Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study

BackgroundAs the COVID-19 pandemic continues, an initial risk-adapted allocation is crucial for managing medical resources and providing intensive care. ObjectiveIn this study, we aimed to identify factors that predict the overall survival rate for COVID-19 cases...

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Main Authors: Cho, Sung-Yeon, Park, Sung-Soo, Song, Min-Kyu, Bae, Young Yi, Lee, Dong-Gun, Kim, Dong-Wook
Format: Article
Language:English
Published: JMIR Publications 2021-02-01
Series:Journal of Medical Internet Research
Online Access:https://www.jmir.org/2021/2/e26257
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spelling doaj-d9bea3f645e84df5a02419fe6ff063f72021-04-02T18:41:07ZengJMIR PublicationsJournal of Medical Internet Research1438-88712021-02-01232e2625710.2196/26257Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort StudyCho, Sung-YeonPark, Sung-SooSong, Min-KyuBae, Young YiLee, Dong-GunKim, Dong-Wook BackgroundAs the COVID-19 pandemic continues, an initial risk-adapted allocation is crucial for managing medical resources and providing intensive care. ObjectiveIn this study, we aimed to identify factors that predict the overall survival rate for COVID-19 cases and develop a COVID-19 prognosis score (COPS) system based on these factors. In addition, disease severity and the length of hospital stay for patients with COVID-19 were analyzed. MethodsWe retrospectively analyzed a nationwide cohort of laboratory-confirmed COVID-19 cases between January and April 2020 in Korea. The cohort was split randomly into a development cohort and a validation cohort with a 2:1 ratio. In the development cohort (n=3729), we tried to identify factors associated with overall survival and develop a scoring system to predict the overall survival rate by using parameters identified by the Cox proportional hazard regression model with bootstrapping methods. In the validation cohort (n=1865), we evaluated the prediction accuracy using the area under the receiver operating characteristic curve. The score of each variable in the COPS system was rounded off following the log-scaled conversion of the adjusted hazard ratio. ResultsAmong the 5594 patients included in this analysis, 234 (4.2%) died after receiving a COVID-19 diagnosis. In the development cohort, six parameters were significantly related to poor overall survival: older age, dementia, chronic renal failure, dyspnea, mental disturbance, and absolute lymphocyte count <1000/mm3. The following risk groups were formed: low-risk (score 0-2), intermediate-risk (score 3), high-risk (score 4), and very high-risk (score 5-7) groups. The COPS system yielded an area under the curve value of 0.918 for predicting the 14-day survival rate and 0.896 for predicting the 28-day survival rate in the validation cohort. Using the COPS system, 28-day survival rates were discriminatively estimated at 99.8%, 95.4%, 82.3%, and 55.1% in the low-risk, intermediate-risk, high-risk, and very high-risk groups, respectively, of the total cohort (P<.001). The length of hospital stay and disease severity were directly associated with overall survival (P<.001), and the hospital stay duration was significantly longer among survivors (mean 26.1, SD 10.7 days) than among nonsurvivors (mean 15.6, SD 13.3 days). ConclusionsThe newly developed predictive COPS system may assist in making risk-adapted decisions for the allocation of medical resources, including intensive care, during the COVID-19 pandemic.https://www.jmir.org/2021/2/e26257
collection DOAJ
language English
format Article
sources DOAJ
author Cho, Sung-Yeon
Park, Sung-Soo
Song, Min-Kyu
Bae, Young Yi
Lee, Dong-Gun
Kim, Dong-Wook
spellingShingle Cho, Sung-Yeon
Park, Sung-Soo
Song, Min-Kyu
Bae, Young Yi
Lee, Dong-Gun
Kim, Dong-Wook
Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study
Journal of Medical Internet Research
author_facet Cho, Sung-Yeon
Park, Sung-Soo
Song, Min-Kyu
Bae, Young Yi
Lee, Dong-Gun
Kim, Dong-Wook
author_sort Cho, Sung-Yeon
title Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study
title_short Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study
title_full Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study
title_fullStr Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study
title_full_unstemmed Prognosis Score System to Predict Survival for COVID-19 Cases: a Korean Nationwide Cohort Study
title_sort prognosis score system to predict survival for covid-19 cases: a korean nationwide cohort study
publisher JMIR Publications
series Journal of Medical Internet Research
issn 1438-8871
publishDate 2021-02-01
description BackgroundAs the COVID-19 pandemic continues, an initial risk-adapted allocation is crucial for managing medical resources and providing intensive care. ObjectiveIn this study, we aimed to identify factors that predict the overall survival rate for COVID-19 cases and develop a COVID-19 prognosis score (COPS) system based on these factors. In addition, disease severity and the length of hospital stay for patients with COVID-19 were analyzed. MethodsWe retrospectively analyzed a nationwide cohort of laboratory-confirmed COVID-19 cases between January and April 2020 in Korea. The cohort was split randomly into a development cohort and a validation cohort with a 2:1 ratio. In the development cohort (n=3729), we tried to identify factors associated with overall survival and develop a scoring system to predict the overall survival rate by using parameters identified by the Cox proportional hazard regression model with bootstrapping methods. In the validation cohort (n=1865), we evaluated the prediction accuracy using the area under the receiver operating characteristic curve. The score of each variable in the COPS system was rounded off following the log-scaled conversion of the adjusted hazard ratio. ResultsAmong the 5594 patients included in this analysis, 234 (4.2%) died after receiving a COVID-19 diagnosis. In the development cohort, six parameters were significantly related to poor overall survival: older age, dementia, chronic renal failure, dyspnea, mental disturbance, and absolute lymphocyte count <1000/mm3. The following risk groups were formed: low-risk (score 0-2), intermediate-risk (score 3), high-risk (score 4), and very high-risk (score 5-7) groups. The COPS system yielded an area under the curve value of 0.918 for predicting the 14-day survival rate and 0.896 for predicting the 28-day survival rate in the validation cohort. Using the COPS system, 28-day survival rates were discriminatively estimated at 99.8%, 95.4%, 82.3%, and 55.1% in the low-risk, intermediate-risk, high-risk, and very high-risk groups, respectively, of the total cohort (P<.001). The length of hospital stay and disease severity were directly associated with overall survival (P<.001), and the hospital stay duration was significantly longer among survivors (mean 26.1, SD 10.7 days) than among nonsurvivors (mean 15.6, SD 13.3 days). ConclusionsThe newly developed predictive COPS system may assist in making risk-adapted decisions for the allocation of medical resources, including intensive care, during the COVID-19 pandemic.
url https://www.jmir.org/2021/2/e26257
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