Cargando…

3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients

ABSTRACT: Chest CT is a useful initial exam in patients with coronavirus disease 2019 (COVID-19) for assessing lung damage. AI-powered predictive models could be useful to better allocate resources in the midst of the pandemic. Our aim was to build a deep-learning (DL) model for COVID-19 outcome pre...

Descripción completa

Detalles Bibliográficos
Autores principales: Di Napoli, Alberto, Tagliente, Emanuela, Pasquini, Luca, Cipriano, Enrica, Pietrantonio, Filomena, Ortis, Piermaria, Curti, Simona, Boellis, Alessandro, Stefanini, Teseo, Bernardini, Antonio, Angeletti, Chiara, Ranieri, Sofia Chiatamone, Franchi, Paola, Voicu, Ioan Paul, Capotondi, Carlo, Napolitano, Antonio
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Springer International Publishing 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9713092/
https://www.ncbi.nlm.nih.gov/pubmed/36450922
http://dx.doi.org/10.1007/s10278-022-00734-4
_version_ 1784841935902474240
author Di Napoli, Alberto
Tagliente, Emanuela
Pasquini, Luca
Cipriano, Enrica
Pietrantonio, Filomena
Ortis, Piermaria
Curti, Simona
Boellis, Alessandro
Stefanini, Teseo
Bernardini, Antonio
Angeletti, Chiara
Ranieri, Sofia Chiatamone
Franchi, Paola
Voicu, Ioan Paul
Capotondi, Carlo
Napolitano, Antonio
author_facet Di Napoli, Alberto
Tagliente, Emanuela
Pasquini, Luca
Cipriano, Enrica
Pietrantonio, Filomena
Ortis, Piermaria
Curti, Simona
Boellis, Alessandro
Stefanini, Teseo
Bernardini, Antonio
Angeletti, Chiara
Ranieri, Sofia Chiatamone
Franchi, Paola
Voicu, Ioan Paul
Capotondi, Carlo
Napolitano, Antonio
author_sort Di Napoli, Alberto
collection PubMed
description ABSTRACT: Chest CT is a useful initial exam in patients with coronavirus disease 2019 (COVID-19) for assessing lung damage. AI-powered predictive models could be useful to better allocate resources in the midst of the pandemic. Our aim was to build a deep-learning (DL) model for COVID-19 outcome prediction inclusive of 3D chest CT images acquired at hospital admission. This retrospective multicentric study included 1051 patients (mean age 69, SD = 15) who presented to the emergency department of three different institutions between 20th March 2020 and 20th January 2021 with COVID-19 confirmed by real-time reverse transcriptase polymerase chain reaction (RT-PCR). Chest CT at hospital admission were evaluated by a 3D residual neural network algorithm. Training, internal validation, and external validation groups included 608, 153, and 290 patients, respectively. Images, clinical, and laboratory data were fed into different customizations of a dense neural network to choose the best performing architecture for the prediction of mortality, intubation, and intensive care unit (ICU) admission. The AI model tested on CT and clinical features displayed accuracy, sensitivity, specificity, and ROC-AUC, respectively, of 91.7%, 90.5%, 92.4%, and 95% for the prediction of patient’s mortality; 91.3%, 91.5%, 89.8%, and 95% for intubation; and 89.6%, 90.2%, 86.5%, and 94% for ICU admission (internal validation) in the testing cohort. The performance was lower in the validation cohort for mortality (71.7%, 55.6%, 74.8%, 72%), intubation (72.6%, 74.7%, 45.7%, 64%), and ICU admission (74.7%, 77%, 46%, 70%) prediction. The addition of the available laboratory data led to an increase in sensitivity for patient’s mortality (66%) and specificity for intubation and ICU admission (50%, 52%, respectively), while the other metrics maintained similar performance results. We present a deep-learning model to predict mortality, ICU admittance, and intubation in COVID-19 patients. KEY POINTS: • 3D CT-based deep learning model predicted the internal validation set with high accuracy, sensibility and specificity (> 90%) mortality, ICU admittance, and intubation in COVID-19 patients. • The model slightly increased prediction results when laboratory data were added to the analysis, despite data imbalance. However, the model accuracy dropped when CT images were not considered in the analysis, implying an important role of CT in predicting outcomes. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s10278-022-00734-4.
format Online
Article
Text
id pubmed-9713092
institution National Center for Biotechnology Information
language English
publishDate 2022
publisher Springer International Publishing
record_format MEDLINE/PubMed
