Cargando…

A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study

Objective: Coronavirus disease 2019 (COVID-19) has caused considerable morbidity and mortality, especially in patients with underlying health conditions. A precise prognostic tool to identify poor outcomes among such cases is desperately needed. Methods: Total 400 COVID-19 patients with underlying h...

Descripción completa

Detalles Bibliográficos
Formato: Online Artículo Texto
Lenguaje:English
Publicado: IEEE 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8545077/
https://www.ncbi.nlm.nih.gov/pubmed/33905341
http://dx.doi.org/10.1109/JBHI.2021.3076086
_version_ 1784589944685068288
collection PubMed
description Objective: Coronavirus disease 2019 (COVID-19) has caused considerable morbidity and mortality, especially in patients with underlying health conditions. A precise prognostic tool to identify poor outcomes among such cases is desperately needed. Methods: Total 400 COVID-19 patients with underlying health conditions were retrospectively recruited from 4 centers, including 54 dead cases (labeled as poor outcomes) and 346 patients discharged or hospitalized for at least 7 days since initial CT scan. Patients were allocated to a training set (n = 271), a test set (n = 68), and an external test set (n = 61). We proposed an initial CT-derived hybrid model by combining a 3D-ResNet10 based deep learning model and a quantitative 3D radiomics model to predict the probability of COVID-19 patients reaching poor outcome. The model performance was assessed by area under the receiver operating characteristic curve (AUC), survival analysis, and subgroup analysis. Results: The hybrid model achieved AUCs of 0.876 (95% confidence interval: 0.752-0.999) and 0.864 (0.766-0.962) in test and external test sets, outperforming other models. The survival analysis verified the hybrid model as a significant risk factor for mortality (hazard ratio, 2.049 [1.462–2.871], P < 0.001) that could well stratify patients into high-risk and low-risk of reaching poor outcomes (P < 0.001). Conclusion: The hybrid model that combined deep learning and radiomics could accurately identify poor outcomes in COVID-19 patients with underlying health conditions from initial CT scans. The great risk stratification ability could help alert risk of death and allow for timely surveillance plans.
format Online
Article
Text
id pubmed-8545077
institution National Center for Biotechnology Information
language English
publishDate 2021
publisher IEEE
record_format MEDLINE/PubMed
spelling pubmed-85450772022-06-29 A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study IEEE J Biomed Health Inform Article Objective: Coronavirus disease 2019 (COVID-19) has caused considerable morbidity and mortality, especially in patients with underlying health conditions. A precise prognostic tool to identify poor outcomes among such cases is desperately needed. Methods: Total 400 COVID-19 patients with underlying health conditions were retrospectively recruited from 4 centers, including 54 dead cases (labeled as poor outcomes) and 346 patients discharged or hospitalized for at least 7 days since initial CT scan. Patients were allocated to a training set (n = 271), a test set (n = 68), and an external test set (n = 61). We proposed an initial CT-derived hybrid model by combining a 3D-ResNet10 based deep learning model and a quantitative 3D radiomics model to predict the probability of COVID-19 patients reaching poor outcome. The model performance was assessed by area under the receiver operating characteristic curve (AUC), survival analysis, and subgroup analysis. Results: The hybrid model achieved AUCs of 0.876 (95% confidence interval: 0.752-0.999) and 0.864 (0.766-0.962) in test and external test sets, outperforming other models. The survival analysis verified the hybrid model as a significant risk factor for mortality (hazard ratio, 2.049 [1.462–2.871], P < 0.001) that could well stratify patients into high-risk and low-risk of reaching poor outcomes (P < 0.001). Conclusion: The hybrid model that combined deep learning and radiomics could accurately identify poor outcomes in COVID-19 patients with underlying health conditions from initial CT scans. The great risk stratification ability could help alert risk of death and allow for timely surveillance plans. IEEE 2021-04-27 /pmc/articles/PMC8545077/ /pubmed/33905341 http://dx.doi.org/10.1109/JBHI.2021.3076086 Text en https://www.ieee.org/publications/rights/index.htmlPersonal use is permitted, but republication/redistribution requires IEEE permission. See https://www.ieee.org/publications/rights/index.html for more information.
spellingShingle Article
A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study
title A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study
title_full A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study
title_fullStr A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study
title_full_unstemmed A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study
title_short A Deep Learning Radiomics Model to Identify Poor Outcome in COVID-19 Patients With Underlying Health Conditions: A Multicenter Study
title_sort deep learning radiomics model to identify poor outcome in covid-19 patients with underlying health conditions: a multicenter study
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8545077/
https://www.ncbi.nlm.nih.gov/pubmed/33905341
http://dx.doi.org/10.1109/JBHI.2021.3076086
work_keys_str_mv AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT adeeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy
AT deeplearningradiomicsmodeltoidentifypooroutcomeincovid19patientswithunderlyinghealthconditionsamulticenterstudy