Cargando…
Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study
BACKGROUND: An artificial intelligence (AI) model using chest radiography (CXR) may provide good performance in making prognoses for COVID-19. OBJECTIVE: We aimed to develop and validate a prediction model using CXR based on an AI model and clinical variables to predict clinical outcomes in patients...
Autores principales: | , , , , , , , , , , , , , , , , , , , , , , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
JMIR Publications
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9937110/ https://www.ncbi.nlm.nih.gov/pubmed/36795468 http://dx.doi.org/10.2196/42717 |
_version_ | 1784890364196290560 |
---|---|
author | Lee, Hyun Woo Yang, Hyun Jun Kim, Hyungjin Kim, Ue-Hwan Kim, Dong Hyun Yoon, Soon Ho Ham, Soo-Youn Nam, Bo Da Chae, Kum Ju Lee, Dabee Yoo, Jin Young Bak, So Hyeon Kim, Jin Young Kim, Jin Hwan Kim, Ki Beom Jung, Jung Im Lim, Jae-Kwang Lee, Jong Eun Chung, Myung Jin Lee, Young Kyung Kim, Young Seon Lee, Sang Min Kwon, Woocheol Park, Chang Min Kim, Yun-Hyeon Jeong, Yeon Joo Jin, Kwang Nam Goo, Jin Mo |
author_facet | Lee, Hyun Woo Yang, Hyun Jun Kim, Hyungjin Kim, Ue-Hwan Kim, Dong Hyun Yoon, Soon Ho Ham, Soo-Youn Nam, Bo Da Chae, Kum Ju Lee, Dabee Yoo, Jin Young Bak, So Hyeon Kim, Jin Young Kim, Jin Hwan Kim, Ki Beom Jung, Jung Im Lim, Jae-Kwang Lee, Jong Eun Chung, Myung Jin Lee, Young Kyung Kim, Young Seon Lee, Sang Min Kwon, Woocheol Park, Chang Min Kim, Yun-Hyeon Jeong, Yeon Joo Jin, Kwang Nam Goo, Jin Mo |
author_sort | Lee, Hyun Woo |
collection | PubMed |
description | BACKGROUND: An artificial intelligence (AI) model using chest radiography (CXR) may provide good performance in making prognoses for COVID-19. OBJECTIVE: We aimed to develop and validate a prediction model using CXR based on an AI model and clinical variables to predict clinical outcomes in patients with COVID-19. METHODS: This retrospective longitudinal study included patients hospitalized for COVID-19 at multiple COVID-19 medical centers between February 2020 and October 2020. Patients at Boramae Medical Center were randomly classified into training, validation, and internal testing sets (at a ratio of 8:1:1, respectively). An AI model using initial CXR images as input, a logistic regression model using clinical information, and a combined model using the output of the AI model (as CXR score) and clinical information were developed and trained to predict hospital length of stay (LOS) ≤2 weeks, need for oxygen supplementation, and acute respiratory distress syndrome (ARDS). The models were externally validated in the Korean Imaging Cohort of COVID-19 data set for discrimination and calibration. RESULTS: The AI model using CXR and the logistic regression model using clinical variables were suboptimal to predict hospital LOS ≤2 weeks or the need for oxygen supplementation but performed acceptably in the prediction of ARDS (AI model area under the curve [AUC] 0.782, 95% CI 0.720-0.845; logistic regression model AUC 0.878, 95% CI 0.838-0.919). The combined model performed better in predicting the need for oxygen supplementation (AUC 0.704, 95% CI 0.646-0.762) and ARDS (AUC 0.890, 95% CI 0.853-0.928) compared to the CXR score alone. Both the AI and combined models showed good calibration for predicting ARDS (P=.079 and P=.859). CONCLUSIONS: The combined prediction model, comprising the CXR score and clinical information, was externally validated as having acceptable performance in predicting severe illness and excellent performance in predicting ARDS in patients with COVID-19. |
format | Online Article Text |
id | pubmed-9937110 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | JMIR Publications |
record_format | MEDLINE/PubMed |
spelling | pubmed-99371102023-02-18 Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study Lee, Hyun Woo Yang, Hyun Jun Kim, Hyungjin Kim, Ue-Hwan Kim, Dong Hyun Yoon, Soon Ho Ham, Soo-Youn Nam, Bo Da Chae, Kum Ju Lee, Dabee Yoo, Jin Young Bak, So Hyeon Kim, Jin Young Kim, Jin Hwan Kim, Ki Beom Jung, Jung Im Lim, Jae-Kwang Lee, Jong Eun Chung, Myung Jin Lee, Young Kyung Kim, Young Seon Lee, Sang Min Kwon, Woocheol Park, Chang Min Kim, Yun-Hyeon Jeong, Yeon Joo Jin, Kwang Nam Goo, Jin Mo J Med Internet Res Original Paper BACKGROUND: An artificial intelligence (AI) model using chest radiography (CXR) may provide good performance in making prognoses for COVID-19. OBJECTIVE: We aimed to develop and validate a prediction model using CXR based on an AI model and clinical variables to predict clinical outcomes in patients with COVID-19. METHODS: This retrospective longitudinal study included patients hospitalized for COVID-19 at multiple COVID-19 medical centers between February 2020 and October 2020. Patients at Boramae Medical Center were randomly classified into training, validation, and internal testing sets (at a ratio of 8:1:1, respectively). An AI model using initial CXR images as input, a logistic regression model using clinical information, and a combined model using the output of the AI model (as CXR score) and clinical information were developed and trained to predict hospital length of stay (LOS) ≤2 weeks, need