceri, Alberto Zangrillo, Francesco De Cobelli

Published in: European Radiology | Issue 3/2021

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Abstract

Objective

To evaluate whether the initial chest X-ray (CXR) severity assessed by an AI system may have prognostic utility in patients with COVID-19.

Methods

This retrospective single-center study included adult patients presenting to the emergency department (ED) between February 25 and April 9, 2020, with SARS-CoV-2 infection confirmed on real-time reverse transcriptase polymerase chain reaction (RT-PCR). Initial CXRs obtained on ED presentation were evaluated by a deep learning artificial intelligence (AI) system and compared with the Radiographic Assessment of Lung Edema (RALE) score, calculated by two experienced radiologists. Death and critical COVID-19 (admission to intensive care unit (ICU) or deaths occurring before ICU admission) were identified as clinical outcomes. Independent predictors of adverse outcomes were evaluated by multivariate analyses.

Results

Six hundred ninety-seven 697 patients were included in the study: 465 males (66.7%), median age of 62 years (IQR 52–75). Multivariate analyses adjusting for demographics and comorbidities showed that an AI system-based score ≥ 30 on the initial CXR was an independent predictor both for mortality (HR 2.60 (95% CI 1.69 − 3.99; p < 0.001)) and critical COVID-19 (HR 3.40 (95% CI 2.35–4.94; p < 0.001)). Other independent predictors were RALE score, older age, male sex, coronary artery disease, COPD, and neurodegenerative disease.

Conclusion

AI- and radiologist-assessed disease severity scores on CXRs obtained on ED presentation were independent and comparable predictors of adverse outcomes in patients with COVID-19.

Key Points

• AI system–based score ≥ 30 and a RALE score ≥ 12 at CXRs performed at ED presentation are independent and comparable predictors of death and/or ICU admission in COVID-19 patients.
• Other independent predictors are older age, male sex, coronary artery disease, COPD, and neurodegenerative disease.
• The comparable performance of the AI system in relation to a radiologist-assessed score in predicting adverse outcomes may represent a game-changer in resource-constrained settings.
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Metadata
Title
Initial chest radiographs and artificial intelligence (AI) predict clinical outcomes in COVID-19 patients: analysis of 697 Italian patients
Authors
Junaid Mushtaq
Renato Pennella
Salvatore Lavalle
Anna Colarieti
Stephanie Steidler
Carlo M. A. Martinenghi
Diego Palumbo
Antonio Esposito
Patrizia Rovere-Querini
Moreno Tresoldi
Giovanni Landoni
Fabio Ciceri
Alberto Zangrillo
Francesco De Cobelli
Publication date
01-03-2021
Publisher
Springer Berlin Heidelberg
Published in
European Radiology / Issue 3/2021
Print ISSN: 0938-7994
Electronic ISSN: 1432-1084
DOI
https://doi.org/10.1007/s00330-020-07269-8

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