spelling pubmed-97130922022-12-01 3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients Di Napoli, Alberto Tagliente, Emanuela Pasquini, Luca Cipriano, Enrica Pietrantonio, Filomena Ortis, Piermaria Curti, Simona Boellis, Alessandro Stefanini, Teseo Bernardini, Antonio Angeletti, Chiara Ranieri, Sofia Chiatamone Franchi, Paola Voicu, Ioan Paul Capotondi, Carlo Napolitano, Antonio J Digit Imaging Article ABSTRACT: Chest CT is a useful initial exam in patients with coronavirus disease 2019 (COVID-19) for assessing lung damage. AI-powered predictive models could be useful to better allocate resources in the midst of the pandemic. Our aim was to build a deep-learning (DL) model for COVID-19 outcome prediction inclusive of 3D chest CT images acquired at hospital admission. This retrospective multicentric study included 1051 patients (mean age 69, SD = 15) who presented to the emergency department of three different institutions between 20th March 2020 and 20th January 2021 with COVID-19 confirmed by real-time reverse transcriptase polymerase chain reaction (RT-PCR). Chest CT at hospital admission were evaluated by a 3D residual neural network algorithm. Training, internal validation, and external validation groups included 608, 153, and 290 patients, respectively. Images, clinical, and laboratory data were fed into different customizations of a dense neural network to choose the best performing architecture for the prediction of mortality, intubation, and intensive care unit (ICU) admission. The AI model tested on CT and clinical features displayed accuracy, sensitivity, specificity, and ROC-AUC, respectively, of 91.7%, 90.5%, 92.4%, and 95% for the prediction of patient’s mortality; 91.3%, 91.5%, 89.8%, and 95% for intubation; and 89.6%, 90.2%, 86.5%, and 94% for ICU admission (internal validation) in the testing cohort. The performance was lower in the validation cohort for mortality (71.7%, 55.6%, 74.8%, 72%), intubation (72.6%, 74.7%, 45.7%, 64%), and ICU admission (74.7%, 77%, 46%, 70%) prediction. The addition of the available laboratory data led to an increase in sensitivity for patient’s mortality (66%) and specificity for intubation and ICU admission (50%, 52%, respectively), while the other metrics maintained similar performance results. We present a deep-learning model to predict mortality, ICU admittance, and intubation in COVID-19 patients. KEY POINTS: • 3D CT-based deep learning model predicted the internal validation set with high accuracy, sensibility and specificity (> 90%) mortality, ICU admittance, and intubation in COVID-19 patients. • The model slightly increased prediction results when laboratory data were added to the analysis, despite data imbalance. However, the model accuracy dropped when CT images were not considered in the analysis, implying an important role of CT in predicting outcomes. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1007/s10278-022-00734-4. Springer International Publishing 2022-11-30 2023-04 /pmc/articles/PMC9713092/ /pubmed/36450922 http://dx.doi.org/10.1007/s10278-022-00734-4 Text en © The Author(s) 2022 https://creativecommons.org/licenses/by/4.0/Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/ (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Article
Di Napoli, Alberto
Tagliente, Emanuela
Pasquini, Luca
Cipriano, Enrica
Pietrantonio, Filomena
Ortis, Piermaria
Curti, Simona
Boellis, Alessandro
Stefanini, Teseo
Bernardini, Antonio
Angeletti, Chiara
Ranieri, Sofia Chiatamone
Franchi, Paola
Voicu, Ioan Paul
Capotondi, Carlo
Napolitano, Antonio
3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients
title 3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients
title_full 3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients
title_fullStr 3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients
title_full_unstemmed 3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients
title_short 3D CT-Inclusive Deep-Learning Model to Predict Mortality, ICU Admittance, and Intubation in COVID-19 Patients
title_sort 3d ct-inclusive deep-learning model to predict mortality, icu admittance, and intubation in covid-19 patients
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9713092/
https://www.ncbi.nlm.nih.gov/pubmed/36450922
http://dx.doi.org/10.1007/s10278-022-00734-4
work_keys_str_mv AT dinapolialberto 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT taglienteemanuela 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT pasquiniluca 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT ciprianoenrica 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT pietrantoniofilomena 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT ortispiermaria 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT curtisimona 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT boellisalessandro 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT stefaniniteseo 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT bernardiniantonio 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT angelettichiara 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT ranierisofiachiatamone 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT franchipaola 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT voicuioanpaul 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT capotondicarlo 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients
AT napolitanoantonio 3dctinclusivedeeplearningmodeltopredictmortalityicuadmittanceandintubationincovid19patients