for oxygen supplementation, and acute respiratory distress syndrome (ARDS). The models were externally validated in the Korean Imaging Cohort of COVID-19 data set for discrimination and calibration. RESULTS: The AI model using CXR and the logistic regression model using clinical variables were suboptimal to predict hospital LOS ≤2 weeks or the need for oxygen supplementation but performed acceptably in the prediction of ARDS (AI model area under the curve [AUC] 0.782, 95% CI 0.720-0.845; logistic regression model AUC 0.878, 95% CI 0.838-0.919). The combined model performed better in predicting the need for oxygen supplementation (AUC 0.704, 95% CI 0.646-0.762) and ARDS (AUC 0.890, 95% CI 0.853-0.928) compared to the CXR score alone. Both the AI and combined models showed good calibration for predicting ARDS (P=.079 and P=.859). CONCLUSIONS: The combined prediction model, comprising the CXR score and clinical information, was externally validated as having acceptable performance in predicting severe illness and excellent performance in predicting ARDS in patients with COVID-19. JMIR Publications 2023-02-16 /pmc/articles/PMC9937110/ /pubmed/36795468 http://dx.doi.org/10.2196/42717 Text en ©Hyun Woo Lee, Hyun Jun Yang, Hyungjin Kim, Ue-Hwan Kim, Dong Hyun Kim, Soon Ho Yoon, Soo-Youn Ham, Bo Da Nam, Kum Ju Chae, Dabee Lee, Jin Young Yoo, So Hyeon Bak, Jin Young Kim, Jin Hwan Kim, Ki Beom Kim, Jung Im Jung, Jae-Kwang Lim, Jong Eun Lee, Myung Jin Chung, Young Kyung Lee, Young Seon Kim, Sang Min Lee, Woocheol Kwon, Chang Min Park, Yun-Hyeon Kim, Yeon Joo Jeong, Kwang Nam Jin, Jin Mo Goo. Originally published in the Journal of Medical Internet Research (https://www.jmir.org), 16.02.2023. https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work, first published in the Journal of Medical Internet Research, is properly cited. The complete bibliographic information, a link to the original publication on https://www.jmir.org/, as well as this copyright and license information must be included. |
spellingShingle | Original Paper Lee, Hyun Woo Yang, Hyun Jun Kim, Hyungjin Kim, Ue-Hwan Kim, Dong Hyun Yoon, Soon Ho Ham, Soo-Youn Nam, Bo Da Chae, Kum Ju Lee, Dabee Yoo, Jin Young Bak, So Hyeon Kim, Jin Young Kim, Jin Hwan Kim, Ki Beom Jung, Jung Im Lim, Jae-Kwang Lee, Jong Eun Chung, Myung Jin Lee, Young Kyung Kim, Young Seon Lee, Sang Min Kwon, Woocheol Park, Chang Min Kim, Yun-Hyeon Jeong, Yeon Joo Jin, Kwang Nam Goo, Jin Mo Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study |
title | Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study |
title_full | Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study |
title_fullStr | Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study |
title_full_unstemmed | Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study |
title_short | Deep Learning With Chest Radiographs for Making Prognoses in Patients With COVID-19: Retrospective Cohort Study |
title_sort | deep learning with chest radiographs for making prognoses in patients with covid-19: retrospective cohort study |
topic | Original Paper |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9937110/ https://www.ncbi.nlm.nih.gov/pubmed/36795468 http://dx.doi.org/10.2196/42717 |
work_keys_str_mv | AT leehyunwoo deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT yanghyunjun deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimhyungjin deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimuehwan deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimdonghyun deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT yoonsoonho deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT hamsooyoun deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT namboda deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT chaekumju deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT leedabee deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT yoojinyoung deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT baksohyeon deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimjinyoung deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimjinhwan deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimkibeom deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT jungjungim deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT limjaekwang deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT leejongeun deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT chungmyungjin deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT leeyoungkyung deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimyoungseon deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT leesangmin deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kwonwoocheol deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT parkchangmin deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT kimyunhyeon deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT jeongyeonjoo deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT jinkwangnam deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy AT goojinmo deeplearningwithchestradiographsformakingprognosesinpatientswithcovid19retrospectivecohortstudy |